72,846 results
Search Results
302. Research Paper on Diabetic Data Analysis.
- Author
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Kataria, Jyoti, Dhingra, Sunita, and Kumari, Babita
- Subjects
DATA analysis ,DIAGNOSIS of diabetes ,DATA mining ,MACHINE learning ,ARTIFICIAL neural networks ,DATA modeling - Abstract
Diabetic Data Analysis is a field of research which comes under analytics. Analytics is a subject of statistics to the extent that we read raw data by using computational techniques and then we make sense out of this raw data this is called analysis. An essential function in data mining and analytics is the Data Classification. A machine learning tool known as neural network is capable to perform various tasks in diabetic data analysis. Today, healthcare industries having large amount of data and to access that data analysis process is required, so there arise many complexities. Medicare industries face different kind of challenges, so it is very important to develop data analytics. In this paper an integrated approach is used to predict diabetes from neural network. Neural network can be taken as ubiquitous indicator. From various resources raw data has been collected and compare it to a tool that can be a trained machine for the prediction of diabetes patients. Main aim of integrating approach in neural network is to increase the accurate results in the prediction of diabetic patients. Big data is an approach to resolve the problem in an enhanced manner. A modeling structure is used in this paper. [ABSTRACT FROM AUTHOR]
- Published
- 2017
303. Predicting instructional effectiveness of cloud-based virtual learning environment
- Author
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Hew, Teck-Soon and Syed Abdul Kadir, Sharifah Latifah
- Published
- 2016
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304. 37‐4: Invited Paper: Intelligent Virtual‐Reality Head‐Mounted Displays with Brain Monitoring and Visual Function Assessment.
- Author
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Zao, John K., Chien, Yu-Yi, Lin, Fang-Cheng, Wang, Yu-Te, Nakanishi, Masaki, Medeiros, Felipe A., Jung, Tzyy-Ping, and Huang, Yi-Pai
- Subjects
VIRTUAL reality ,STATISTICAL bootstrapping ,ARTIFICIAL neural networks - Abstract
This paper demonstrates an intelligent portable device, nGoggle, which combines brain monitoring with a virtual reality display. We proposed high‐frequency polychromatic composite stimuli with short repetitive sequences to elicit steady‐state visual evoked potentials (SSVEPs) at stimulus frequencies in 43–56 Hz for reducing the flickering. Additionally, a Generic Bootstrapping Model and classification using a Convolutional Neural Network (CNN) was implemented to improve the detection accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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- View/download PDF
305. 37‐1: Invited Paper: 3D Computer Vision Based on Machine Learning with Deep Neural Networks.
- Author
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Vodrahalli, Kailas and Bhowmik, Achintya K.
- Subjects
COMPUTER vision ,THREE-dimensional display systems ,ARTIFICIAL neural networks - Abstract
Recent advances in the field of computer vision can be attributed to the emergence of deep learning techniques, in particular convolutional neural networks. Neural networks, partially inspired by the brain’s visual cortex, enable a computer to “learn” the most important features of the images it is shown in relation to a specific, specified task. Given sufficient data and time, (deep) convolutional neural networks offer more easily designed, more generalizable, and significantly more accurate end‐to‐end systems than is possible with previously employed computer vision techniques. This review paper seeks to provide an overview of deep learning in the field of computer vision with an emphasis on recent progress in tasks involving 3D visual data. Through a backdrop of the mammalian visual processing system, we also hope to provide inspiration for future advances in automated visual processing. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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306. 3D analysis of influence of stator winding asymmetry on axial flux
- Author
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Pietrowski, Wojciech, Demenko, Andrzej, Hameyer, Kay, Pietrowski, Wojciech, Šušnjić, Livio, and Zawirski, Krzysztof
- Published
- 2013
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307. Degenerated simplex search method to optimize neural network error function
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Ahmed, Shamsuddin
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- 2013
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308. The Application of Neural Networks to the Papermaking Industry.
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Edwards, Peter J. and Murray, Alan F.
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ARTIFICIAL neural networks , *PAPER industry - Abstract
Presents information on a study which described the application of neural network techniques to the papermaking industry. Information on the database provided by Tillis Russell for the study; Preprocessing and coding of data; Neural-network training; Results of the study; Conclusion.
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- 1999
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309. ROBUST FEATURES AND PAPER CURRENCY RECOGNITION SYSTEM.
- Author
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Sargano, Allah Bux, Sarfraz, Muhammad, and Haq, NuhmanUl
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FEATURE extraction ,BACK propagation ,ARTIFICIAL neural networks ,HARD currencies ,REAL-time computing - Abstract
This paperproposes a new intelligent system for paper currency recognition. Pakistani paper currency has been considered, as a case study, for intelligent recognition. This paper identifies, introduces, and extracts robustfeatures fromPakistani banknotes. After extracting thesefeatures, the paper proposes to use three layers feed-forward Backpropagation Neural Network (BPN) for classification. The proposed technique and system are simple and comparatively less time consuming which makes it suitable for real-time applications. Implementation and experimentation of the proposed technique certify the authenticity to a high recognition. [ABSTRACT FROM AUTHOR]
- Published
- 2013
310. Efficient low-carbon manufacturing for CFRP composite machining based on deep networks.
- Author
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Shunhu, Huang, Feng, Ma, Qingshan, Gong, and Hua, Zhang
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CARBON fiber-reinforced plastics ,MACHINE tool industry ,ARTIFICIAL neural networks ,MACHINERY industry ,EMISSIONS (Air pollution) ,MACHINING ,MACHINE tools - Abstract
The drilling quality of carbon fibre reinforced polymer (CFRP) components is a key factor affecting the service life of the components, while energy saving and emission reduction in industrial production are crucial. In this study, drilling experiments were conducted on T300 plywood using a 55° coated tungsten steel drill bit, and CNN-LSTM neural network models were used to construct mapping relationships between process parameters (spindle speed, feed rate, and fibre lay-up sequence) and delamination factor and machine energy consumption. A new method of predicting the delamination factor by process parameters is proposed, and explored the optimal process parameter combinations that reduce the energy consumption of machine tools and minimise the delamination factor at the same time. The research results show that within the parameter settings, a spindle speed of 7000 r/min, a feed rate of 40 mm/min, and a lay-up sequence of [0°, 0°, −45°, 90°]
6s ensure both low power consumption in the drilling process and the highest possible hole quality. This paper clearly demonstrates the feasibility of achieving low-power, high-quality drilling of CFRP through parameter optimisation, providing guidance to the manufacturing industry to improve the quality of CFRP hole-making while easing the pressure on carbon emissions. [ABSTRACT FROM AUTHOR]- Published
- 2024
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311. Adsorption of Indigo Carmine dye onto the surface-modified adsorbent prepared from municipal waste and simulation using deep neural network.
