83 results on '"Neshat, Mehdi"'
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2. A multi-faceted methodology for calibration of coastal vegetation drag coefficient
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Amini, Erfan, Marsooli, Reza, and Neshat, Mehdi
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- 2024
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3. An integrated intelligent framework for maximising SAG mill throughput: Incorporating expert knowledge, machine learning and evolutionary algorithms for parameter optimisation
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Ghasemi, Zahra, Neshat, Mehdi, Aldrich, Chris, Karageorgos, John, Zanin, Max, Neumann, Frank, and Chen, Lei
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- 2024
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4. Enhancing the performance of hybrid wave-wind energy systems through a fast and adaptive chaotic multi-objective swarm optimisation method
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Neshat, Mehdi, Sergiienko, Nataliia Y., Nezhad, Meysam Majidi, da Silva, Leandro S.P., Amini, Erfan, Marsooli, Reza, Astiaso Garcia, Davide, and Mirjalili, Seyedali
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- 2024
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5. Optimization of power take-off system settings and regional site selection procedure for a wave energy converter
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Mehdipour, Hossein, Amini, Erfan, Naeeni, Seyed Taghi (Omid), Neshat, Mehdi, and Gandomi, Amir H.
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- 2024
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6. Shape and sizing optimisation of space truss structures using a new cooperative coevolutionary-based algorithm
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Etaati, Bahareh, Neshat, Mehdi, Dehkordi, Amin Abdollahi, Pargoo, Navid Salami, El-Abd, Mohammed, Sadollah, Ali, and Gandomi, Amir H.
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- 2024
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7. Marine energy digitalization digital twin's approaches
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Majidi Nezhad, Meysam, Neshat, Mehdi, Sylaios, Georgios, and Astiaso Garcia, Davide
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- 2024
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8. Hybrid Inception Architecture with Residual Connection: Fine-tuned Inception-ResNet Deep Learning Model for Lung Inflammation Diagnosis from Chest Radiographs
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Neshat, Mehdi, Ahmed, Muktar, Askari, Hossein, Thilakaratne, Menasha, and Mirjalili, Seyedali
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- 2024
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9. Design optimization of ocean renewable energy converter using a combined Bi-level metaheuristic approach
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Amini, Erfan, Nasiri, Mahdieh, Pargoo, Navid Salami, Mozhgani, Zahra, Golbaz, Danial, Baniesmaeil, Mehrdad, Nezhad, Meysam Majidi, Neshat, Mehdi, Astiaso Garcia, Davide, and Sylaios, Georgios
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- 2023
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10. Offshore wind farm layouts designer software's
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Majidi Nezhad, Meysam, Neshat, Mehdi, Azaza, Maher, Avelin, Anders, Piras, Giuseppe, and Astiaso Garcia, Davide
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- 2023
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11. Layout and design optimization of ocean wave energy converters: A scoping review of state-of-the-art canonical, hybrid, cooperative, and combinatorial optimization methods
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Golbaz, Danial, Asadi, Rojin, Amini, Erfan, Mehdipour, Hossein, Nasiri, Mahdieh, Etaati, Bahareh, Naeeni, Seyed Taghi Omid, Neshat, Mehdi, Mirjalili, Seyedali, and Gandomi, Amir H.
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- 2022
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12. Optimization of hydraulic power take-off system settings for point absorber wave energy converter
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Amini, Erfan, Mehdipour, Hossein, Faraggiana, Emilio, Golbaz, Danial, Mozaffari, Sevda, Bracco, Giovanni, and Neshat, Mehdi
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- 2022
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13. A Mediterranean Sea Offshore Wind classification using MERRA-2 and machine learning models
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Majidi Nezhad, Meysam, Heydari, Azim, Neshat, Mehdi, Keynia, Farshid, Piras, Giuseppe, and Garcia, Davide Astiaso
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- 2022
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14. Quaternion convolutional long short-term memory neural model with an adaptive decomposition method for wind speed forecasting: North aegean islands case studies
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Neshat, Mehdi, Majidi Nezhad, Meysam, Mirjalili, Seyedali, Piras, Giuseppe, and Garcia, Davide Astiaso
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- 2022
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15. A deep learning-based evolutionary model for short-term wind speed forecasting: A case study of the Lillgrund offshore wind farm
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Neshat, Mehdi, Nezhad, Meysam Majidi, Abbasnejad, Ehsan, Mirjalili, Seyedali, Tjernberg, Lina Bertling, Astiaso Garcia, Davide, Alexander, Bradley, and Wagner, Markus
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- 2021
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16. New insights into position optimisation of wave energy converters using hybrid local search
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Neshat, Mehdi, Alexander, Bradley, Sergiienko, Nataliia Y., and Wagner, Markus
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- 2020
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17. A hybrid cooperative co-evolution algorithm framework for optimising power take off and placements of wave energy converters
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Neshat, Mehdi, Alexander, Bradley, and Wagner, Markus
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- 2020
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18. Complex terrains and wind power: enhancing forecasting accuracy through CNNs and DeepSHAP analysis.
