9,253 results on '"probabilistic neural network"'
Search Results
2. Power quality enhancement using fully informed particle swarm optimization based DSTATCOM in distribution systems.
- Author
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Shankar, Moguthala and Kumar, R. Senthil
- Subjects
POWER quality disturbances ,ARTIFICIAL neural networks ,GENETIC algorithms ,ELECTRICAL engineering - Abstract
To compensate for the reactive power, inverter-based conditioners have been utilized in recent years due to their faster response. Distribution static synchronous compensator (DSTATCOM) has been utilized to enhance power quality in power system that is an inverter-based device that is widely utilized. To control this type of equipment, a proportional integrated (PI) controller has been utilized to control most of the equipment with respect to certain parameters. The performance of the controller basically does not meet the expectations because of the dynamics and nonlinearity of a system parameters. In this present paper, a probabilistic neural network has been used in a controller with a fully informed particle swarm optimization (FIPSO) algorithm to generate a suitable weight for controlling the axes of various parameters of DSTATCOMs. Using MATLAB/Simulink software, simulations were performed, and the responses were monitored with particular regard to the reference reactive parameter. The results are compared. DSTATCOM improves power system damping. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
3. An Improved Convolutional Neural Network for Pipe Leakage Identification Based on Acoustic Emission.
- Author
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Xu, Weidong, Huang, Jiwei, Sun, Lianghui, Yao, Yixin, Zhu, Fan, Xie, Yaoguo, and Zhang, Meng
- Subjects
ARTIFICIAL neural networks ,CONVOLUTIONAL neural networks ,OPTIMIZATION algorithms ,UNDERWATER pipelines ,ACOUSTIC emission - Abstract
Oil and gas pipelines are the lifelines of the energy market, but due to long-term use and environmental factors, these pipelines are prone to corrosion and leaks. Offshore oil and gas pipeline leaks, in particular, can lead to severe consequences such as platform fires and explosions. Therefore, it is crucial to accurately and swiftly identify oil and gas leaks on offshore platforms. This is of significant importance for improving early warning systems, enhancing maintenance efficiency, and reducing economic losses. Currently, the efficiency of identifying leaks in offshore platform pipelines still needs improvement. To address this, the present study first established an experimental platform to simulate pipeline leaks in a marine environment. Laboratory leakage signal data were collected, and on-site noise data were gathered from the "Liwan 3-1" offshore oil and gas platform. By integrating leakage signals with on-site noise data, this study aimed to closely mimic real-world application scenarios. Subsequently, several neural network-based leakage identification methods were applied to the integrated dataset, including a probabilistic neural network (PNN) combined with time-domain feature extraction, a Backpropagation Neural Network (BPNN) optimized with simulated annealing and particle swarm optimization, and a Long Short-Term Memory Network (LSTM) combined with Mel-Frequency Cepstral Coefficients (MFCC). Corresponding models were constructed, and the effectiveness of leak detection was validated using test sets. Additionally, this paper proposes an improved convolutional neural network (CNN) leakage detection technology named SART-1DCNN. This technology optimizes the network architecture by introducing attention mechanisms, transformer modules, residual blocks, and combining them with Dropout and optimization algorithms, which significantly enhances data recognition accuracy. It achieves a high accuracy rate of 99.44% on the dataset. This work is capable of detecting pipeline leaks with high accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
4. 3DCC-MPNN: automated 3D reconstruction of corpus callosum based on modified PNN and marching cubes.
- Author
-
Jlassi, Amal, Elbedoui, Khaoula, Barhoumi, Walid, and Maktouf, Chokri
- Abstract
The present study addresses the segmentation and the 3D reconstruction of the corpus callosum from MRI scans. Accurate segmentation of the corpus callosum is essential in order to enable its reconstruction and 3D visualization to facilitate early diagnosis. In fact, many studies have established a strong correlation between the shape of the corpus callosum and several pathological conditions. However, the segmentation is made difficult by regions of similar intensity within the MRI images. To overcome this challenge, we propose an automated method that relies mainly on a probabilistic neural network applied to superpixels. The proposed scheme involves segmenting the corpus callosum within the MRI scans, followed by the application of the marching cubes technique in order to generate 3D volumes. The effectiveness of the proposed method has been extensively validated on four challenging datasets (OASIS, ABIDE, MIRIAD, and SBD), and the obtained results demonstrate its superior performance compared to other state-of-the-art methods. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
5. Intelligent prediction of tunnel surrounding rock advance classification in high altitude and high seismic intensity area and its engineering application.
- Author
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Zhao, Ruijie, Shi, Shaoshuai, Li, Shucai, Lu, Jie, Xue, Yang, and Zhang, Tao
- Abstract
In order to improve and optimize the advance classification and prediction method of tunnel surrounding rock, a prediction method based on Tunnel Seismic Prediction (TSP) and Probabilistic Neural Network (PNN) is proposed. Based on the characteristics of science, maneuverability and representativeness, several factors that greatly affect rock mass classification are selected as evaluation indices based on analysis of numerous TSP data, establishing an advance classification index system for surrounding rock, and designing the "Advance classification and prediction system for surrounding rock" to predict the classification. Engineering application of Jinpingyan Tunnel of Chenglan Railway in high altitude and high intensity area of China is taken as a case study, and proved that the evaluation indices are easy to obtain and the evaluation results are accurate and reliable, and compared with Back Propagation (BP) neural network prediction results, the results show that PNN has some advantages in predicting the calculation speed of surrounding rock classification, the ability to add samples and the classification accuracy in practical engineering applications. The PNN-TSP method can be further used for other tunnel engineering. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
6. Permanent magnet synchronous motor demagnetization fault diagnosis based on PCA-ISSA-PNN
- Author
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Yinquan Yu, Yang Li, Dequan Zeng, Yiming Hu, and Jinwen Yang
- Subjects
Permanent magnet synchronous motor ,Principal component analysis algorithm ,Improved sparrow search algorithm ,Probabilistic neural network ,Medicine ,Science - Abstract
Abstract Aiming at the demagnetization fault problem of the permanent magnet synchronous motor (PMSM), a demagnetization fault diagnosis method based on the combination of the principal component analysis (PCA) algorithm, the improved sparrow search algorithm (ISSA), and the probabilistic neural network (PNN) algorithm is proposed. First, the principal components of phase currents are extracted using PCA. Second, ISSA is used to optimize the smoothing coefficients of the PNN algorithm, and the optimized PNN algorithm is combined with PCA to obtain the PCA-ISSA-PNN fault diagnosis model. Finally, the established fault diagnosis model was tested using the current data collected from the experiments and compared with the fault diagnosis indexes and optimization performance of the conventional PNN, PCA-PNN, PCA-GA (genetic algorithm)-PNN, PCA-DA (dragonfly algorithm)-PNN, PCA-GTO (artificial gorilla troop optimizer)-PNN, PCA-AHA-PNN, and PCA-SSA-PNN. The test results show that the fault diagnosis accuracy of PCA-ISSA-PNN reaches 95.83%, and the fault diagnosis indexes are significantly higher than those of PNN, PCA-PNN, PCA-GA-PNN, and PCA-DA-PNN; its optimization performance is also significantly better than that of PCA-GTO-PNN, PCA-AHA-PNN, and PCA-SSA-PNN, which verifies the accuracy and efficiency of the proposed method.