- Author
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Ahmad, Muhammad Bilal, Soomro, Umama, Muqeet, Muhammad, and Ahmed, Zubair
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ARTIFICIAL neural networks , *WASTE paper , *STANDARD deviations , *ADSORPTION (Chemistry) , *GENTIAN violet , *CORN stover - Abstract
A new adsorbent was prepared from municipal wastes (a mixture of Corn Stover, Paper Waste, and Yard Waste) by cationization with 3 ̶ Chloro ̶ 2 ̶ Hydroxypropyl Trimethylammonium Chloride. The FTIR spectrum confirmed the quaternary ammonium group's presence on the adsorbent surface (1450 cm−1). The maximum adsorption capacity (148 mg/g) was higher than the earlier reported values. Liu isotherm described well the adsorption process, with a high R2 adj value (0.997). The pseudo-first-order equation fits well for kinetic data, and thermodynamic experiments demonstrated the endothermic nature of the adsorption. The deep neural network (DNN) is applied to simulate the adsorption process, which outperformed the classical machine learning and shallow neural network models. The DNN model predicted accurately the adsorption process with the lowest deviation from the actual values with Mean Absolute Error (MAE = 3.2), Root Mean Squared Error (RMSE = 4.89), and the highest performance accuracy of R2 (0.96) as compared to various classical ML algorithms such as Linear Regressions (MAE = 12.53, RMSE = 18.01, R2 = 0.42), Random Forest (MAE = 5.81, RMSE = 10.05, R2 = 0.82), and Extra Trees (MAE = 4.35, RMSE = 8.22, R2 = 0.88). The utilized DNN model can be used for predicting the removal efficiency of dyes for various combinations of input parameters without going through laboratory experiments. ga1 • Matrix of municipal waste was converted into an absorbent by surface cationization. • The adsorbent had higher adsorption capacity for anionic dye Indigo Carmine. • Liu isotherm described well the adsorption process. • Classical machine learning models didn't predict accurately. • Deep Neural Network was able to model the adsorption process with 96% accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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312. A robust UPFC damping control scheme using PI and ANN based adaptive controllers
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Ma, Tsao‐Tsung, Lun Lo, Kwok, and Tumay, Mehmet
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- 2000
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313. Hydroinformatics, data mining and maintenance of UK water networks
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Savic, Dragan A. and Walters, Godfrey A.
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- 1999
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314. Embedded Yolo-Fastest V2-Based 3D Reconstruction and Size Prediction of Grain Silo-Bag.
- Author
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Guo, Shujin, Mao, Xu, Dai, Dong, Wang, Zhenyu, Chen, Du, and Wang, Shumao
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STANDARD deviations , *ARTIFICIAL neural networks , *GRAIN size , *BAGS , *PLASTIC bags , *MEASURING instruments , *BUILDING repair , *BAGGAGE handling in airports - Abstract
Contactless and non-destructive measuring tools can facilitate the moisture monitoring of bagged or bulk grain during transportation and storage. However, accurate target recognition and size prediction always impede the effectiveness of contactless monitoring in actual use. This paper developed a novel 3D reconstruction method upon multi-angle point clouds using a binocular depth camera and a proper Yolo-based neural model to resolve the problem. With this method, this paper developed an embedded and low-cost monitoring system for the in-warehouse grain bags, which predicted targets' 3D size and boosted contactless grain moisture measuring. Identifying and extracting the object of interest from the complex background was challenging in size prediction of the grain silo-bag on a conveyor. This study first evaluated a series of Yolo-based neural network models and explored the most appropriate neural network structure for accurately extracting the grain bag. In point-cloud processing, this study constructed a rotation matrix to fuse multi-angle point clouds to generate a complete one. This study deployed all the above methods on a Raspberry Pi-embedded board to perform the grain bag's 3D reconstruction and size prediction. For experimental validation, this study built the 3D reconstruction platform and tested grain bags' reconstruction performance. First, this study determined the appropriate positions (−60°, 0°, 60°) with the least positions and high reconstruction quality. Then, this study validated the efficacy of the embedded system by evaluating its speed and accuracy and comparing it to the original Torch model. Results demonstrated that the NCNN-accelerated model significantly enhanced the average processing speed, nearly 30 times faster than the Torch model. The proposed system predicted the objects' length, width, and height, achieving accuracies of 97.76%, 97.02%, and 96.81%, respectively. The maximum residual value was less than 9 mm. And all the root mean square errors were less than 7 mm. In the future, the system will mount three depth cameras for achieving real-time size prediction and introduce a contactless measuring tool to finalize grain moisture detection. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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315. Use of ANNs in complex risk analysis applications
- Author
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De Silva, Nayanthara, Ranasinghe, Malik, and De Silva, C.R.
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- 2013
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316. Modelling and simulation with neural and fuzzy‐neural networks of switched circuits
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Demir, Yakup and Uçar, Ayşegül
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- 2003
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317. ANN‐GA based model for stock market surveillance
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Punniyamoorthy, Murugesan and Joy Thoppan, Jose
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- 2012
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318. The potential of artificial neural networks in mass appraisal: the case revisited
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McCluskey, William, Davis, Peadar, Haran, Martin, McCord, Michael, and McIlhatton, David
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- 2012
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319. An improved best-fit heuristic for the orthogonal strip packing problem.
- Author
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Verstichel, Jannes, De Causmaecker, Patrick, and Berghe, Greet Vanden
- Subjects
HEURISTIC ,PAPER industry ,CLOTHING industry ,ARTIFICIAL neural networks ,GENETIC algorithms - Abstract
The best-fit heuristic is a simple and powerful tool for solving the two-dimensional orthogonal strip packing problem. It is the most efficient constructive heuristic on a wide range of rectangular strip packing benchmark problems. In this paper, the results of the original best-fit heuristic are further improved by adding new item orderings and item placement strategies, resulting in the three-way best-fit heuristic. By applying these steps, significantly better results are obtained in comparable computation time. Furthermore, some data structures are implemented, which increase the scalability of the heuristic for large problem instances and a slightly altered heuristic with an optimal [ABSTRACT FROM AUTHOR]
- Published
- 2013
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320. ANN‐based automatic contingency selection for electric power system
- Author
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Lo, K.L., Luan, W.P., Given, M., Bradley, M., and Wan, H.B.
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- 2002
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321. Special issue: Advances in artificial neural networks, machine learning and computational intelligenceSelected papers from the 23rd European Symposium on Artificial Neural Networks (ESANN 2015).
- Author
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Aiolli, Fabio, Bunte, Kerstin, Hérault, Romain, and Kanevski, Mikhail
- Subjects
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ARTIFICIAL neural networks , *MACHINE learning , *COMPUTATIONAL intelligence , *CONFERENCES & conventions , *ARTIFICIAL intelligence - Published
- 2016
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322. A comprehensive review of hybrid AC/DC networks: insights into system planning, energy management, control, and protection.
- Author
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Abdelwanis, Mohamed I. and Elmezain, Mohammed I.
- Subjects
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ARTIFICIAL neural networks , *HYBRID systems , *RELIABILITY in engineering , *MATHEMATICAL optimization , *ENERGY management , *SMART power grids - Abstract
The introduction of hybrid alternating current (AC)/direct current (DC) distribution networks led to several developments in smart grid and decentralized power system technology. The paper concentrates on several topics related to the operation of hybrid AC/DC networks. Such as optimization methods, control strategies, energy management, protection issues, and proposed solutions. The implementation of neural network optimization methods has great importance for the successful integration of multiple energy sources, dynamic energy management, establishment of system stability and reliability, power distribution optimization, management of energy storage, and online fault detection and diagnosis in hybrid networks like the hybrid AC–DC microgrids (MG). Taking advantage of renewable energy generation and cost-cutting through the neural network optimization technique holds the key to these progressions. Besides identifying the challenges in the operation of a hybrid system, the paper also compares this system to conventional MGs and shows the benefits of this type of system over different MG structures. This review compares the different topologies, particularly looking at the AC–DC coupled hybrid MGs, and shows the important role of the interlinking of converters that are used for efficient transmission between AC and DC MGs and generally used to implement the different control and optimization techniques. Overall, this review paper can be regarded as a reference, pointing out the pros and cons of integrating hybrid AC/DC distribution networks for future study and improvement paths in this developing area. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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323. Mean-AVaR in credibilistic portfolio management via an artificial neural network scheme.