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Konstantinou, Theodoros, Hatziargyriou, Nikos, Portal-Porras, Koldo, and Neshat, Mehdi
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WIND power ,RENEWABLE energy sources ,CONVOLUTIONAL neural networks ,WIND forecasting ,CLEAN energy ,FORECASTING ,WEATHER forecasting - Abstract
Accurate prediction of wind power generation in regions characterised by complex terrain is a critical gap in renewable energy research. To address this challenge, the present study articulates a novel methodological framework using Convolutional Neural Networks (CNNs) to improve wind power forecasting in such geographically diverse areas. The core research question is to investigate the extent to which terrain complexity affects forecast accuracy. To this end, DeepSHAP -- an advanced interpretability technique -- is used to dissect the CNN model and identify the most significant features of the weather forecast grid that have the greatest impact on forecast accuracy. Our results show a clear correlation between certain topographical features and forecast accuracy, demonstrating that complex terrain features are an important part of the forecasting process. The study's findings support the hypothesis that a detailed understanding of terrain features, facilitated by model interpretability, is essential for improving wind energy forecasts. Consequently, this research addresses an important gap by clarifying the influence of complex terrain on wind energy forecasting and provides a strategic pathway for more efficient use of wind resources, thereby supporting the wider adoption of wind energy asa sustainable energy source, even in regions with complex terrain. [ABSTRACT FROM AUTHOR]
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- 2024
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19. A Technical Comparative Heart Disease Prediction Framework Using Boosting Ensemble Techniques.
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Nissa, Najmu, Jamwal, Sanjay, and Neshat, Mehdi
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HEART diseases ,DISEASE prevalence ,PREDICTION models ,RANDOM forest algorithms ,CARDIOVASCULAR diseases ,WORLD health ,FORECASTING ,MACHINE learning - Abstract
This paper addresses the global surge in heart disease prevalence and its impact on public health, stressing the need for accurate predictive models. The timely identification of individuals at risk of developing cardiovascular ailments is paramount for implementing preventive measures and timely interventions. The World Health Organization (WHO) reports that cardiovascular diseases, responsible for an alarming 17.9 million annual fatalities, constitute a significant 31% of the global mortality rate. The intricate clinical landscape, characterized by inherent variability and a complex interplay of factors, poses challenges for accurately diagnosing the severity of cardiac conditions and predicting their progression. Consequently, early identification emerges as a pivotal factor in the successful treatment of heart-related ailments. This research presents a comprehensive framework for the prediction of cardiovascular diseases, leveraging advanced boosting techniques and machine learning methodologies, including Cat boost, Random Forest, Gradient boosting, Light GBM, and Ada boost. Focusing on "Early Heart Disease Prediction using Boosting Techniques", this paper aims to contribute to the development of robust models capable of reliably forecasting cardiovascular health risks. Model performance is rigorously assessed using a substantial dataset on heart illnesses from the UCI machine learning library. With 26 feature-based numerical and categorical variables, this dataset encompasses 8763 samples collected globally. The empirical findings highlight AdaBoost as the preeminent performer, achieving a notable accuracy of 95% and excelling in metrics such as negative predicted value (0.83), false positive rate (0.04), false negative rate (0.04), and false development rate (0.01). These results underscore AdaBoost's superiority in predictive accuracy and overall performance compared to alternative algorithms, contributing valuable insights to the field of cardiovascular health prediction. [ABSTRACT FROM AUTHOR]
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- 2024
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20. An Effective Ensemble Convolutional Learning Model with Fine-Tuning for Medicinal Plant Leaf Identification.