- Published
- 2024
- Full Text
- View/download PDF
7. Permanent magnet synchronous motor demagnetization fault diagnosis based on PCA-ISSA-PNN.
- Author
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Yu, Yinquan, Li, Yang, Zeng, Dequan, Hu, Yiming, and Yang, Jinwen
- Subjects
- *
ARTIFICIAL neural networks , *PERMANENT magnet motors , *FAULT diagnosis , *PRINCIPAL components analysis , *SEARCH algorithms , *GORILLA (Genus) - Abstract
Aiming at the demagnetization fault problem of the permanent magnet synchronous motor (PMSM), a demagnetization fault diagnosis method based on the combination of the principal component analysis (PCA) algorithm, the improved sparrow search algorithm (ISSA), and the probabilistic neural network (PNN) algorithm is proposed. First, the principal components of phase currents are extracted using PCA. Second, ISSA is used to optimize the smoothing coefficients of the PNN algorithm, and the optimized PNN algorithm is combined with PCA to obtain the PCA-ISSA-PNN fault diagnosis model. Finally, the established fault diagnosis model was tested using the current data collected from the experiments and compared with the fault diagnosis indexes and optimization performance of the conventional PNN, PCA-PNN, PCA-GA (genetic algorithm)-PNN, PCA-DA (dragonfly algorithm)-PNN, PCA-GTO (artificial gorilla troop optimizer)-PNN, PCA-AHA-PNN, and PCA-SSA-PNN. The test results show that the fault diagnosis accuracy of PCA-ISSA-PNN reaches 95.83%, and the fault diagnosis indexes are significantly higher than those of PNN, PCA-PNN, PCA-GA-PNN, and PCA-DA-PNN; its optimization performance is also significantly better than that of PCA-GTO-PNN, PCA-AHA-PNN, and PCA-SSA-PNN, which verifies the accuracy and efficiency of the proposed method. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
8. An Identification Method of Maize Crop’s Nutritional Status Based on Index Weight.
- Author
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Li Tian, Chun Wang, Hailiang Li, and Haitian Sun
- Subjects
- *
NUTRITIONAL status , *ARTIFICIAL neural networks , *PHOSPHORUS in soils , *CROPS , *PLANT identification - Abstract
In view of the lack of considering index weight and less nutritional status classification in maize crop’s nutritional status identification, an identification method of maize crop’s nutritional status based on index weight is studied. Based on the five aspects of Agronomic and soil properties, 15 identification indexes such as plant height and soil available phosphorus content are selected to construct the identification index system of maize crop’s nutritional status. Through the evidence fusion process, the subjective weight calculation method is combined with the objective weight calculation method to calculate each identification index system. The nutritional status of maize crops is divided into nine grades: extreme poor nutrition to extreme severe eutrophication. Samples are generated by random interpolation between the values of grade standard domain. The probabilistic neural network recognition model is constructed, and the randomly generated samples are used to train and test the model to obtain the recognition model architecture that meets the accuracy requirements. The weight of each index and the normalized sample index matrix are calculated and input into the trained recognition model to obtain the recognition results of nutritional status of corn crop samples. The test results show that the index weight obtained by this method has higher reliability and can meet the application needs of maize crop’s nutritional status identification. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
9. A Biomechanical Distraction Identification Method Based on Recognition of Driver’s Joint Points
- Author
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Wang, Xiaoyuan, Chen, Longfei, Wang, Bin, Shi, Bowen, Wang, Gang, Shi, Huili, Wang, Quanzheng, Han, Junyan, Zhong, Fusheng, Angrisani, Leopoldo, Series Editor, Arteaga, Marco, Series Editor, Chakraborty, Samarjit, Series Editor, Chen, Shanben, Series Editor, Chen, Tan Kay, Series Editor, Dillmann, Rüdiger, Series Editor, Duan, Haibin, Series Editor, Ferrari, Gianluigi, Series Editor, Ferre, Manuel, Series Editor, Hirche, Sandra, Series Editor, Jabbari, Faryar, Series Editor, Jia, Limin, Series Editor, Kacprzyk, Janusz, Series Editor, Khamis, Alaa, Series Editor, Kroeger, Torsten, Series Editor, Li, Yong, Series Editor, Liang, Qilian, Series Editor, Martín, Ferran, Series Editor, Ming, Tan Cher, Series Editor, Minker, Wolfgang, Series Editor, Misra, Pradeep, Series Editor, Mukhopadhyay, Subhas, Series Editor, Ning, Cun-Zheng, Series Editor, Nishida, Toyoaki, Series Editor, Oneto, Luca, Series Editor, Panigrahi, Bijaya Ketan, Series Editor, Pascucci, Federica, Series Editor, Qin, Yong, Series Editor, Seng, Gan Woon, Series Editor, Speidel, Joachim, Series Editor, Veiga, Germano, Series Editor, Wu, Haitao, Series Editor, Zamboni, Walter, Series Editor, Tan, Kay Chen, Series Editor, Wang, Wuhong, editor, Guo, Hongwei, editor, Jiang, Xiaobei, editor, Shi, Jian, editor, and Sun, Dongxian, editor
- Published
- 2024
- Full Text
- View/download PDF
10. ITD Sample Entropy and Probabilistic Neural Network Bearing Fault Diagnosis Model
- Author
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Wang, Nan, Wang, Hongjun, Wang, Ze, Wang, Liang, Zhang, Zhuangzhuang, IFToMM, Series Editor, Ceccarelli, Marco, Advisory Editor, Corves, Burkhard, Advisory Editor, Glazunov, Victor, Advisory Editor, Hernández, Alfonso, Advisory Editor, Huang, Tian, Advisory Editor, Jauregui Correa, Juan Carlos, Advisory Editor, Takeda, Yukio, Advisory Editor, Agrawal, Sunil K., Advisory Editor, Ball, Andrew D., editor, Ouyang, Huajiang, editor, Sinha, Jyoti K., editor, and Wang, Zuolu, editor
- Published
- 2024
- Full Text
- View/download PDF
11. Modified Probabilistic Neural Networks LBP Classification Based on Distance Measures in Probability Space
- Author
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Amoudi, Shadi Al, Hong, Xia, Wei, Hong, Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, Panoutsos, George, editor, Mahfouf, Mahdi, editor, and Mihaylova, Lyudmila S, editor
- Published
- 2024
- Full Text
- View/download PDF
12. Automated Detection of Melanoma Skin Disease Using Classification Algorithm
- Author
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Barman, Manisha, Choudhury, J. Paul, Biswas, Susanta, Filipe, Joaquim, Editorial Board Member, Ghosh, Ashish, Editorial Board Member, Prates, Raquel Oliveira, Editorial Board Member, Zhou, Lizhu, Editorial Board Member, Dasgupta, Kousik, editor, Mukhopadhyay, Somnath, editor, Mandal, Jyotsna K., editor, and Dutta, Paramartha, editor
- Published
- 2024
- Full Text
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13. Health risk assessment of ultrafine particle movement in children's residential spaces based on probabilistic neural networks
- Author
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Fugui Duan and Lin Lin
- Subjects
Sports activity space ,Atmospheric particulate matter ,Sports health risks ,Probabilistic neural network ,Children's sports ,Ultrafine particles ,Engineering (General). Civil engineering (General) ,TA1-2040 - Abstract
The air quality in children's living spaces has a significant impact on their health, and ultrafine particulate matter (PM2.5), as one of the main pollutants in the air, poses a particularly prominent threat to children's respiratory and immune systems. Therefore, it important to conduct health risk assessment on ultrafine particle exercise in children's living spaces. In this article, an intelligent risk assessment model of ultrafine atmospheric particles in children's sports space in residential areas based on probabilistic neural network (PNN) is studied. This model utilizes probabilistic neural networks to monitor and predict ultrafine particles in residential spaces, evaluating their potential risks to children's health. By collecting relevant data such as particulate matter concentration and air quality index in residential spaces, and using probabilistic neural networks for training and prediction, accurate assessment of the health risks of ultrafine particulate matter during exercise can be achieved. This model can be applied to densely populated places such as families and schools, providing parents and relevant institutions with scientific risk warning and prevention measures to ensure the health and safety of children. Probabilistic neural networks can learn and simulate complex nonlinear relationships, making the model more accurate in predicting the concentration of ultrafine particles and health risks. So as to construct a method system of health risk assessment of atmospheric particles, and the model is heavy metal elements in atmospheric fine particles, and corresponding improvement measures are put forward according to the assessment results. For circulatory system diseases, the degree of harm of atmospheric temperature and fine particles to children's health is basically close, and with the continuous decline of temperature, the synergistic effect of the two is more obvious. The concentration of atmospheric ultrafine particles significantly affects the health risk of children's sports activities space. All the experiments in this article are quite good. Among them, the average accuracy of the PNN health risk identification model is 0.840, and the average recall rate is 0.837. The health risk assessment model in this article strengthens the correlation of data information through scientific methods, grasps the basic information of children's sports activity spaces in residential areas, and formulates targeted sports health risk assessments for children's sports activity spaces in residential areas. Compared with the comparison method, the response speed is significantly improved, with an accuracy rate of over 90%.
- Published
- 2024
- Full Text
- View/download PDF
14. Enhancing Predictive Models for Assessing 5G Exposure Effects on Human Health and Cognition through Supervised Machine Learning: A Multi-Stage Feature Selection Approach.