- Author
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Talebi, Fatemeh, Nazemi, Alireza, and Ataabadi, Abdolmajid Abdolbaghi
- Subjects
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ARTIFICIAL neural networks , *MATHEMATICAL optimization , *ORDINARY differential equations , *LINEAR programming , *VALUE at risk , *RECURRENT neural networks - Abstract
This paper focuses on the computation issue of portfolio optimisation with scenario-based mean-Average Value at Risk (AVaR) in credibilistic environment. The portfolio optimisation problem is designed in two cases: risk taker model and risk-averse model. The main idea is to replace the portfolio selection models with linear programming (LP) problems. Since the computing time required for solving LP greatly depends on the dimension and the structure of the problem, the conventional numerical methods are usually less effective in real-time applications. One promising approach to handle online applications is to employ recurrent neural networks based on circuit implementation. Hence, according to the convex optimisation theory and some concepts of ordinary differential equations, a neural network model for solving the LP problems related to portfolio selection problems is presented. The equilibrium point of the proposed model is proved to be equivalent to the optimal solution of the original problem. It is also shown that the proposed neural network model is stable in the sense of Lyapunov and it is globally convergent to an exact optimal solution of the portfolio selection problem with fuzzy returns. Some illustrative examples are provided to show the feasibility and the efficiency of the proposed method in this paper. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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324. Modeling turning performance of Inconel 718 with hybrid nanofluid under MQL using ANN and ANFIS.
- Author
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Kulkarni, Paresh and Chinchanikar, Satish
- Subjects
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ARTIFICIAL neural networks , *ARTIFICIAL intelligence , *PARTICLE swarm optimization , *MACHINE learning , *PATTERN recognition systems , *MACHINABILITY of metals , *NANOFLUIDICS - Abstract
This document is a list of references to research papers and articles that focus on machining processes, specifically the machining of superalloy Inconel 718. The papers cover a range of topics including tool wear reduction, surface integrity evaluation, optimization techniques, and prediction models using artificial intelligence and machine learning. The research explores different lubrication techniques, nanofluid additives, and cutting parameters to improve the machinability of Inconel 718. The papers utilize various methodologies such as neural networks, fuzzy logic, response surface methodology, and genetic algorithms to optimize machining parameters and predict tool wear, surface roughness, and material removal rate. [Extracted from the article]
- Published
- 2024
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325. Correlation coefficients of vibration signals and machine learning algorithm for structural damage assessment in beams under moving load.
- Author
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Toan Pham-Bao and Vien Le-Ngoc
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ARTIFICIAL neural networks , *MACHINE learning , *FEEDFORWARD neural networks , *STRUCTURAL health monitoring , *IMPULSE response , *OPTIMIZATION algorithms , *WOODEN beams , *DEEP learning - Abstract
This scientific paper explores the use of correlation coefficients of vibration signals and machine learning algorithms for structural damage assessment in beams under moving loads. The paper discusses the challenges of maintaining structural integrity and the importance of automated, nondestructive monitoring techniques. Preprocessing techniques, such as the random decrement technique (RDT), are highlighted for improving data analysis. Machine learning algorithms are identified as valuable tools for structural damage assessment. The paper concludes by emphasizing the potential of machine learning in safeguarding critical infrastructures. The text also discusses trigger points and the vibration response of a slender beam under a moving load. An artificial neural network (ANN) is proposed as a computational model for identifying non-linear features. Experimental testing on a simulated bridge girder using accelerometers collected data to identify and locate damage in the beam. The ANN achieved high accuracy in detecting damage appearance and location, but further research is needed to improve accuracy in real-world situations. [Extracted from the article]
- Published
- 2024
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326. Introduction and application of a drive-by damage detection methodology for bridges using variational mode decomposition.
- Author
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Shandiz, Shahrooz Khalkhali, Khezrzadeh, Hamed, and Azam, Saeed Eftekhar
- Subjects
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STRAINS & stresses (Mechanics) , *ARTIFICIAL neural networks , *POISSON'S ratio , *STRUCTURAL health monitoring , *MACHINE learning , *VIBRATION (Mechanics) , *HILBERT transform , *HILBERT-Huang transform - Abstract
This document is a list of references related to the topic of variational mode decomposition (VMD) and its applications in various fields such as structural health monitoring, fault diagnosis, and time series analysis. The references include research papers and articles that discuss the theory, methodology, and practical applications of VMD. The document also includes a list of nomenclature used in the referenced papers. [Extracted from the article]
- Published
- 2024
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327. Projective synchronization of a nonautonomous delayed neural networks with Caputo derivative.
- Author
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Wang, Changyou, Lei, Zongxin, Jia, Lili, Du, Yuanhua, Zhang, Qiuyan, and Liu, Jun
- Subjects
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ARTIFICIAL neural networks , *NEURAL circuitry , *SYNCHRONIZATION , *DIFFERENTIAL inequalities , *LYAPUNOV functions - Abstract
In this paper, the projective synchronization problem of nonautonomous neural networks with time delay and Caputo derivative is researched. First, by introducing time delay and variable coefficient into the known neural network model, the neural network that can more accurately describe the interaction between neurons is given. Second, based on the improved neural network model, two global synchronization schemes are achieved, respectively. Finally, by constructing two novel Lyapunov functions and utilizing the properties of delay fractional-order differential inequalities, the asymptotic stability of the zero equilibrium point of the error system obtained from the master–slave systems is proved by some new developing analysis methods, respectively, and some criteria for global projective synchronization of delayed nonautonomous neural networks with Caputo derivatives are obtained, respectively, under two new synchronous controllers. In addition, the correctness of the theoretical results obtained in this paper is verified by some numerical simulation. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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328. Deep reinforcement learning-based dynamic multi-beam power allocation for GEO-LEO co-existing satellites.
- Author
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Xu, Jing, Fan, Simeng, Zhao, Zhongtian, Li, Fan, and Zhang, Yizhai
- Subjects
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ARTIFICIAL neural networks , *DEEP reinforcement learning , *FRACTIONAL powers , *QUALITY of service , *COMPUTATIONAL complexity - Abstract
This paper first formulates a novel long-term beam power allocation (BPA) problem to tackle the harmful co-linear interference issue in the geostationary earth orbit (GEO) and low earth orbit (LEO) co-existing satellite system. This BPA problem intends to optimize the long-term weighted sum rate of the LEO system while ensuring that GEO user's received interference from the LEO satellite system is lower than a pre-fixed threshold. To solve it in a real-time manner, a deep reinforcement learning (DRL) framework based on the proximal policy optimization (PPO) algorithm is proposed, named as drlBPA. In addition, for the existing most relevant baseline, the fractional optimization (FO)-based BPA scheme, on the one hand, this paper improves it via a greedy strategy to fully exploit time resource. On the other hand, to further reduce the computational complexity stemming from its iterative solving procedure, a deep neural network approximation scheme is also developed. Simulation results demonstrate that (i) The trained DRL model of the proposed drlBPA scheme has good convergence and generality performance. (ii) Compared with the three FO-based benchmarks, the drlBPA scheme not only achieves the highest throughput of the LEO system within a significantly reduced computation time, but also yields the best system stability. • Maximizes the LEO system throughput while ensuring the GEO system service quality. • Builds a PPO algorithm based deep reinforcement learning framework. • Constructs two benchmark schemes: improved FO (IFO) and the DNN-accelerated IFO. • Achieves the highest LEO system throughput with the lowest computational complexity. • Yields the best system stability compared with the benchmarks. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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329. Optimization of robot manipulator configuration calibration by using Zhang neural network for repetitive motion.