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Hajam, Mohd Asif, Arif, Tasleem, Khanday, Akib Mohi Ud Din, and Neshat, Mehdi
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PLANT identification ,IMAGE recognition (Computer vision) ,FOLIAGE plants ,CONVOLUTIONAL neural networks ,PLANT classification - Abstract
Accurate and efficient medicinal plant image classification is of utmost importance as these plants produce a wide variety of bioactive compounds that offer therapeutic benefits. With a long history of medicinal plant usage, different parts of plants, such as flowers, leaves, and roots, have been recognized for their medicinal properties and are used for plant identification. However, leaf images are extensively used due to their convenient accessibility and are a major source of information. In recent years, transfer learning and fine-tuning, which use pre-trained deep convolutional networks to extract pertinent features, have emerged as an extremely effective approach for image-identification problems. This study leveraged the power by three-component deep convolutional neural networks, namely VGG16, VGG19, and DenseNet201, to derive features from the input images of the medicinal plant dataset, containing leaf images of 30 classes. The models were compared and ensembled to make four hybrid models to enhance the predictive performance by utilizing the averaging and weighted averaging strategies. Quantitative experiments were carried out to evaluate the models on the Mendeley Medicinal Leaf Dataset. The resultant ensemble of VGG19+DensNet201 with fine-tuning showcased an enhanced capability in identifying medicinal plant images with an improvement of 7.43% and 5.8% compared with VGG19 and VGG16. Furthermore, VGG19+DensNet201 can outperform its standalone counterparts by achieving an accuracy of 99.12% on the test set. A thorough assessment with metrics such as accuracy, recall, precision, and the F1-score firmly established the effectiveness of the ensemble strategy. [ABSTRACT FROM AUTHOR]
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- 2023
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21. A new hybrid optimization method inspired from swarm intelligence: Fuzzy adaptive swallow swarm optimization algorithm (FASSO)
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Neshat, Mehdi and Sepidname, Ghodrat
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- 2015
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22. An effective hyper-parameter can increase the prediction accuracy in a single-step genetic evaluation.
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Neshat, Mehdi, Soohyun Lee, Momin, Md. Moksedul, Buu Truong, van der Werf, Julius H. J., and Hong Lee, S.
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LIVESTOCK breeding ,LIVESTOCK breeds ,GENE frequency ,FORECASTING ,CATTLE genetics ,SELF-tuning controllers - Abstract
The H-matrix best linear unbiased prediction (HBLUP) method has been widely used in livestock breeding programs. It can integrate all information, including pedigree, genotypes, and phenotypes on both genotyped and non-genotyped individuals into one single evaluation that can provide reliable predictions of breeding values. The existing HBLUP method requires hyper-parameters that should be adequately optimised as otherwise the genomic prediction accuracy may decrease. In this study, we assess the performance of HBLUP using various hyper-parameters such as blending, tuning, and scale factor in simulated and real data on Hanwoo cattle. In both simulated and cattle data, we show that blending is not necessary, indicating that the prediction accuracy decreases when using a blending hyper-parameter <1. The tuning process (adjusting genomic relationships accounting for base allele frequencies) improves prediction accuracy in the simulated data, confirming previous studies, although the improvement is not statistically significant in the Hanwoo cattle data. We also demonstrate that a scale factor, a, which determines the relationship between allele frequency and per-allele effect size, can improve the HBLUP accuracy in both simulated and real data. Our findings suggest that an optimal scale factor should be considered to increase prediction accuracy, in addition to blending and tuning processes, when using HBLUP. [ABSTRACT FROM AUTHOR]
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- 2023
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23. Artificial fish swarm algorithm: a survey of the state-of-the-art, hybridization, combinatorial and indicative applications
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Neshat, Mehdi, Sepidnam, Ghodrat, Sargolzaei, Mehdi, and Toosi, Adel Najaran
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- 2014
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24. A Novel Hybrid Multi-Modal Deep Learning for Detecting Hashtag Incongruity on Social Media.
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Dadgar, Sajad and Neshat, Mehdi
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TAGS (Metadata) , *SOCIAL media , *DEEP learning , *OBJECT recognition (Computer vision) , *MULTIMODAL user interfaces , *IMAGE recognition (Computer vision) - Abstract
Hashtags have been an integral element of social media platforms over the years and are widely used by users to promote, organize and connect users. Despite the intensive use of hashtags, there is no basis for using congruous tags, which causes the creation of many unrelated contents in hashtag searches. The presence of mismatched content in the hashtag creates many problems for individuals and brands. Although several methods have been presented to solve the problem by recommending hashtags based on the users' interest, the detection and analysis of the characteristics of these repetitive contents with irrelevant hashtags have rarely been addressed. To this end, we propose a novel hybrid deep learning hashtag incongruity detection by fusing visual and textual modality. We fine-tune BERT and ResNet50 pre-trained models to encode textual and visual information to encode textual and visual data simultaneously. We further attempt to show the capability of logo detection and face recognition in discriminating images. To extract faces, we introduce a pipeline that ranks faces based on the number of times they appear on Instagram accounts using face clustering. Moreover, we conduct our analysis and experiments on a dataset of Instagram posts that we collect from hashtags related to brands and celebrities. Unlike the existing works, we analyze these contents from both content and user perspectives and show a significant difference between data. In light of our results, we show that our multimodal model outperforms other models and the effectiveness of object detection in detecting mismatched information. [ABSTRACT FROM AUTHOR]
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- 2022
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25. Developing an Extended Virtual Blade Model for Efficient Numerical Modeling of Wind and Tidal Farms.