- Author
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SOFRI, Tasneem, ANDREW, Allan Melvin, RAHIM, Hasliza A, NISHIZAKI, Hiromitsu, KAMARUDIN, Latifah Munirah, WONG, Peng Wen, and SOH, Ping Jack
- Subjects
SUPERVISED learning ,FEATURE selection ,ARTIFICIAL neural networks ,PREDICTION models ,5G networks ,MACHINE learning - Abstract
Copyright of Przegląd Elektrotechniczny is the property of Przeglad Elektrotechniczny and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
- Full Text
- View/download PDF
15. The effect of consanguineous marriage on reading disability based on deep neural networks.
- Author
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Talaat, Fatma M.
- Subjects
ARTIFICIAL neural networks ,CONSANGUINITY ,BACK propagation ,DEEP learning ,ACTIVE learning ,BIRTHPARENTS - Abstract
For knowledge acquisition and social engagement, reading comprehension is essential. However, 20% or so of younger students have trouble with it. In order to predict the effects of consanguineous marriage on reading handicap and customize adaptive learning experiences, the study proposes an Intelligent Adaptive Learning and Prediction Framework (IALPF). This framework is proposed as a transformative solution that smoothly combines cutting-edge AI approaches. IALPF provides precise predictions and individualized learning pathways by utilizing extensive cognitive profiling, data gathering, and hybrid neural network design. It includes early warning systems, flexible content distribution, and ongoing development based on active learning and feedback loops. The IALPF represents a significant change in education that has wide-ranging effects. We evaluated reading skills among 770 students in a study that included two experimental groups, a control group, and 22 pupils from first-cousin marriages and 21 children of unrelated parents, respectively. Tests were given for word identification and reading comprehension, among other things. The findings showed that children of first cousin parents had a higher chance of reading difficulties than those of parents from other families. The outstanding performance of IALPF, which outperformed conventional techniques like Back Propagation (BP) and General Regression Neural Network (GRNN), was further supported by empirical evaluation. This demonstrates IALPF's success in reinventing personalized learning and predictive analysis, strengthening its potential to improve education in a variety of scenarios. The seamless integration of cutting-edge AI methods into IALPF, which forecasts the effect of consanguineous marriage on reading handicap, is a significant innovation. To set it apart from conventional approaches, this special framework integrates cognitive profile, information gathering, and hybrid neural networks for accurate predictions. The empirical analysis demonstrates the revolutionary potential of IALPF by demonstrating its improved predictive accuracy when compared to Back Propagation (BP) and General Regression Neural Network (GRNN). [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
16. Robust digital image watermarking using cuckoo search optimization and probabilistic neural network.
- Author
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Gupta, Megha and Kishore, R. Rama
- Subjects
ARTIFICIAL neural networks ,DIGITAL image watermarking ,DIGITAL watermarking ,COMPUTER networks ,DISCRETE cosine transforms ,SIGNAL-to-noise ratio ,COPYRIGHT ,DIGITAL images - Abstract
In this new age, because of the exceptional achievement of the global computer network, the trading of digital media over the web has turned out to be unbelievably easy. However, securing the exclusive rights of the owner while trading digital media is an important issue. Digital image watermarking is a method to ensure copyright protection, security, and authenticity of data. In this paper, a novel technique is presented which is optimized, secure, and robust. The Watermark is set solidly in the discrete cosine transform domain. It is also encrypted based on the proposed block shuffling algorithm to increase security. The method was examined against various attacks, and it succeeded in maintaining statistical significance in terms of robustness and imperceptibility, as the average Peak Signal to Noise Ratio value is 65 dB, and the average Normalized Correlation value is close to one after apply all possible attacks. The results have been tested on MATLAB 2020a. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
17. Health risk assessment of ultrafine particle movement in children's residential spaces based on probabilistic neural networks.
- Author
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Duan, Fugui and Lin, Lin
- Subjects
ARTIFICIAL neural networks ,HEALTH risk assessment ,SPORTS for children ,AIR pollutants ,CHILDREN'S health ,AIR quality indexes ,RESPIRATORY organs - Abstract
The air quality in children's living spaces has a significant impact on their health, and ultrafine particulate matter (PM2.5), as one of the main pollutants in the air, poses a particularly prominent threat to children's respiratory and immune systems. Therefore, it important to conduct health risk assessment on ultrafine particle exercise in children's living spaces. In this article, an intelligent risk assessment model of ultrafine atmospheric particles in children's sports space in residential areas based on probabilistic neural network (PNN) is studied. This model utilizes probabilistic neural networks to monitor and predict ultrafine particles in residential spaces, evaluating their potential risks to children's health. By collecting relevant data such as particulate matter concentration and air quality index in residential spaces, and using probabilistic neural networks for training and prediction, accurate assessment of the health risks of ultrafine particulate matter during exercise can be achieved. This model can be applied to densely populated places such as families and schools, providing parents and relevant institutions with scientific risk warning and prevention measures to ensure the health and safety of children. Probabilistic neural networks can learn and simulate complex nonlinear relationships, making the model more accurate in predicting the concentration of ultrafine particles and health risks. So as to construct a method system of health risk assessment of atmospheric particles, and the model is heavy metal elements in atmospheric fine particles, and corresponding improvement measures are put forward according to the assessment results. For circulatory system diseases, the degree of harm of atmospheric temperature and fine particles to children's health is basically close, and with the continuous decline of temperature, the synergistic effect of the two is more obvious. The concentration of atmospheric ultrafine particles significantly affects the health risk of children's sports activities space. All the experiments in this article are quite good. Among them, the average accuracy of the PNN health risk identification model is 0.840, and the average recall rate is 0.837. The health risk assessment model in this article strengthens the correlation of data information through scientific methods, grasps the basic information of children's sports activity spaces in residential areas, and formulates targeted sports health risk assessments for children's sports activity spaces in residential areas. Compared with the comparison method, the response speed is significantly improved, with an accuracy rate of over 90%. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
18. Generating Synthetic Electricity Load Time Series at District Scale Using Probabilistic Forecasts.
- Author
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Richter, Lucas, Bender, Tom, Lenk, Steve, and Bretschneider, Peter
- Subjects
- *
TIME series analysis , *DATA privacy , *ELECTRIC power consumption , *ARTIFICIAL neural networks , *DIGITAL transformation , *CLOUD computing , *SPEECH synthesis - Abstract
Thanks to various European directives, individuals are empowered to share and trade electricity within Renewable Energy Communities, enhancing the operational efficiency of local energy systems. The digital transformation of the energy market enables the integration of decentralized energy resources using cloud computing, the Internet of Things, and artificial intelligence. In order to assess the feasibility of new business models based on data-driven solutions, various electricity consumption time series are necessary at this level of aggregation. Since these are currently not yet available in sufficient quality and quantity, and due to data privacy reasons, synthetic time series are essential in the strategic planning of smart grid energy systems. By enabling the simulation of diverse scenarios, they facilitate the integration of new technologies and the development of effective demand response strategies. Moreover, they provide valuable data for assessing novel load forecasting methodologies that are essential to manage energy efficiently and to ensure grid stability. Therefore, this research proposes a methodology to synthesize electricity consumption time series by applying the Box–Jenkins method, an intelligent sampling technique for data augmentation and a probabilistic forecast model. This novel approach emulates the stochastic nature of electricity consumption time series and synthesizes realistic ones of Renewable Energy Communities concerning seasonal as well as short-term variations and stochasticity. Comparing autocorrelations, distributions of values, and principle components of daily sequences between real and synthetic time series, the results exhibit nearly identical characteristics to the original data and, thus, are usable in designing and studying efficient smart grid systems. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
19. A hybrid approach for power quality event identification in power systems: Elasticnet Regression decomposition and optimized probabilistic neural networks
- Author
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Indu Sekhar Samanta, Pravat Kumar Rout, Kunjabihari Swain, Murthy Cherukuri, Subhasis Panda, Mohit Bajaj, Vojtech Blazek, Lukas Prokop, and Stanislav Misak
- Subjects
Power quality events ,Variational mode decomposition ,Power quality indices ,Probabilistic neural network ,Salp swarm algorithm ,Science (General) ,Q1-390 ,Social sciences (General) ,H1-99 - Abstract
The transformation of traditional grid networks towards smart-grid and microgrid concepts raises many critical issues, and quality in the power supply is one of the prominent ones that needs further research. Developing and applying power quality (PQ) recognition methods with efficient and reliable analysis are essential to the fast-growing issues related to modern smart power distribution systems. In this regard, a hybrid algorithm is proposed for PQ events detection and classification using Elasticnet Regression-based Variational Mode Decomposition (ER-VMD) and Salp Swarm Algorithm optimized Probabilistic Neural Network (SSA-PNN). The Elasticnet Regression (ER) process is suggested to modify the conventional VMD approach instead of the Tikhonov Regularization (TR) method to enhance performance and obtain better band-limited intrinsic mode functions. This idea results in robust and effective reconstruction features and helps to obtain accurate classification using the classifier. In the classification stage, a Salp Swarm Algorithm (SSA) based PNN is used for the PQ event, considering the relevant features obtained from ER-VMD. The system parameters often influence PNN performance, and SSA is used to determine the ideal values to improve the PNN's capacity for more accurate classification. The numerical values of the accuracy percentage, percentage of sensitivity, and percentage of specificity in the case of real-time data are found as 98.58, 100, and 98.46, respectively. The acquired comparison findings demonstrate the effectiveness and robustness of the proposed technique in terms of rapid learning speed, smaller computational complexity, robust performance for anti-noise conditions, and accurate identification and categorization.