- Author
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Guo, Pengfei, Zhang, Yunong, Li, Shuai, and Tan, Ning
- Subjects
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ARTIFICIAL neural networks , *STABILITY of nonlinear systems , *AUTOMATIC control systems , *COST functions , *ARTIFICIAL intelligence , *QUADRATIC programming - Abstract
High precision and low complexity control algorithm plays an important role in the developing of the end-effector instrumentation of different robot manipulators. In order to reduce the kinetic energy and the high-speed drift phenomenon of the repetitive motion tracking task, the robot manipulator needs to calibrate its configuration. In this paper, we formulate the configuration calibration of the robot manipulator for the repetitive motion task as a future quadratic programming optimization problem constrained with equality constraints, which is also regarded as a fundamental problem in artificial intelligence and modern control engineering. Zhang neural network, which is a canonical method, can be adopted to deal with the continuous form of the future optimization problem, named as temporally dependent quadratic programming problem with equality constraints. In order to overcome the issue of temporally dependent inverse computing, a novel Zhang neural network model and its uncertain disturbance tolerant model, which are termed as filtered reciprocal-kind Zhang neural network model and uncertain disturbance tolerant filtered reciprocal-kind Zhang neural network model, respectively, are proposed by integrating the energy-type cost function and Zhang neural network design formula for solving the temporally dependent quadratic programming problem with equality constraints in this paper. Based on the Euler discrete formula and the models, the discrete filtered reciprocal-kind Zhang neural network and the discrete uncertain disturbance tolerant filtered reciprocal-kind Zhang neural network algorithms are proposed for solving the future quadratic programming problem with equality constraints and the robot manipulator configuration calibration problem of repetitive motion. The convergence properties of the reciprocal-kind Zhang neural network model and its corresponding uncertain disturbance tolerant model are obtained by Lyapunov stability theory of nonlinear system and its corresponding perturbed system, while the convergence property of the filtered reciprocal-kind Zhang neural network model is analyzed by the limit thinking. For the repetitive motion task, three experiments for solving the configuration calibration problem of PUMA560, Kinova Jaco2, and Franka Emika Panda robot manipulators are performed to illustrate the effectiveness, robustness and superiority of our proposed discrete filtered reciprocal-kind Zhang neural network algorithms. • A novel configuration calibration scheme of the robot manipulators is formulated. • An inverse-free Zhang neural network algorithm is proposed. • The proposed algorithm is robustness under uncertain disturbance environment. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
330. Information Theoretic Learning Applied to Daily Streamflow Forecast and Its Impact on the Brazilian Hourly Energy Spot Prices.
- Author
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Antonio Nunes Jr., Elson, Ferreira, Vitor Hugo, and da Costa Pinho, André
- Abstract
The Brazilian energy spot price is obtained through a chain of dynamic stochastic optimization models that works with the uncertainties related to its continental hydrogeneration-based power system. In that sense, this paper presents an information theoretic learning neural forecasting model for daily streamflow prediction of Brazilian hydroelectric power plants. More precisely, the maximum correntropy criterion was used as the error function of a multilayer perceptron. After the prediction stage, the generated outputs were used as one of the inputs of the model chain that is used to compute the hourly energy spot price in Brazil. To the best of the authors' knowledge, it is the first paper that aims to analyze the impact of the streamflow prediction on the Brazilian hourly energy spot price formation. In terms of streamflow forecast, results indicated that the predictions originated from the proposed forecasting model were equivalent to the ones from the official models, especially in the first predicted day. In the spot price graph analysis, the main result pointed that the curves provided from the modeled structure were closer to the values obtained using the actual flows than the official prices, which shows that the proposed work could produce prices more aligned to the real hydrological system conditions. From that, the study's relevance is due to the conclusion that the official process of streamflow forecasting can be improved to generated outputs more consistent with the actual system conditions, to avoid further expenses in the system operation due to potential unscheduled hydrothermal dispatches. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
331. Deep neural networks for removing clouds and nebulae from satellite images.
- Author
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Glazyrina, Natalya, Muratkhan, Raikhan, Eslyamov, Serik, Murzabekova, Gulden, Aziyeva, Nurgul, Rysbekkyzy, Bakhytgul, Orynbayeva, Ainur, and Baktiyarova, Nazira
- Subjects
ARTIFICIAL neural networks ,GENERATIVE adversarial networks ,REMOTE-sensing images ,NATURAL resources management ,REMOTE sensing ,DEEP learning - Abstract
This research paper delves into contemporary methodologies for eradicating clouds and nebulae from space images utilizing advanced deep learning technologies such as conditional generative adversarial networks (conditional GAN), cyclic generative adversarial networks (CycleGAN), and spaceattention generative adversarial networks (space-attention GAN). Cloud cover presents a significant obstacle in remote sensing, impeding accurate data analysis across various domains including environmental monitoring and natural resource management. The proposed techniques offer novel solutions by leveraging spatial attention mechanisms to identify and subsequently eliminate clouds from images, thus uncovering previously concealed information and enhancing the quality of space data. The study emphasizes the necessity for further research aimed at refining cloud removal algorithms to accommodate diverse detection conditions and enhancing the overall efficiency of deep learning in satellite image processing. By highlighting potential benefits and advocating for ongoing exploration, the paper underscores the importance of advancing cloud removal techniques to improve data quality and unlock new applications in Earth remote sensing. In conclusion, the proposed approaches hold promise in addressing the persistent challenge of cloud cover in space imagery, paving the way for more accurate data analysis and future advancements in remote sensing technologies. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
332. Modeling of Steel-Reinforced Grout Composite System-To-Concrete Bond Capacity Using Artificial Neural Networks.
- Author
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Ombres, Luciano, Aiello, Maria Antonietta, Cascardi, Alessio, and Verre, Salvatore
- Subjects
ARTIFICIAL neural networks ,SOLUTION strengthening ,REINFORCED concrete ,FAILURE mode & effects analysis ,TECHNICAL literature ,COMPOSITE columns - Abstract
The use of externally bonded composite systems is recognized as an effective solution for strengthening existing reinforced concrete (RC) structures. Steel-reinforced grout (SRG) is an attractive option, because of its compatibility with the concrete substrate and mechanical properties. However, a critical aspect is the delamination that might affect the steel textile–mortar and the mortar–concrete substrate interfaces. An experimental and theoretical investigation of the SRG–concrete bond is reported in this paper. In particular, the bond performances of SRG-to-concrete joints, which varies the width of the SRG fabric, the displacement rate, and the applied load eccentricity, are analyzed for the stress that is associated with the bond capacity, slip, and failure modes based on the results that are obtained by direct single-lap shear tests. To assess a data set for model calibration, the findings of this paper and those in the technical literature are collected. Therefore, a machine learning (ML) approach that is based on an artificial neural networks (ANN) algorithm is implemented, and a new analytical formulation for the prediction of the SRG-to-concrete bond capacity is proposed. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
333. CoFix: Advancing Semi-Supervised Learning with Noisy Label Mitigation Through Sample Selection and Consistent Regularization.