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Radfar, Soheil, Kianoush, Bijan, Majidi Nezhad, Meysam, and Neshat, Mehdi
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Harnessing renewable and clean energy resources from winds and tides are promising technologies to alter the high level of consumption of traditional energy resources because of their great global potential. In this regard, developing farms with multiple energy converters is of great interest due to the skyrocketing demand for sustainable energy resources. However, the numerical simulation of these farms during the planning phase might pose challenges, the most significant of which is the computational cost. One of the most well-known approaches to resolve this concern is to use the virtual blade model (VBM). VBM is the implementation of the blade element model (BEM). This was done by coupling the blade element momentum theory equations to simulate rotor operation with the Reynolds averaged Navier–Stokes (RANS) equation to simulate rotor wake and the turbulent flow field around it. The exclusion of the actual geometry of blades enables a lower computational cost. Additionally, due to simplifications in the meshing procedure, VBM is easier to set up than the models that consider the actual geometry of blades. One of the main unaddressed limitations of the VBM code is the constraint of modeling up to 10 renewable energy converters within one computational domain. This paper provides a detailed and well-documented general methodology to develop a virtual blade model for the simulation of 10-plus converters within one computational domain to remove the limitation of this widely used and robust code. The extended code is validated for both the single- and multi-converter scenarios. It is strongly believed that the technical contribution of this paper, combined with the current advancement of available computational resources and hardware, can open the gates to simulate farms with any desired number of wind or tidal energy converters, and, accordingly, secure the sustainability and feasibility of clean energies. [ABSTRACT FROM AUTHOR]
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- 2022
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26. Integrating Renewable Energy Sources in Italian Port Areas towards Renewable Energy Communities.
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Agostinelli, Sofia, Neshat, Mehdi, Majidi Nezhad, Meysam, Piras, Giuseppe, and Astiaso Garcia, Davide
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The impact of ports on urban areas' decarbonization to reduce air and environmental pollution effects to achieve sustainable development is undeniable, especially in the marine transportation sector. In this case, applied studies that can contribute to existing knowledge on increasing ports' energy self-sufficiency using renewable energy sources (RESs) are critical and necessary. In this study, firstly, (1) the RESs assessment prioritization methodology was designed for Lazio ports. Additionally, (2) long-term solar radiation and wind speed were analyzed using the Modern-Era Retrospective analysis for Research and Applications, Version 2 (MERRA-2) dataset of Lazio ports. Furthermore, (3) the time-series, normal-distribution and correlation methods were applied to the generated energy source, based on various parameters of the RESs used in the ports. Finally, (4) Italian port areas, towards renewable energy community (REC) scenarios, were analyzed and developed. [ABSTRACT FROM AUTHOR]
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- 2022
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27. FAIPSO: fuzzy adaptive informed particle swarm optimization
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Neshat, Mehdi
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- 2013
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28. Swallow swarm optimization algorithm: a new method to optimization
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Neshat, Mehdi, Sepidnam, Ghodrat, and Sargolzaei, Mehdi
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- 2013
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29. Predication of concrete mix design using adaptive neural fuzzy inference systems and fuzzy inference systems
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Neshat, Mehdi, Adeli, Ali, Sepidnam, Ghodrat, and Sargolzaei, Mehdi
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- 2012
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30. [formula omitted][formula omitted]ave [formula omitted]earner: Predicting wave farms power output using effective meta-learner deep gradient boosting model: A case study from Australian coasts.