- Published
- 2024
- Full Text
- View/download PDF
20. Proposal of dental demineralization diagnosis with OCT echo based on multiscale entropy analysis
- Author
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Ziqi Peng, Seiroh Okaneya, Hongzi Bai, Chuangxing Wu, Bei Liu, and Tatsuo Shiina
- Subjects
diagnosis of dental demineralization ,optical coherence tomography ,multiscale dispersion entropy ,probabilistic neural network ,Biotechnology ,TP248.13-248.65 ,Mathematics ,QA1-939 - Abstract
Optical coherence tomography (OCT) has been widely used for the diagnosis of dental demineralization. Most methods rely on extracting optical features from OCT echoes for evaluation or diagnosis. However, due to the diversity of biological samples and the complexity of tissues, the separability and robustness of extracted optical features are inadequate, resulting in a low diagnostic efficiency. Given the widespread utilization of entropy analysis in examining signals from biological tissues, we introduce a dental demineralization diagnosis method using OCT echoes, employing multiscale entropy analysis. Three multiscale entropy analysis methods were used to extract features from the OCT one-dimensional echo signal of normal and demineralized teeth, and a probabilistic neural network (PNN) was used for dental demineralization diagnosis. By comparing diagnostic efficiency, diagnostic speed, and parameter optimization dependency, the multiscale dispersion entropy-PNN (MDE-PNN) method was found to have comprehensive advantages in dental demineralization diagnosis with a diagnostic efficiency of 0.9397. Compared with optical feature-based dental demineralization diagnosis methods, the entropy features-based analysis had better feature separability and higher diagnostic efficiency, and showed its potential in dental demineralization diagnosis with OCT.
- Published
- 2024
- Full Text
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21. MUSIC Spectrum Based Interference Detection, Localization, and Interference Arrival Prediction for mmWave IRS-MIMO System
- Author
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Yafei Hou, Kazuto Yano, Norisato Suga, Julian Webber, Satoshi Denno, and Toshikazu Sakano
- Subjects
Interference detection ,MUSIC spectrum ,interference localization ,prediction of interference arrival ,probabilistic neural network ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
For a millimeter wave (mmWave) intelligent re-configurable surface (IRS)-MIMO system, if it can correctly detect the interference occurrence and their locations, the patterns of interference signal can be collected and learned using machine learning for the prediction of interference arrival. With the information of interference location and activity pattern, the capacity of the system can be largely improved using many techniques such as beamforming, interference cancellation, and transmission scheduling. This paper aims to detect interference occurrence using a low-complexity MUSIC (MUSIC: multiple signal classification) spectrum-based method, and then localize their sources for mmWave IRS-MIMO system. The MUSIC spectrum of wireless system can be regarded as somehow the ‘signature’ related to the signals transmitted from different users or interference. We utilize such property to detect the occurrence of interference, and then localize their sources in a low-complexity way. Finally, the pattern of interference occurrence can be learned to predict the interference arrival from the collected data. This paper also proposed an efficient probabilistic neural network (PNN)-based predictor for the interference arrival prediction and showed its prediction accuracy. From simulated results, our proposed method can achieve the correct results with the accuracy near to 100% when the fingerprint samples is over 10. In addition, the localization error can be within 1 m with more than 65% and 43% for Y-axis and X-axis, respectively. Finally, based on the results of the interference occurrence, the proposed PNN-based predictor for the interference arrival prediction can capture correctly the similar distribution function of the coming continuous idle status.
- Published
- 2024
- Full Text
- View/download PDF
22. The Effects of Negative Regulation on the Dynamical Transition in Epileptic Network.
- Author
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Hou, Songan, Wang, Haodong, Fan, Denggui, Yu, Ying, and Wang, Qingyun
- Subjects
- *
ARTIFICIAL neural networks , *EPILEPSY , *PEOPLE with epilepsy , *NEURAL circuitry - Abstract
The transiting mechanism of abnormal brain functional activities, such as the epileptic seizures, has not been fully elucidated. In this study, we employ a probabilistic neural network model to investigate the impact of negative regulation, including negative connections and negative inputs, on the dynamical transition behavior of network dynamics. It is observed that negative connections significantly influence the transition behavior of the network, intensifying the oscillation of discharge probability, corresponding to uneven discharge and epileptic states. Negative inputs, within a certain range, exhibited a similar impact on the dynamic state of the network as negative connections, enhancing network oscillations and resulting in higher fragility. However, larger negative inputs can led to the disappearance of oscillations in the discharge probability, indicating a maintenance of lower fragility. We speculate that negative regulation may be an indispensable factor in the occurrence of epileptic seizures, and future research should give it due consideration. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
23. A Bio-Inspired Probabilistic Neural Network Model for Noise-Resistant Collision Perception.
- Author
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Hong, Jialan, Sun, Xuelong, Peng, Jigen, and Fu, Qinbing
- Subjects
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ARTIFICIAL neural networks , *ENGINEERING standards , *NEURAL transmission , *VISUAL perception , *COMPARATIVE method - Abstract
Bio-inspired models based on the lobula giant movement detector (LGMD) in the locust's visual brain have received extensive attention and application for collision perception in various scenarios. These models offer advantages such as low power consumption and high computational efficiency in visual processing. However, current LGMD-based computational models, typically organized as four-layered neural networks, often encounter challenges related to noisy signals, particularly in complex dynamic environments. Biological studies have unveiled the intrinsic stochastic nature of synaptic transmission, which can aid neural computation in mitigating noise. In alignment with these biological findings, this paper introduces a probabilistic LGMD (Prob-LGMD) model that incorporates a probability into the synaptic connections between multiple layers, thereby capturing the uncertainty in signal transmission, interaction, and integration among neurons. Comparative testing of the proposed Prob-LGMD model and two conventional LGMD models was conducted using a range of visual stimuli, including indoor structured scenes and complex outdoor scenes, all subject to artificial noise. Additionally, the model's performance was compared to standard engineering noise-filtering methods. The results clearly demonstrate that the proposed model outperforms all comparative methods, exhibiting a significant improvement in noise tolerance. This study showcases a straightforward yet effective approach to enhance collision perception in noisy environments. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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24. Application of probabilistic neural network for speech emotion recognition.
- Author
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Deshmukh, Shrikala and Gupta, Preeti
- Subjects
ARTIFICIAL neural networks ,EMOTION recognition ,CONVOLUTIONAL neural networks ,RECURRENT neural networks ,GAUSSIAN mixture models ,SPEECH perception - Abstract
Emotions are fundamental part of human interactions. Emotion recognition is the approach of discovering human emotions. Generally, emotion recognition is done using text, speech, audio, face, etc. In this research, Speech emotion recognition is used, Speech Emotion Recognition is the mission of identifying the emotional facets of speech. In this paper, we identify five basic emotions such as happy, sad, angry, fear and bored. The proposed pre-processing stage helps in silence removal, noise removal and normalization. In feature extraction stage pitch and frequency features are explored. Based on these features, the wave plot of amplitude vs time is plotted for all considered emotions. EMO_DB and RAVDESS databases are used for training and testing the Probabilistic Neural Network (PNN) classifier. Results show 95.76% accuracy for EMO_DB database and 84.64% accuracy for RAVDESS database. Comparison of other algorithms such as Gaussian Mixture Model, Recurrent Neural Network, Hidden Markov Model and Convolutional Neural Network is also presented. The highest accuracy is of 95.76% by using PNN with EMO_DB database. Results also reveal that PNN is a superior option as classifier for emotion classification than other classifiers. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