- Author
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Ma, Yexin
- Subjects
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ARTIFICIAL neural networks , *SUPERVISED learning , *GAUSSIAN mixture models , *COMPUTER vision , *DEEP learning - Abstract
Deep Neural Networks (DNNs) have revolutionized various fields through their ability to model complex patterns, yet their performance critically hinges on the availability of large-scale, accurately labeled datasets. The costly and time-consuming process of creating such datasets has motivated research into Learning with Noisy Labels (LNL), which aims to reduce reliance on perfect labels. This paper introduces CoFix, an innovative LNL framework that integrates sample selection with semi-supervised learning techniques to address the challenge of noisy labels in training. CoFix employs a Gaussian Mixture Model (GMM) to dynamically segment the training data into clean and noisy subsets, leveraging semi-supervised learning approaches on both. Inspired by the FixMatch algorithm, CoFix refines consistent regularization and pseudo-labeling strategies, enhancing augmentation strategies and temperature sharpening techniques. Additionally, CoFix explores label smoothing to augment the loss function, further refining model performance. Our experiments demonstrate CoFix's superiority over state-of-the-art methods, achieving significant improvements in fewer training epochs, particularly in lower noise scenarios. The robustness and versatility of CoFix are evident through its consistent performance across various benchmark datasets and noise levels. The contributions of this paper include a novel LNL method with enhanced generalization capability, an investigation into the impact of label smoothing on the loss function, and extensive testing that confirms CoFix's efficiency and adaptability to different noise levels. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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334. Efficient Hardware Implementation of Spiking Neural Networks Using Nonstandard Finite Difference Scheme for Leaky Integrate and Fire Neuron Model.
- Author
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Venkateswara Reddy, K. and Balaji, N.
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ARTIFICIAL neural networks , *IMAGE recognition (Computer vision) , *FINITE differences , *GATE array circuits , *EULER method - Abstract
Continuous fire models are not suitable for the implementation of hardware units for applications and hence, suitable discrete versions need to be selected. Moreover, the nonlinear components in the neuronal equations reduce system performance (in the case of frequency and number of resources). This research paper focuses on implementing efficient Spiking Neural Networks (SNNs) using Field-Programmable Gate Array (FPGA), with a specific emphasis on the Leaky Integrate and Fire (LIF) neuron model. Its objective is to optimize the mathematical equations of the LIF model by approximating nonlinear functions. This approach enables the development of a simple, cost-effective and high-speed design. Existing LIF Neuron Hardware Blocks (NHBs) are based on the approximation of continuous models by standard difference schemes such as the Euler method or R–K method etc. Mathematically, such approximations do not exactly represent all dynamics of continuous systems. There are good approximations for small step sizes but they behave oddly when the approximation step size increases. Hence, the corresponding discrete, digital versions are not suitable for applications in all cases. This paper utilizes a Nonstandard Finite Difference (NSFD) scheme for the hardware (FPGA) implementation of the exact model of LIF-based NHB that works for all step sizes. The model presented here has a speed of 438.686MHz which is more than other existing models presented in this paper. It is multiplier-less, unlike earlier models. Further, it is implemented for SNN for basic pattern recognition and established that the proposed model works properly for given patterns. The system was evaluated using large datasets such as MNIST handwritten digit recognition, achieving a classification accuracy of 97.8%. Additionally, it underwent testing for COVID-19 chest CT scan image classification, demonstrating an 84% accuracy rate which is 6% more compared to existing Spiking Neural Networks (SNNs). [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
335. A fast method for load detection and classification using texture image classification in intelligent transportation systems.
- Author
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Eghbal, Najmeh, Anaraki, Behzad Ghayoumi, and Cheraghi-Shami, Farideh
- Subjects
IMAGE recognition (Computer vision) ,CONSTRUCTION & demolition debris ,ARTIFICIAL neural networks ,IMAGE analysis ,IMAGE processing ,INTELLIGENT transportation systems - Abstract
The surveillance and management of cargo fleets is a crucial objective of intelligent transportation systems. Load, especially overload, has a destructive effect on roads and bridges, and monitoring it can increase the life of road surface and its structure. For low-end hardware with lack of CPU power and no GPU support, this paper presents a rapid method to detect whether heavy vehicles have loads or not; then it proposes a fast method for classifying load types to distinguish soil and construction waste from other miscellaneous loads for heavy weight vehicles. This paper applies a method for classifying cargo types using image processing and texture image classification. This method extracts features for statistical analysis of texture images based on gray-level co-occurrence matrices and local binary patterns. The classification is carried out by support vector machine, k-nearest neighborhood, K-mean, artificial neural networks and random forest classifiers. A large number of positive and negative patterns have been used to train these classifiers. We compare the performance of proposed extracted features and classifiers. The simulation results demonstrate that soil and construction waste can be identified from other miscellaneous loads effective in real-time implementation. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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336. Modeling health outcomes of air pollution in the Middle East by using support vector machines and neural networks.
- Author
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Ayesha, Noor-ul-Amin, Muhammad, Albalawi, Olayan, Mushtaq, Nadia, Mahmoud, Emad E., Yasmeen, Uzma, and Nabi, Muhammad
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- *
MACHINE learning , *HEALTH planning , *ARTIFICIAL neural networks , *SUPPORT vector machines , *AIR pollution - Abstract
This study investigates the impact of air pollution on health outcomes in Middle Eastern countries, a region facing severe environmental challenges. As such, these are important in an effort to add up to policy-level as well as interventional changes that can be put in practice in the area of public health. Numeration analysis and association with health parameters was carried out by using Analytical tools such as, AIR Data, ARIMA,ANN, SVM and Exponential smoothing. Amongst the models, Support Vector Machine came again on top, with high accuracy yielding Mean Absolute Percentage Error of approximately 1%. Mortality of Air pollution in Qat from the case of Mortality of Air Pollution in Qatar is 959 while Auto regressive Integrated Moving average is 11.096, Exponential Smoothing 9.892 and Artificial Neural Networks are the source of inspiration for the development of this paper 4.61. The above perceptions indicate that there is need to adapt modeling strategies depending on the context and establish that it is possible to implement ML models in public health planning basket. This paper publishes the methodological frameworks for the purpose of modeling and analysis of the EHDs and serves as policy prescription for the policy makers to intending to reduce the effects of air borne pollution on health. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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337. Design and implementation of a universal converter for microgrid applications using approximate dynamic programming and artificial neural networks.