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Neshat, Mehdi, Sergiienko, Nataliia Y., Rafiee, Ashkan, Mirjalili, Seyedali, Gandomi, Amir H., and Boland, John
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MACHINE learning , *OCEAN wave power , *FARM mechanization , *DEEP learning , *WAVE energy , *COASTS - Abstract
Precise prediction of wave energy is indispensable and holds immense promise as ocean waves have a power capacity of 30–40 kW/m along the coast. Utilising this energy source does not generate harmful emissions, making it a superior substitute for fossil fuel-based energy. The computational expense associated with simulating and computing intricate hydrodynamic interactions in wave farms restricts optimisation methods to a few thousand evaluations and makes a challenging situation for training in deep neural prediction models. To address this issue, we propose a new solution: a Meta-learner gradient boosting method that employs four multi-layer convolutional dense neural network surrogate models combined with an optimised extreme gradient boosting. In order to train and validate the predictive model, we used four wave farm datasets, including the absorbed power outputs and 2D coordinates of wave energy converters (WECs) located along the southern coast of Australia, Adelaide, Sydney, Perth and Tasmania. Furthermore, the capability of the transfer learning strategy is evaluated. The WECs used in this study are of the fully submerged three-tether converter type, similar to the CETO prototype. The effectiveness of the proposed approach is assessed by comparing it with 15 well-established and effective machine learning (ML) methods. The experimental findings indicate that the proposed model is competitive with other ML and deep learning approaches, exhibiting considerable accuracy of 88.8%, 90.0%, 90.3%, and 84.4% in Adelaide, Perth, Sydney and Tasmania and improved robustness in predicting wave farm power output. [ABSTRACT FROM AUTHOR]
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- 2024
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31. Short-term solar radiation forecasting using hybrid deep residual learning and gated LSTM recurrent network with differential covariance matrix adaptation evolution strategy.
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Neshat, Mehdi, Nezhad, Meysam Majidi, Mirjalili, Seyedali, Garcia, Davide Astiaso, Dahlquist, Erik, and Gandomi, Amir H.
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DEEP learning , *SOLAR radiation , *HILBERT-Huang transform , *LOAD forecasting (Electric power systems) , *MACHINE learning , *COVARIANCE matrices , *RECURRENT neural networks - Abstract
Developing an accurate and robust prediction of long-term average global solar irradiation plays a crucial role in industries such as renewable energy, agribusiness, and hydrology. However, forecasting solar radiation with a high level of precision is historically challenging due to the nature of this source of energy. Challenges may be due to the location constraints, stochastic atmospheric parameters, and discrete sequential data. This paper reports on a new hybrid deep residual learning and gated long short-term memory recurrent network boosted by a differential covariance matrix adaptation evolution strategy (ADCMA) to forecast solar radiation one hour-ahead. The efficiency of the proposed hybrid model was enriched using an adaptive multivariate empirical mode decomposition (MEMD) algorithm and 1+1EA-Nelder–Mead simplex search algorithm. To compare the performance of the hybrid model to previous models, a comprehensive comparative deep learning framework was developed consisting of five modern machine learning algorithms, three stacked recurrent neural networks, 13 hybrid convolutional (CNN) recurrent deep learning models, and five evolutionary CNN recurrent models. The developed forecasting model was trained and validated using real meteorological and Shortwave Radiation (SRAD1) data from an installed offshore buoy station located in Lake Michigan, Chicago, United States, supported by the National Data Buoy Centre (NDBC). As a part of pre-processing, we applied an autoencoder to detect the outliers in improving the accuracy of solar radiation prediction. The experimental results demonstrate that, firstly, the hybrid deep residual learning model performed best compared with other machine learning and hybrid deep learning methods. Secondly, a cooperative architecture of gated recurrent units (GRU) and long short-term memory (LSTM) recurrent models can enhance the performance of Xception and ResNet. Finally, using an effective evolutionary hyper-parameters tuner (ADCMA) reinforces the prediction accuracy of solar radiation. • A new hybrid deep residual learning with gated LSTM is proposed for solar radiation. • Cooperative architecture of GRU and LSTM enhanced Xception and ResNet performance. • Adaptive evolutionary multivariate empirical mode decomposition method is introduced. • Effective differential covariance matrix adaptation strategy proposed for tuning model. • The proposed hybrid model outperformed 13 hybrid and popular prediction models. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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32. Designing an Adaptive Neuro Fuzzy Inference System for Prediction of Customers Satisfaction.