25. A Rolling Bearing Fault Diagnosis Method Based on Improved CEEMDAN and RCMFE.
- Author
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Luo, Zhiyong, Zhu, Guangming, Dong, Xin, Tan, Hongkai, and Li, Jialin
- Subjects
- *
ROLLER bearings , *HILBERT-Huang transform , *OPTIMIZATION algorithms , *DIAGNOSIS methods , *ARTIFICIAL neural networks , *ENTROPY , *FAULT diagnosis - Abstract
Considering the problem of residual noise and spurious modes in the complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN), a rolling element bearing malfunction diagnostic method based on improved CEEMDAN (ICEEMDAN) is proposed. First, different from the CEEMDAN, which directly adds Gaussian white noise with a mean of zero, the proposed method adds the k th component obtained from white noise decomposed by empirical mode decomposition (EMD) to the vibration signal, and then the ICEEMDAN is employed to decompose the signal into several intrinsic mode functions (IMFs). Second, aiming at the uncertainty problem of entropy estimation in multi-scale fuzzy entropy (MFE), a refined composite multi-scale fuzzy entropy (RCMFE) is proposed to obtain the characteristic from the selected IMFs. Finally, smoothing factor of PNN is determined by fruit fly optimization algorithm (FOA), and the extracted features are input into the FOA-PNN model to achieve condition identification. Experimental results illustrate that the identification accuracy is more than 99%, which indicates its high effectiveness and superiority. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
26. Optimizing the Probabilistic Neural Network Model with the Improved Manta Ray Foraging Optimization Algorithm to Identify Pressure Fluctuation Signal Features.
- Author
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Liu, Xiyuan, Wang, Liying, Yan, Hongyan, Cao, Qingjiao, Zhang, Luyao, and Zhao, Weiguo
- Subjects
- *
ARTIFICIAL neural networks , *OPTIMIZATION algorithms , *MOBULIDAE , *FUZZY algorithms , *DISCRETE wavelet transforms , *DRAFT tubes , *MACHINE learning - Abstract
To improve the identification accuracy of pressure fluctuation signals in the draft tube of hydraulic turbines, this study proposes an improved manta ray foraging optimization (ITMRFO) algorithm to optimize the identification method of a probabilistic neural network (PNN). Specifically, first, discrete wavelet transform was used to extract features from vibration signals, and then, fuzzy c-means algorithm (FCM) clustering was used to automatically classify the collected information. In order to solve the local optimization problem of the manta ray foraging optimization (MRFO) algorithm, four optimization strategies were proposed. These included optimizing the initial population of the MRFO algorithm based on the elite opposition learning algorithm and using adaptive t distribution to replace its chain factor to optimize individual update strategies and other improvement strategies. The ITMRFO algorithm was compared with three algorithms on 23 test functions to verify its superiority. In order to improve the classification accuracy of the probabilistic neural network (PNN) affected by smoothing factors, an improved manta ray foraging optimization (ITMRFO) algorithm was used to optimize them. An ITMRFO-PNN model was established and compared with the PNN and MRFO-PNN models to evaluate their performance in identifying pressure fluctuation signals in turbine draft tubes. The evaluation indicators include confusion matrix, accuracy, precision, recall rate, F1-score, and accuracy and error rate. The experimental results confirm the correctness and effectiveness of the ITMRFO-PNN model, providing a solid theoretical foundation for identifying pressure fluctuation signals in hydraulic turbine draft tubes. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
27. Neural network predictions of drawdown from groundwater abstraction in the Egebjerg catchment, Denmark
- Author
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Mathias Busk Dahl, Troels Norvin Vilhelmsen, Trine Enemark, and Thomas Mejer Hansen
- Subjects
decision support ,groundwater modelling ,machine learning ,probabilistic neural network ,resource management ,Geology ,QE1-996.5 ,Geophysics. Cosmic physics ,QC801-809 - Abstract
Results from numerical simulations play a vital role in the decision process of everyday groundwater management. However, these simulations can be time-consuming for large-scale investigations, and it can be necessary to apply approximate methods instead.This study investigates the abilities of a neural network to replicate simulated drawdown from groundwater abstraction in a numerical groundwater model of the Egebjerg catchment, Denmark. We follow a generalised methodology that uses the information within the deterministic numerical model to create a training set for the neural network to learn from and extend the method to work in a 3D Danish groundwater model case. We compare the abilities of the trained neural network with the results of conventional computations in terms of speed and accuracy and argue that this approach has the potential to improve decision support for decision-makers within groundwater management.
- Published
- 2023
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- View/download PDF
28. Causes selection and risk level prediction of coal mine gas explosion accident
- Author
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Qinxia HAO and Haitao SHANG
- Subjects
coal mine gas risk level prediction ,accident causes ,probabilistic neural network ,improved particle swarm optimization ,grey relational analysis ,Mining engineering. Metallurgy ,TN1-997 - Abstract
In order to accurately predict the risk level of coal mine gas explosion accidents, based on the feature vector in line with the actual situation, the particle swarm optimization probabilistic neural network (RWPSO-PNN) is improved to realize the prediction model of gas explosion risk level. Firstly, the cause of coal mine gas explosion accident is extracted by Chinese word segmentation, and the input feature vector of the model is selected by grey correlation analysis (GRA). Aiming at the problem of low recognition rate caused by smoothing factor in probabilistic neural network (PNN), RWPSO-PNN is proposed to adjust the smoothing factor adaptively. Finally, RWPSO-PNN is analyzed and compared with extreme learning machine algorithm, BP neural network and support vector machine algorithm. The results show that the prediction accuracy of RWPSO-PNN is 90 %, and the average absolute error is 0.133, which is obviously better than the comparison algorithm.
- Published
- 2023
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- View/download PDF
29. An Improved Convolutional Neural Network for Pipe Leakage Identification Based on Acoustic Emission
- Author
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Weidong Xu, Jiwei Huang, Lianghui Sun, Yixin Yao, Fan Zhu, Yaoguo Xie, and Meng Zhang
- Subjects
acoustic emission ,noise fusion ,pipeline leak ,convolutional neural network ,probabilistic neural network ,BP neural network ,Naval architecture. Shipbuilding. Marine engineering ,VM1-989 ,Oceanography ,GC1-1581 - Abstract
Oil and gas pipelines are the lifelines of the energy market, but due to long-term use and environmental factors, these pipelines are prone to corrosion and leaks. Offshore oil and gas pipeline leaks, in particular, can lead to severe consequences such as platform fires and explosions. Therefore, it is crucial to accurately and swiftly identify oil and gas leaks on offshore platforms. This is of significant importance for improving early warning systems, enhancing maintenance efficiency, and reducing economic losses. Currently, the efficiency of identifying leaks in offshore platform pipelines still needs improvement. To address this, the present study first established an experimental platform to simulate pipeline leaks in a marine environment. Laboratory leakage signal data were collected, and on-site noise data were gathered from the “Liwan 3-1” offshore oil and gas platform. By integrating leakage signals with on-site noise data, this study aimed to closely mimic real-world application scenarios. Subsequently, several neural network-based leakage identification methods were applied to the integrated dataset, including a probabilistic neural network (PNN) combined with time-domain feature extraction, a Backpropagation Neural Network (BPNN) optimized with simulated annealing and particle swarm optimization, and a Long Short-Term Memory Network (LSTM) combined with Mel-Frequency Cepstral Coefficients (MFCC). Corresponding models were constructed, and the effectiveness of leak detection was validated using test sets. Additionally, this paper proposes an improved convolutional neural network (CNN) leakage detection technology named SART-1DCNN. This technology optimizes the network architecture by introducing attention mechanisms, transformer modules, residual blocks, and combining them with Dropout and optimization algorithms, which significantly enhances data recognition accuracy. It achieves a high accuracy rate of 99.44% on the dataset. This work is capable of detecting pipeline leaks with high accuracy.