- Author
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Suresh, K., Parimalasundar, E., Kumar, B. Hemanth, Singh, Arvind R., Bajaj, Mohit, and Tuka, Milkias Berhanu
- Subjects
- *
ARTIFICIAL neural networks , *DYNAMIC programming , *DC-AC converters , *DC-to-DC converters , *RENEWABLE energy sources - Abstract
This paper introduces a novel design for a universal DC-DC and DC-AC converter tailored for DC/AC microgrid applications using Approximate Dynamic Programming and Artificial Neural Networks (ADP-ANN). The proposed converter is engineered to operate efficiently with both low-power battery and single-phase AC supply, utilizing identical side terminals and switches for both chopper and inverter configurations. This innovation reduces component redundancy and enhances operational versatility. The converter's design emphasizes minimal switch usage while ensuring efficient conversion to meet diverse load requirements from battery or AC sources. A conceptual example illustrates the design's principles, and comprehensive analyses compare the converter's performance across various operational modes. A test bench model, rated at 3000W, demonstrates the converter's efficacy in all five operational modes with AC/DC inputs. Experimental results confirm the system's robustness and adaptability, leveraging ADP-ANN for optimal performance. The paper concludes by outlining potential applications, including microgrids, electric vehicles, and renewable energy systems, highlighting the converter's key advantages such as reduced complexity, increased efficiency, and broad applicability. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
338. A novel user clustering and efficient resource allocation in non-orthogonal mutliple access for IoT networks.
- Author
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Hamedoon, Syed Muhammad, Chattha, Jawwad Nasar, and Bilal, Muhammad
- Subjects
- *
ARTIFICIAL neural networks , *RESOURCE allocation , *5G networks , *ENERGY consumption , *INTERNET of things , *MULTIPLE access protocols (Computer network protocols) - Abstract
Optimal resource allocation is crucial for 5G and beyond networks, especially when connecting numerous IoT devices. In this paper, user clustering and power allocation challenges in the downlink of a multi-carrier NOMA system are investigated, with sum rate as the optimization objective. The paper presents an iterative optimization process, starting with user clustering followed by power allocation of the users. Although the simultaneous transmission for multiple users achieves high system throughput in NOMA, it leads to more energy consumption, which is limited by the battery capacity of IoT devices. Enhancing energy efficiency by considering the QoS requirement is a primary challenge in NOMA-enabled IoT devices. Currently, fixed user clustering techniques are proposed without considering the diversity and heterogeneity of channels, leading to poor throughput performance. The proposed user clustering technique is based on the partial brute force search (P-BFS) method, which reduces complexity compared to the traditional exhaustive search method. After the user clustering, we performed optimal power allocation using the Lagrangian multiplier method with Karush-Kuhn-Tucker (KKT) optimal conditions for each user assigned to a subchannel in each cluster. Lastly, a deep neural network (DNN) based proposed P-BFS scheme is used to reduce resource allocation's complexity further. The simulation results show a significant improvement in the sum rate of the network. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
339. Multi-model weighted voting method based on convolutional neural network for human activity recognition.
- Author
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Ouyang, Kangyue and Pan, Zhongliang
- Subjects
ARTIFICIAL neural networks ,CONVOLUTIONAL neural networks ,HUMAN activity recognition ,FEATURE extraction ,CLASSIFICATION algorithms ,DEEP learning - Abstract
In recent years, human activity recognition (HAR) has been widely used in medical rehabilitation, smart home and other fields. Currently, the recognition performance highly depends on feature extraction and effective algorithm. On the one hand, traditional manual feature extraction and classification algorithms hinder the improvement of HAR. On the other hand, the latest deep learning technology can automatically process data and extract features, but it faces the problems of poor feature quality and information loss. In order to solve this problem, this paper proposes a new recognition method using only wearable sensor data. In the feature extraction stage, the axis information of each sensor is extracted separately into one-dimensional data, and information of all axes is integrated into a two-dimensional graph. Then, two deep convolutional neural network models are designed to train the features based on one-dimensional data and two-dimensional graph respectively. Finally, weighted voting method is used to get the classification results. Experiments have shown that the average recognition accuracy of the method in this paper is about 3% higher than that of other HAR deep neural network methods, which shown the advantage of the method in this paper in obtaining better recognition result with limited data. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
340. Deep author name disambiguation using DBLP data.
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Boukhers, Zeyd and Asundi, Nagaraj Bahubali
- Subjects
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ARTIFICIAL neural networks , *PERSONAL names , *DIGITAL libraries , *AUTHORSHIP collaboration , *ACQUISITION of data - Abstract
In the academic world, the number of scientists grows every year and so does the number of authors sharing the same names. Consequently, it is challenging to assign newly published papers to their respective authors. Therefore, author name ambiguity is considered a critical open problem in digital libraries. This paper proposes an author name disambiguation approach that links author names to their real-world entities by leveraging their co-authors and domain of research. To this end, we use data collected from the DBLP repository that contains more than 5 million bibliographic records authored by around 2.6 million co-authors. Our approach first groups authors who share the same last names and same first name initials. The author within each group is identified by capturing the relation with his/her co-authors and area of research, represented by the titles of the validated publications of the corresponding author. To this end, we train a neural network model that learns from the representations of the co-authors and titles. We validated the effectiveness of our approach by conducting extensive experiments on a large dataset. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
341. Utilizing Hybrid Machine Learning Framework for Half-Vehicle Suspension Control to Minimize Road-Induced Vibrations.
- Author
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Al-Jarrah, Rami, Al--Migdady, Ahmad, and Tlilan, Hitham
- Subjects
- *
ARTIFICIAL neural networks , *STANDARD deviations , *MOTOR vehicle springs & suspension , *STRUCTURAL optimization , *MACHINE learning - Abstract
In this paper, hybrid feed-forward deep neural network and ANFIS framework is developed to control an active suspension system of half vehicle. The dataset were generated from previous literature that studies driver comfort on different road profiles. The deep neural network aims to learn intricate relationships within dataset between features and output. The deep neural network was trained using back propagation algorithm and automated search method was implemented to obtain optimum network structure. The paper starts generating various road roughness profiles according to ISO 8608. Then, through comprehensive examination of rear and front body displacements and pitch angle accelerations, the study highlights system's significant contributions to ride comfort and vehicle dynamics. The proposed framework outperforms other controllers like proportional-integral-derivative (PID), demonstrating its robustness across different road profiles. The results demonstrated effectiveness of proposed control to minimize peak overshooting and settling times which improves ride comfort and stability significantly. Also, the proposed model has small root mean square error (RMSE) values which indicate smoother and less energetic responses, which are typically preferred for passenger comfort. Furthermore, the adaptive neural fuzzy inference system-deep neural network (ANFIS-DNN) has minimum crest factor (CF) which indicates that the signal has fewer peaks relative to its average. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
342. Climate Change Prediction Model using MCDM Technique based on Neutrosophic Soft Functions with Aggregate Operators.
- Author
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Muniba, Kainat, Jafar, Muhammad Naveed, Riffat, Asma, Mukhtar, Jawaria, and Saleem, Adeel
- Subjects
- *
CLIMATE change , *PREDICTION models , *FUZZY systems , *ARTIFICIAL neural networks , *ATMOSPHERIC pressure - Abstract
The increasing impact of climate change necessitates innovative approaches in modeling and prediction to mitigate its adverse effects. This paper introduces a novel methodology integrating Neutrosophic Soft Functions (NSFs) into climate change prediction frameworks. NSFs, a hybrid of Neutrosophic Set Theory and Soft Set Theory, provide a flexible framework for handling uncertain and imprecise information inherent in climate data. This study explores the application of NSFs in capturing the complex interplay of various climatic variables, including temperature, precipitation, humidity, and atmospheric pressure, thereby enhancing the accuracy and reliability of climate change predictions. By incorporating NSFs into existing predictive models, such as neural networks and fuzzy systems, this research demonstrates significant improvements in forecast precision, particularly in scenarios with limited or noisy data. Additionally, the paper discusses the integration of NSFs with advanced machine learning algorithms for climate pattern recognition and anomaly detection, enabling timely identification of climate change indicators and facilitating proactive measures for adaptation and mitigation. Through empirical validation using real-world climate datasets, this study underscores the efficacy of NSFs in enhancing the predictive capabilities of climate change models, thereby contributing to more informed decision-making in climate-related policies and strategies. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