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- 2024
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30. Integrated Technique on Static and Dynamic Properties Estimation: An Application of Probabilistic Neural Network and Seismic Inversion
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Abbey, Chukwuemeka, Meludu, Chukwudi, Oniku, Adetola Sunday, Sebastian, Abraham, Aminu, Mohammed, Pisello, Anna Laura, Editorial Board Member, Hawkes, Dean, Editorial Board Member, Bougdah, Hocine, Editorial Board Member, Rosso, Federica, Editorial Board Member, Abdalla, Hassan, Editorial Board Member, Boemi, Sofia-Natalia, Editorial Board Member, Mohareb, Nabil, Editorial Board Member, Mesbah Elkaffas, Saleh, Editorial Board Member, Bozonnet, Emmanuel, Editorial Board Member, Pignatta, Gloria, Editorial Board Member, Mahgoub, Yasser, Editorial Board Member, De Bonis, Luciano, Editorial Board Member, Kostopoulou, Stella, Editorial Board Member, Pradhan, Biswajeet, Editorial Board Member, Abdul Mannan, Md., Editorial Board Member, Alalouch, Chaham, Editorial Board Member, Gawad, Iman O., Editorial Board Member, Nayyar, Anand, Editorial Board Member, Amer, Mourad, Series Editor, Çiner, Attila, editor, Banerjee, Santanu, editor, Lucci, Federico, editor, Radwan, Ahmed E., editor, Shah, Afroz Ahmad, editor, Doronzo, Domenico M., editor, Hamimi, Zakaria, editor, and Bauer, Wilfried, editor
- Published
- 2023
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31. A Class Incremental Learning Algorithm for a Compact-Sized Probabilistic Neural Network and Its Empirical Comparison with Multilayered Perceptron Neural Networks
- Author
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Morita, Shunpei, Iguchi, Hiroto, Hoya, Tetsuya, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Lu, Huimin, editor, Blumenstein, Michael, editor, Cho, Sung-Bae, editor, Liu, Cheng-Lin, editor, Yagi, Yasushi, editor, and Kamiya, Tohru, editor
- Published
- 2023
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- View/download PDF
32. Study on Outdoor Environment Evaluation of Kindergarten Based on Probabilistic Neural Network
- Author
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Ting, Gao, Jiangxi, Tsihrintzis, George A., Series Editor, Virvou, Maria, Series Editor, Jain, Lakhmi C., Series Editor, Patnaik, Srikanta, editor, and Paas, Fred, editor
- Published
- 2023
- Full Text
- View/download PDF
33. MRI Based Automated Detection of Brain Tumor Using DWT, GLCM, PCA, Ensemble of SVM and PNN in Sequence
- Author
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Ahmed, Md. Sakib, Hossain, Sajib, Haque, Md. Nazmul, Syeed, M. M. Mahbubul, Saaduzzaman, D. M., Maruf, Md. Hasan, Shihavuddin, A. S. M., Akan, Ozgur, Editorial Board Member, Bellavista, Paolo, Editorial Board Member, Cao, Jiannong, Editorial Board Member, Coulson, Geoffrey, Editorial Board Member, Dressler, Falko, Editorial Board Member, Ferrari, Domenico, Editorial Board Member, Gerla, Mario, Editorial Board Member, Kobayashi, Hisashi, Editorial Board Member, Palazzo, Sergio, Editorial Board Member, Sahni, Sartaj, Editorial Board Member, Shen, Xuemin, Editorial Board Member, Stan, Mircea, Editorial Board Member, Jia, Xiaohua, Editorial Board Member, Zomaya, Albert Y., Editorial Board Member, Satu, Md. Shahriare, editor, Moni, Mohammad Ali, editor, Kaiser, M. Shamim, editor, and Arefin, Mohammad Shamsul, editor
- Published
- 2023
- Full Text
- View/download PDF
34. Demonstrating Aleatoric Uncertainty in Remaining Useful Life Prediction Using LSTM with Probabilistic Layer
- Author
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Bin Mohd Nor, Ahmad Kamal, Pedapati, Srinivasa Rao, Muhammad, Masdi, Abdul Majid, Mohd Amin, Cavas-Martínez, Francisco, Editorial Board Member, Chaari, Fakher, Series Editor, di Mare, Francesca, Editorial Board Member, Gherardini, Francesco, Series Editor, Haddar, Mohamed, Editorial Board Member, Ivanov, Vitalii, Series Editor, Kwon, Young W., Editorial Board Member, Trojanowska, Justyna, Editorial Board Member, Ahmad, Faiz, editor, Al-Kayiem, Hussain H., editor, and King Soon, William Pao, editor
- Published
- 2023
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- View/download PDF
35. Power Transformer fault Diagnosis based on Hybrid Intelligent Algorithm
- Author
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Yong Xu and Xiaojuan Lu
- Subjects
transformer ,fault diagnosis ,control factor ,weighted distance ,grey wolf algorithm ,probabilistic neural network ,Engineering (General). Civil engineering (General) ,TA1-2040 ,Chemical engineering ,TP155-156 ,Physics ,QC1-999 - Abstract
The gas content in the oil is used as the fault input characteristic for the power transformer. Still, the accuracy of the diagnosis results is not ideal, and such a model is unstable. This research proposes a hybrid intelligent fault diagnosis method based on the improved grey wolf algorithm and an optimized probabilistic neural network. Firstly, a strategy of three nonlinear control factors is introduced to fit the grey wolves’ search process. The weighted distance was modified to update the position information of grey wolf elements to avoid the algorithm falling into the local optimum. Secondly, the performance of the improved grey wolf algorithm was tested through six commonly used functions. The results show that the improved grey wolf algorithm has high convergence accuracy and stability in both multimodal and unimodal functions. Finally, the improved grey wolf algorithm and the probabilistic neural network were combined to diagnose the oil-immersed power transformer through hybrid intelligent algorithms. As a result, the fault diagnosis model proved valid for transformer fault diagnosis.
- Published
- 2023
- Full Text
- View/download PDF
36. Brain tumor MRI identification and classification using DWT, PCA and kernel support vector machine
- Author
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Омар Фарук, Джахидул Ислам, Сакиб Ахмед, Саджиб Хоссейн, and Нараян Чандра Натх
- Subjects
classification methods ,Discrete Wavelet Transform ,Feature extraction ,Image Segmentation ,Pre-Processing ,Probabilistic Neural Network ,Technology (General) ,T1-995 - Abstract
Classification, segmentation, and the identification of the infection region in MRI images of brain tumors are labor-intensive and iterative processes. Numerous anatomical structures of the human body may be envisioned using an image processing theory. With basic imaging methods, it is challenging to see the aberrant human brain's structure. The neurological structure of the human brain may be distinguished and made clearer using the magnetic resonance imaging technique. The MRI approach uses a number of imaging techniques to evaluate and record the human brain’s interior features. In this study, we focused on strategies for noise removal, gray-level co-occurrence matrix (GLCM) extraction of features, and segmentation of brain tumor regions based on Discrete Wavelet Transform (DWT) to minimize complexity and enhance performance. In turn, this reduces any noise that could have been left over after segmentation due to morphological filtering. Brain MRI scans were utilized to test the accuracy of the classification and the location of the tumor using probabilistic neural network classifiers. The classifier's accuracy and position detection were tested using MRI brain imaging. The efficiency of the suggested approach is demonstrated by experimental findings, which showed that normal and diseased tissues could be distinguished from one another from brain MRI scans with about 100% accuracy.
- Published
- 2024
- Full Text
- View/download PDF
37. Optimization of Innovative Paths of Physical Education Teaching in Primary and Secondary Schools under Information Integration Technology
- Author
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Liu Juan
- Subjects
probabilistic neural network ,d-s evidence theory ,information fusion technology ,smart classroom ,elementary and middle school physical education ,94a08 ,Mathematics ,QA1-939 - Abstract
This article utilizes information fusion technology to provide a more diversified and hierarchical teaching process for physical education, making the content of physical education classroom richer and more vivid. The article firstly discusses the multi-source heterogeneous information fusion technology. It proposes a mass function that combines the output results of the cumulative layer of probabilistic neural network to construct the D-S evidence theory. The D-S evidence theory realizes the decision-level information fusion of the primary results of probabilistic neural networks. In the study, the TPACK knowledge framework was combined with the informationization platform to establish an intelligent classroom for physical education teaching applicable to primary and secondary schools, and a teaching experiment was designed for the selected research subjects. The experiment was conducted to analyze the data mainly from three dimensions: teachers’ and students’ behaviors in the smart classroom, teaching effectiveness and teaching evaluation. The results of data analysis showed that the average time of each learning node of students at the school was more than 50 seconds. At the same time, the coding coverage of teachers’ teaching behaviors was 41.85% lower than the mean value of coding coverage of students’ learning behaviors. In the experimental group, students’ jump rope scores improved by about 9.05% to 20.44% after one month of learning. These findings suggest that an intelligent classroom for physical education teaching relying on information fusion technology can effectively integrate multi-source data, thus providing strong support for improving the effectiveness of physical education teaching in primary and secondary schools.