343. Diabetic retinopathy screening through artificial intelligence algorithms: A systematic review.
- Author
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Farahat, Zineb, Zrira, Nabila, Souissi, Nissrine, Bennani, Yasmine, Bencherif, Soufiane, Benamar, Safia, Belmekki, Mohammed, Ngote, Mohamed Nabil, and Megdiche, Kawtar
- Subjects
- *
ARTIFICIAL neural networks , *CONVOLUTIONAL neural networks , *DIABETIC retinopathy , *ARTIFICIAL intelligence , *MEDICAL screening - Abstract
Diabetic retinopathy (DR) poses a significant challenge in diabetes management, with its progression often asymptomatic until advanced stages. This underscores the urgent need for cost-effective and reliable screening methods. Consequently, the integration of artificial intelligence (AI) tools presents a promising avenue to address this need effectively. We provide an overview of the current state of the art results and techniques in DR screening using AI, while also identifying gaps in research for future exploration. By synthesizing existing database and pinpointing areas requiring further investigation, this paper seeks to guide the direction of future research in the field of automatic diabetic retinopathy screening. There has been a continuous rise in the number of articles detailing deep learning (DL) methods designed for the automatic screening of diabetic retinopathy especially by the year 2021. Researchers utilized various databases, with a primary focus on the IDRiD dataset. This dataset consists of color fundus images captured at an ophthalmological clinic situated in India. It comprises 516 images that depict various stages of DR and diabetic macular edema. Each of the chosen papers concentrates on various DR signs. Nevertheless, a significant portion primarily focused on detecting exudates, which remains insufficient to assess the overall presence of this disease. Various AI methods have been employed to identify DR signs. Among the chosen papers, 4.7 % utilized detection methods, 46.5 % employed classification techniques, 41.9 % relied on segmentation, and 7 % opted for a combination of classification and segmentation. Metrics calculated from 80 % of the articles employing preprocessing techniques demonstrated the significant benefits of this approach in enhancing results quality. In addition, multiple DL techniques, starting by classification, detection then segmentation. Researchers used mostly YOLO for detection, ViT for classification, and U-Net for segmentation. Another perspective on the evolving landscape of AI models for diabetic retinopathy screening lies in the increasing adoption of Convolutional Neural Networks for classification tasks and U-Net architectures for segmentation purposes; however, there is a growing realization within the research community that these techniques, while powerful individually, can be even more effective when integrated. This integration holds promise for not only diagnosing DR, but also accurately classifying its different stages, thereby enabling more tailored treatment strategies. Despite this potential, the development of AI models for DR screening is fraught with challenges. Chief among these is the difficulty in obtaining the high-quality, labeled data necessary for training models to perform effectively. This scarcity of data poses significant barriers to achieving robust performance and can hinder progress in developing accurate screening systems. Moreover, managing the complexity of these models, particularly deep neural networks, presents its own set of challenges. Additionally, interpreting the outputs of these models and ensuring their reliability in real-world clinical settings remain ongoing concerns. Furthermore, the iterative process of training and adapting these models to specific datasets can be time-consuming and resource-intensive. These challenges underscore the multifaceted nature of developing effective AI models for DR screening. Addressing these obstacles requires concerted efforts from researchers, clinicians, and technologists to develop new approaches and overcome existing limitations. By doing so, a full potential of AI may transform DR screening and improve patient outcomes. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
344. An ANN-Based Approach for Nondestructive Asphalt Road Density Measurement.
- Author
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Li, Muyang, Huang, Loulin, and Pidwerbesky, Bryan
- Subjects
- *
ARTIFICIAL neural networks , *MACHINE learning , *ASPHALT , *ASPHALT pavements , *ROAD maintenance - Abstract
Asphalt pavement's density measurement is an important step in the quality control of asphalt road construction. It is usually achieved by applying the coring method (CM), nuclear density gauge (NDG), and electromagnetic density gauge (EDG). CM is the most accurate method, but it is a destructive method because the pavement is damaged when the cores are taken. NDG and EDG are nondestructive methods with high efficiency, but their measurement accuracy is poorer than that of CM. An EDG commonly used in density measurement is named pavement quality indicator (PQI). A novel method named density profiling system (DPS) is also based on the potential EDG. However, it was not applied to this research because more tests are required to verify its accuracy. This paper presents an approach to improve the accuracy of the nondestructive methods with NDG and PQI. It is based on the artificial neural network (ANN), which processes the raw data got from NDG and PQI and produces the predicted asphalt density as the output. The density measured in CM was used as the target density and the error between ANN-predicted density and target density was computed. To minimize this error, various ANN architectures and learning algorithms were tried in the ANN training process. Each established ANN model makes a substantial improvement in the performance of NDG or PQI in asphalt density measurement. Practical Applications: This research was initiated by Fulton Hogan (FH) Limited, a large road construction and maintenance company in New Zealand. FH lab teams are responsible for asphalt road density measurement in FH's road projects. One of the main method they use is to measure the densities of the cores taken from asphalt pavements (coring method). It is quite accurate but destructive and very time-consuming. They also use NDG or PQI, which are highly efficient nondestructive measurement devices. However, their measurement accuracy is poorer than that of the coring method. FH lab teams wanted to have a new density measurement method that is both accurate and efficient. An ANN-based approach is presented in this paper to address the issues faced by the FH lab teams. Densities collected with coring methods, NDG, and PQI were used to train and validate the ANN models. The results from the ANNs show substantial improvements of the measurement accuracy and efficiency. The proposed approach has been presented to the FH lab teams, who are impressed with its performance and plan to implement it in their projects. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
345. Scene representation using a new two-branch neural network model.
- Author
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Parseh, Mohammad Javad, Rahmanimanesh, Mohammad, Keshavarzi, Parviz, and Azimifar, Zohreh
- Subjects
- *
ARTIFICIAL neural networks , *IMAGE representation , *DEEP learning , *COMPUTER vision , *RECOGNITION (Psychology) , *FEATURE extraction , *CONVOLUTIONAL neural networks - Abstract
Scene classification and recognition have always been one of the most challenging tasks of scene understanding due to the inherent ambiguity in visual scenes. The core of scene classification and recognition tasks is scene representation. Deep learning advances in computer vision, especially deep CNNs, have significantly improved scene representation in the last decade. Deep convolutional features extracted from deep CNNs provide discriminative representations of the images and are widely used in various computer vision tasks, such as scene classification. Deep convolutional features capture the appearance characteristics of the image and the spatial information about different image regions. Meanwhile, the semantic and context information obtained from high-level concepts about scene images, such as objects and their relationships, can significantly contribute to identifying scene images. Therefore, in this paper, we divide visual scenes into two categories, object-based and layout-based. Object-based scenes are scenes that have scene-specific objects and, based on those objects, can be described and identified. In contrast, the layout-based scenes do not have scene-specific objects and are described and identified based on the appearance and layout of the image. This paper proposes a new neural network model for representing and classifying visual scenes, which we call G-CNN (GNN-CNN). The proposed model includes two modules, feature extraction and feature fusion, and the feature extraction module composes of visual and semantic branches. The visual branch is responsible for extracting deep CNN features from the image, and the semantic branch is responsible for extracting semantic GNN features from the scene graph corresponding to the image. The feature fusion module is a novel two-stream neural network that fuses the CNN and GNN feature vectors to produce a comprehensive representation of the scene image. Finally, a fully-connected classifier classified the obtained comprehensive feature vector into one of the pre-defined categories. The proposed model has been evaluated on three benchmark scene datasets, UIUC Sports, MIT67, and SUN397, and obtained classification accuracy of 99.91%, 96.01%, and 85.32%, respectively. In addition, a new dataset named Scene40, which has been introduced in our previous paper, is also used for further evaluation of the proposed method. The comparison results based on classification accuracy criteria show that the proposed model can outperform the best previous methods on three benchmark scene datasets. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
346. Guest Editorial: Special Issue on the British Machine Vision Conference 2022.
- Author
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Yang, Guang, Aviles-Rivero, Angelica, Fang, Yingying, Feng, Zhenhua, Ciocca, Gianluigi, Hicks, Yulia, and Reyes-Aldasoro, Constantino Carlos
- Subjects
- *
ARTIFICIAL neural networks , *PATTERN recognition systems , *COMPUTER vision , *RECOGNITION (Psychology) , *GAZE , *DEEP learning , *EYE tracking - Abstract
This document provides a summary of eight research papers presented at the British Machine Vision Conference. The papers cover a range of topics in machine vision, machine learning, and deep learning. Each paper introduces a new approach or technique and presents experimental evidence of its effectiveness. The topics include denoising, image rendering, human head editing, gaze estimation, reconstruction, video hashing, object tracking, and head/face reenactment. The papers collectively showcase the diverse and evolving nature of research in the field of computer vision. [Extracted from the article]
- Published
- 2024
- Full Text
- View/download PDF
347. Machine learning based fault detection technique for hybrid multi level inverter topology.
- Author
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Chappa, Anilkumar, Rao, K. Dhananjay, Dhananjaya, Mudadla, Dawn, Subhojit, Al Mansur, Ahmed, and Ustun, Taha Selim
- Subjects
ELECTRIC inverters ,MACHINE learning ,ARTIFICIAL neural networks ,FEATURE extraction - Abstract
Multilevel inverters (MLIs) have a significant contribution in many industrial sectors due to their improved power quality and lesser voltage stress, over the conventional three‐level inverters. However, the implementation of MLIs with an increased device count creates the scope of development in MLIs topologies. In this regard, a hybrid MLI topology is studied in this paper whose architecture is based on conventional two‐level inverters. This topology has lesser device count characteristics when compared to conventional and most of the recently presented configurations for nine‐level output voltage generation. The major issue of capacitor voltage balancing is resolved by employing an appropriate switching strategy. However, the semiconductor switches are the most vulnerable components and causes the open circuit faults frequently that creates issues in real time operation. Hence, it is important to detect the open circuit fault in switches in the least possible time. A new approach to open circuit fault detection technique based on the analysis of load voltage waveform is proposed in this paper. The wavelet transform technique has been implemented for feature extraction of load voltage. Later, the classification of the fault has been achieved by training an artificial neural network (ANN). The proposed work has been studied in MATLAB/simulation and the obtained results are verified experimentally. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
348. Influence of Temperature on Brushless Synchronous Machine Field Winding Interturn Fault Severity Estimation.
- Author
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Pascual, Rubén, Rivero, Eduardo, Guerrero, José M., Mahtani, Kumar, and Platero, Carlos A.
- Subjects
ARTIFICIAL neural networks ,DEEP learning ,SYNCHRONOUS generators ,ERROR rates ,WINDING machines ,STATORS - Abstract
There are numerous methods for detecting interturn faults (ITFs) in the field winding of synchronous machines (SMs). One effective approach is based on comparing theoretical and measured excitation currents. This method is unaffected by rotor temperature in static excitation SMs. However, this paper investigates the influence of rotor temperature in brushless synchronous machines (BSMs), where rotor temperature significantly impacts the exciter excitation current. Extensive experimental tests were conducted on a special BSM with measurable rotor temperature. Given the challenges of measuring rotor temperature in industrial machines, this paper explores the feasibility of using stator temperature in the exciter field current estimation model. The theoretical exciter field current is calculated using a deep neural network (DNN), which incorporates electrical brushless synchronous generator output values and stator temperature, and it is subsequently compared with the measured exciter field current. This method achieves an error rate below 0.5% under healthy conditions, demonstrating its potential for simple implementation in industrial BSMs for ITF detection. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
349. Orthogonal Matrix-Autoencoder-Based Encoding Method for Unordered Multi-Categorical Variables with Application to Neural Network Target Prediction Problems.
- Author
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Wang, Yiying, Li, Jinghua, Yang, Boxin, Song, Dening, and Zhou, Lei
- Subjects
ARTIFICIAL neural networks ,BAYESIAN analysis ,ELECTRONIC data processing ,PROBLEM solving ,ENCODING - Abstract
Neural network models, such as BP, LSTM, etc., support only numerical inputs, so data preprocessing needs to be carried out on the categorical variables to convert them into numerical data. For unordered multi-categorical variables, existing encoding methods may produce dimensional catastrophes and may also introduce additional order misrepresentation and distance bias in neural network computation. To solve the above problems, this paper proposes an unordered multi-categorical variable encoding method O-AE using orthogonal matrix for encoding and encoding representation learning and dimensionality reduction via an autoencoder. Bayesian optimization is used for hyperparameter optimization of the autoencoder. Finally, seven experiments were designed with the basic O-AE, Bayesian optimization of the hyperparameters of the autoencoder for O-AE, and other encoding methods to encode unordered multi-categorical variables in five datasets, and they were input into a BP neural network to carry out target prediction experiments. The results show that the experiments using O-AE and O-AE-b have better prediction results, proving that the method proposed in this paper is highly feasible and applicable and can be an optional method for the data processing of unordered multi-categorical variables. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
350. Research on Energy Management in Hydrogen–Electric Coupled Microgrids Based on Deep Reinforcement Learning.
- Author
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Shi, Tao, Zhou, Hangyu, Shi, Tianyu, and Zhang, Minghui
- Subjects
ARTIFICIAL neural networks ,DEEP reinforcement learning ,REINFORCEMENT learning ,HYDROGEN as fuel ,MICROGRIDS ,PHOTOVOLTAIC power generation - Abstract
Hydrogen energy represents an ideal medium for energy storage. By integrating hydrogen power conversion, utilization, and storage technologies with distributed wind and photovoltaic power generation techniques, it is possible to achieve complementary utilization and synergistic operation of multiple energy sources in the form of microgrids. However, the diverse operational mechanisms, varying capacities, and distinct forms of distributed energy sources within hydrogen-coupled microgrids complicate their operational conditions, making fine-tuned scheduling management and economic operation challenging. In response, this paper proposes an energy management method for hydrogen-coupled microgrids based on the deep deterministic policy gradient (DDPG). This method leverages predictive information on photovoltaic power generation, load power, and other factors to simulate energy management strategies for hydrogen-coupled microgrids using deep neural networks and obtains the optimal strategy through reinforcement learning, ultimately achieving optimized operation of hydrogen-coupled microgrids under complex conditions and uncertainties. The paper includes analysis using typical case studies and compares the optimization effects of the deep deterministic policy gradient and deep Q networks, validating the effectiveness and robustness of the proposed method. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
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