- Published
- 2024
- Full Text
- View/download PDF
38. Centrifugal Pump Fault Diagnosis Methods Based on Dislocation Superposition Methods and Improved Probabilistic Neural Networks.
- Author
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CHEN Jian, XU Chang, and XU Tingliang
- Subjects
ARTIFICIAL neural networks ,CENTRIFUGAL pumps ,FAULT diagnosis ,DIAGNOSIS methods ,OPTIMIZATION algorithms - Abstract
Based on dislocation superposition method and improved probabilistic neural network, a fault diagnosis method of centrifugal pumps was proposed to solve the problems of online fault diagnosis using acoustic radiation signals of centrifugal pumps under strong background noise. Firstly, the acoustic radiation signals of centrifugal pumps were denoised by dislocation superposition method to enhance the fault information in acoustic radiation signals and improve the signal-to-noise ratio. The time domain features of acoustic signals were extracted to construct the time domain feature matrix. After dimensionality reduction of the obtained time domain feature matrix through principal component analysis, which was used as the inputs of machine learning probabilistic neural network. At the same time, Harris hawk optimization algorithm was used to optimize the parameters of the probabilistic neural network to get the diagnosis model, and then the improved probabilistic neural network was used to recognize the patterns of the centrifugal pump faults, and compared with a variety of diagnostic methods. The experimental results show that the dislocation superposition method may highlight the signal characteristics and realize signal enhancement, and the improved probabilistic neural network has a good ability of online fault diagnosis of centrifugal pump acoustic radiation signals. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
39. 概率神经网络多历元残差RAIM算法.
- Author
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武明, 许承东, 黄国限, 孙睿, and 鲁智威
- Subjects
ARTIFICIAL neural networks ,PRICE inflation - Abstract
Copyright of Systems Engineering & Electronics is the property of Journal of Systems Engineering & Electronics Editorial Department and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2023
- Full Text
- View/download PDF
40. Hybrid Classification Model for Emotion Prediction from EEG Signals: A Comparative Study.
- Author
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Bardak, F. Kebire, Seyman, M. Nuri, and Temurtaş, Feyzullah
- Abstract
This paper introduces a novel hybrid algorithm for emotion classification based on electroencephalogram (EEG) signals. The proposed hybrid model consists of two layers: the first layer includes three parallel adaptive neuro-fuzzy inference systems (ANFIS), and the second layer called the adaptive network comprises various models such as radial basis function neural network (RBFNN), probabilistic neural network (PNN), and ANFIS. It is examined that the feature distribution graphs of the dataset, which includes three emotion classes: positive, negative, and neutral, and selected the most appropriate features for classification. The three parallel ANFIS structures were trained using the selected features as input vectors, and the outputs of these models were combined to obtain a new feature vector. This feature vector was then used as the input to the adaptive network, which produced the output of emotion prediction. In addition, it is evaluated the accuracy of the network trained using only the first features of the dataset. The hybrid structure was designed to enhance the system's performance, and the best accuracy result of 96.51% was achieved using the ANFIS-ANFIS model. Overall, this study provides a promising approach for emotion classification based on EEG signals. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
41. THE STANDARD ANALYSIS OF THE FACTORS AFFECTING GROWTH OF AGRICULTURAL PRODUCT IN IRAQ FOR THE YEARS 2004-2020 AND ITS PREDICTION USING PROBABILISTIC NEURAL NETWORK.
- Author
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Wadi, Widad Idwer and Yaqoob, Asmaa Ayoob
- Abstract
The agricultural sector is one of the most important sectors that has a key role in development, because it is one of the most important sources in providing foodstuffs to the population and raw materials for industries. The purpose of this research is to analyze the reality of agricultural production in Iraq by studying the effect of each of the factors (cultivated area, water resources, rainfall amounts, agricultural mechanization, fertilizer quantities, investment expenditures in the agricultural sector and labor force) and their impact on agricultural product. Artificial intelligence methods represented by Probabilistic Neural Network (PNN) were used for the purpose of analysis, where the network is based on a statistical algorithm called Kernel Discrimination Analysis, and the probabilistic network gave good results. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
42. Machine learning-based rail corrugation recognition: a metro vehicle response and noise perspective.
- Author
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Cai, Xiaopei, Tang, Xueyang, Chang, Wenhao, Wang, Tao, Lau, Albert, Chen, Zhipei, and Qie, Luchao
- Subjects
- *
ARTIFICIAL neural networks , *BOGIES (Vehicles) , *PARTICLE swarm optimization , *HILBERT-Huang transform , *SOUND pressure , *ARTIFICIAL intelligence - Abstract
Rail corrugation is a common problem in metro lines, and its efficient recognition is always an issue worth studying. To recognize the wavelength and amplitude of rail corrugation, a particle probabilistic neural network (PPNN) algorithm is developed. The PPNN is incorporated with the particle swarm optimization algorithm and the probabilistic neural network. On the basis of the above, the in-vehicle noise characteristics measured in the field are used to recognize normal rail wavelengths of 30 and 50 mm. A stepwise moving window search algorithm suitable for selecting features with a fixed order was developed to select in-vehicle noise features. Sound pressure levels at 400, 500, 630 and 800 Hz of in-vehicle noise are fed into the PPNN, and the average accuracy can reach 96.43%. The bogie acceleration characteristics calculated by the multi-body dynamics simulation model are used to recognize normal rail amplitudes of 0.1 and 0.2 mm. The bogie acceleration is decomposed by the complete ensemble empirical mode decomposition with adaptive noise, and a reconstructional signal is obtained. The energy entropy of the reconstructional signal is fed into the PPNN, and the average accuracy can reach 95.40%. This article is part of the theme issue 'Artificial intelligence in failure analysis of transportation infrastructure and materials'. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
43. Using Different Types of Artificial Neural Networks to Classify 2D Matrix Codes and Their Rotations—A Comparative Study.
- Author
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Karrach, Ladislav and Pivarčiová, Elena
- Subjects
TWO-dimensional bar codes ,CONVOLUTIONAL neural networks ,MULTILAYER perceptrons ,IMAGE recognition (Computer vision) ,OBJECT recognition (Computer vision) - Abstract
Artificial neural networks can solve various tasks in computer vision, such as image classification, object detection, and general recognition. Our comparative study deals with four types of artificial neural networks—multilayer perceptrons, probabilistic neural networks, radial basis function neural networks, and convolutional neural networks—and investigates their ability to classify 2D matrix codes (Data Matrix codes, QR codes, and Aztec codes) as well as their rotation. The paper presents the basic building blocks of these artificial neural networks and their architecture and compares the classification accuracy of 2D matrix codes under different configurations of these neural networks. A dataset of 3000 synthetic code samples was used to train and test the neural networks. When the neural networks were trained on the full dataset, the convolutional neural network showed its superiority, followed by the RBF neural network and the multilayer perceptron. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
44. 基于概率神经网络的智能找矿方法—以四川雅江县 木绒锂矿为例.
- Author
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杨青松, 罗先熔, 岳大斌, 刘攀峰, 高 文, 文美兰, 廖兴健, 李杰伟, 梁 鸣, and 刘永胜
- Subjects
ARTIFICIAL neural networks ,PROSPECTING ,LITHIUM mining ,GEOCHEMICAL prospecting ,INTELLIGENT buildings ,ALKALI metals - Abstract
Copyright of Geology & Exploration is the property of Geology & Exploration Editorial Office and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2023
- Full Text
- View/download PDF
45. Material Classification and Aging Time Prediction of Structural Metals Using Laser-Induced Breakdown Spectroscopy Combined with Probabilistic Neural Network.
- Author
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Wang, Qian, Li, Guowen, Hang, Yuhua, Chen, Silei, Qiu, Yan, and Zhao, Wanmeng
- Subjects
- *
ARTIFICIAL neural networks , *DETERIORATION of materials , *STRUCTURAL engineering , *LASER-induced breakdown spectroscopy , *OPTIMIZATION algorithms , *FEATURE extraction - Abstract
In this paper, laser-induced breakdown spectroscopy (LIBS) combined with a probabilistic neural network (PNN) was applied to classify engineering structural metal samples (valve stem, welding material, and base metal). Additionally, utilizing data from the plasma emission spectrum generated by laser ablation of samples with different aging times, an aging time prediction model based on a firefly optimized probabilistic neural network (FA-PNN) was established, which can effectively evaluate the service performance of structural materials. The problem of insufficient features obtained by principal component analysis (PCA) for predicting the aging time of materials is addressed by the proposal of a time-frequency feature extraction method based on short-time Fourier transform (STFT). The classification accuracy (ACC) of time-frequency features and principal component features was compared under PNN. The results indicate that, in comparison to the PCA feature extraction approach, the time-frequency feature extraction method based on STFT demonstrates higher accuracy in predicting the time of aging materials. Then, the relationship between classification accuracy (ACC) and settings of PNN was discussed. The ACC of the PNN model for both the material classification test set and the aging time test set achieved 100% with Firefly (FA) optimization algorithms. This result was also compared with the ACC of ANN, KNN, PLS-DA, and SIMCA for the aging time test set (95%, 87.5%, 85%, and 62.5%, respectively). The experimental results demonstrated that the classification model using LIBS combined with FA-PNN could realize better classification accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
46. Probabilistic neural network with the concept of edge weight-based entropy.
- Author
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Alharbi, Rehab, Ahmad, Ali, Azeem, Muhammad, and Koam, Ali N. A.
- Subjects
- *
ARTIFICIAL neural networks , *ENTROPY , *PATTERN recognition systems , *MOLECULAR connectivity index , *NERVE tissue - Abstract
Nerve tissues and the nervous system can be modelled into a computer system and which is known as a neural network. A feed-forward neural network is a type of neural network, and these types of functionality are contained in a probabilistic neural network. A probabilistic neural network is extensively applied in the problems of pattern recognition. A system or network's uncertainty is determined by the concept of entropy. Entropy concepts are commonly applied in biology, chemistry, science, engineering in short the applied mathematics. Depending on the circumstances, entropy in a graph's structure can have a variety of shapes. In 1955, graph-based entropy was created. One sort of entropy is weighted-edge entropy. This research looks closely at the abstract form of probabilistic neural networks. We developed few entropies of weighted-edge expressions for a general viewpoint of probabilistic neural networks. On the probabilistic neural network, we measured few weighted-edge and the concepts based on the topological index. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
47. Hybrid Multi-Label Classification Model for Medical Applications Based on Adaptive Synthetic Data and Ensemble Learning.
- Author
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Priyadharshini, M., Banu, A. Faritha, Sharma, Bhisham, Chowdhury, Subrata, Rabie, Khaled, and Shongwe, Thokozani
- Subjects
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ARTIFICIAL neural networks , *PARTICLE swarm optimization , *MEDICAL coding , *COMPUTER vision , *DECISION trees - Abstract
In recent years, both machine learning and computer vision have seen growth in the use of multi-label categorization. SMOTE is now being utilized in existing research for data balance, and SMOTE does not consider that nearby examples may be from different classes when producing synthetic samples. As a result, there can be more class overlap and more noise. To avoid this problem, this work presented an innovative technique called Adaptive Synthetic Data-Based Multi-label Classification (ASDMLC). Adaptive Synthetic (ADASYN) sampling is a sampling strategy for learning from unbalanced data sets. ADASYN weights minority class instances by learning difficulty. For hard-to-learn minority class cases, synthetic data are created. Their numerical variables are normalized with the help of the Min-Max technique to standardize the magnitude of each variable's impact on the outcomes. The values of the attribute in this work are changed to a new range, from 0 to 1, using the normalization approach. To raise the accuracy of multi-label classification, Velocity-Equalized Particle Swarm Optimization (VPSO) is utilized for feature selection. In the proposed approach, to overcome the premature convergence problem, standard PSO has been improved by equalizing the velocity with each dimension of the problem. To expose the inherent label dependencies, the multi-label classification ensemble of Adaptive Neuro-Fuzzy Inference System (ANFIS), Probabilistic Neural Network (PNN), and Clustering-Based Decision tree methods will be processed based on an averaging method. The following criteria, including precision, recall, accuracy, and error rate, are used to assess performance. The suggested model's multi-label classification accuracy is 90.88%, better than previous techniques, which is PCT, HOMER, and ML-Forest is 65.57%, 70.66%, and 82.29%, respectively. [ABSTRACT FROM AUTHOR]
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- 2023
- Full Text
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48. Predicting the magnitude of injection-induced earthquakes using machine learning techniques.
- Author
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Rashidi, Javad N. and Ghassemieh, Mehdi
- Subjects
ARTIFICIAL neural networks ,MACHINE learning ,EARTHQUAKE magnitude ,EARTHQUAKE prediction ,INDUCED seismicity ,SUPPORT vector machines ,EARTHQUAKES ,INJECTION wells - Abstract
Predicting the magnitude of induced earthquakes by underground injection is a critical strategy for risk assessment. This paper proposes the application of three machine learning techniques—support vector machine, probabilistic neural network, and AdaBoost algorithm—to predict the magnitude of the largest injection-induced earthquake (M) within a predetermined period. These machine learning techniques are used to model the relationships between ten input parameters—six seismicity indicators and four inputs related to injection wells—and earthquake magnitude classes (M < 3, 3 ≤ M < 4, and M ≥ 4). Models are applied to the earthquake and injection data for the Central Oklahoma region in the USA, and their input data are balanced using the data-level approach. The performance of each model is measured using the average recall of earthquake magnitude classes. The results show that balancing the training data improves the performance of the models, and the magnitude of induced earthquakes depends on the injection volume in the nine months before the earthquake prediction period. The parametric analysis of each model's input reveals that induced earthquake magnitudes are more likely to occur when there are shorter distances between the bottom of injection wells and the crystalline basement. Among the investigated models, the support vector machine model trained on the data balanced using synthetic minority oversampling technique performed best by predicting an average of 72% of earthquake magnitude classes. Overall, the findings of this study will allow for predicting the magnitude of induced earthquakes and the development of an early warning system for policymakers and residents living in areas prone to injection-induced earthquakes. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
49. 基于MI-ECHPO-PNN的高压断路器 故障诊断研究.
- Author
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张莲, 贾浩, 赵梦琪, 张尚德, 季鸿宇, and 李多
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ARTIFICIAL neural networks ,FAULT diagnosis ,HIGH voltages ,DIAGNOSIS methods ,MEDICAL screening ,FEATURE selection - Abstract
Copyright of Journal of Chongqing University of Technology (Natural Science) is the property of Chongqing University of Technology and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2023
- Full Text
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50. Predicting the impact of no. of authors on no. of citations of research publications based on neural networks.
- Author
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Talaat, Fatma M. and Gamel, Samah A.
- Abstract
Any work's citations are regarded as a key characteristic that leads to its appraisal and study. Citations are one of the most important indicators of a research publication's quality. Citations can have a favorable or bad impact on any piece of work or publication depending on a variety of circumstances, including author skill, publication venue, research topic, and so on. The goal of this study is to see how the number of co-authors affects the number of citations in research papers. There will be a correlation analysis between the number of co-authors and the number of citations for research articles, and we will observe how the number of co-authors affects the number of citations for publications. Citation data is gathered from databases such as DBLP, ACM, MAG (Microsoft Academic Graph), and others. There are 629,814 papers and 632,752 citations in the initial version. We use two methods to examine the impact of co-author count on the number of citations in a research paper: (i) Pearson's correlation coefficient (PCC), and (ii) multiple regression (MR). To test the impact of co-author count on citation count of research publications, we calculate Pearson's correlation coefficient (ra) between the two variables number of authors (NA) and citation count (CC). We also calculate Pearson's correlation coefficient between the citation count (CC) and the most effective variables to compare between the impact of the number of authors and the impact of the other factors such as (i) rc between number of countries (NC) and citation count (CC). (ii) rv between venue category (VC) and citation count (CC). (iii) ry between Year_From (YF) and citation count (CC). Empirical evidence shows that co-authored publications achieve higher visibility and impact. To predict the number of citations from the previously mentioned factors (NA, NC, VC, and YF), we use multiple linear regression (MLR). The goal of multiple linear regression (MLR) is to model the linear relationship between the explanatory (independent) variables and response (dependent) variables. The higher R-square, the tight relationship exists between dependent variables and independent variables. It is observed that the R-square decreases in the case of removing NA which means that the NA is the most influential factor (the relation between NA and CC is the most powerful relation). The main originality of this paper is to introduce an effective prediction module (EPM) which uses probabilistic neural network (PNN) to predict the number of citations from the most effective factors (NA, NC, VC, and YF). [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
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