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Neshat, Mehdi, Pourahmad, Ali Akbar, and Hasani, Mohammad Reza
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CUSTOMER satisfaction ,MARKET share ,FUZZY logic ,INDUSTRIAL management ,HUMAN error - Abstract
Nowadays, in order to succeed in business and presence in the world markets, it is essential to outperform the competitors to get bigger market share. To get customers satisfaction of products is the first stage of success in business. Studying the different factors involved in increasing the level of customer's satisfaction and researching in this field has caused development in several companies. In this paper, an adaptive neuro-fuzzy inference system (ANFIS) and a fuzzy inference system (FIS) are designed for marketing mix model. By using the P4 principle (price, product, place, promotion) and by combining it with the marketing experts' knowledge, good results were achieved using ANFIS. This system as an advisor with high accuracy can reduce the human errors and play a significant role in decision making by corporate managers. The results of two systems were compared and it was seen that ANFIS had a better performance than FIS with mean accuracies of 98.6% and 87.25%, respectively. [ABSTRACT FROM AUTHOR]
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- 2016
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33. Using LibQUAL Model for Improving the Level of Students' Satisfaction from Quality of Services in Academic Libraries: A Case Study in North Khorasan Province, Iran.
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Pourahmad, Ali Akbar, Neshat, Mehdi, and Hasani, Mohammad Reza
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PSYCHOLOGY of students ,QUALITY of service ,ACQUISITION of data - Abstract
The most important aim of the research is to evaluate and analyse the quality level of services of four different university libraries which are located in the North Khorasan province in Iran. The statistical populations included various students from different branches and they were chosen as samples. For collecting data, the survey method was applied; meanwhile, data collection tool, specific questionnaire were used since that each of the four components for quality estimation of services was calculated using LibQUAL tool. The mean total services for university libraries of North Khorasan were negative in terms of service fitness gap, which means that libraries were not capable of satisfying the minimum anticipation of their users. Interestingly, for all library services, gap was negative too. In other words, libraries are far from rewarding the expectations of students associated with the most desirable (maximum) level of services. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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34. Sites exploring prioritisation of offshore wind energy potential and mapping for wind farms installation: Iranian islands case studies.
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Majidi Nezhad, Meysam, Neshat, Mehdi, Piras, Giuseppe, and Astiaso Garcia, Davide
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OFFSHORE wind power plants , *WIND power , *WIND power plants , *POTENTIAL energy , *RENEWABLE energy sources , *ISLANDS - Abstract
Offshore Wind Energy (OWE) can be considered the Renewable Energy Sources (RESs) with a higher potential of newly installed power in marine areas more the following decades. As a primary phase of the Offshore Wind Farms (OWFs) development, focusing on the long-term Offshore Wind (OW) potential assessment and mapping is necessary to highlight the best areas for turbine generators installations. In this case, accurate assessment and mapping of long-term OWs can help pinpoint previously not considered marine areas. In this regard, the Iranian islands located in the Persian Gulf can be called one of these forgotten areas in dire need of energy supply due to their remoteness from the mainland. To these aims, the long-term Modern-Era Retrospective analysis for Research and Applications version 2 (MERRA-2) re-analysis dataset has been used to identify possible locations of the Offshore Wind Turbine Generators (OWTGs) installations. In particular, an OW classification based on the 40 years of monthly data and the last 10-years of hourly data highlighted the best areas for OWTGs potential installations in the 12 Iranian islands of the Persian Sea. The time-series method has been designed, tested, and developed to understand better and manage the OW potential and mapping of the Iranian islands decision-making process. Furthermore, the time-series method has been applied to the generated energy source based on the OW speed used in the Iranian islands. Finally, exploring results show Iranian islands, such as Kharg, Siri and Abu Musa islands, have attractive OWE potentials for OWTGs installations. • Offshore wind speed assessment and mapping using reanalysis data of the Persian Gulf. • Offshore wind analysis for wind turbines potential installations in the Iranian islands. • Time-series method designed, tested, and developed to the decision-making sites prioritisation. • Offshore wind farms site prioritisation using time-series data analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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35. Wave power forecasting using an effective decomposition-based convolutional Bi-directional model with equilibrium Nelder-Mead optimiser.
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Neshat, Mehdi, Nezhad, Meysam Majidi, Sergiienko, Nataliia Y., Mirjalili, Seyedali, Piras, Giuseppe, and Garcia, Davide Astiaso
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OCEAN wave power , *FORECASTING , *CONVOLUTIONAL neural networks , *RENEWABLE energy sources , *WAVE energy , *DECOMPOSITION method , *DEMAND forecasting - Abstract
Energy industries and governments consider ocean wave power a promising renewable energy source for reaching the net-zero plan by 2050 and restricting the rise in global temperatures. It expects the potential global ocean wave power production to be around 337 GW annually. Although wave energy forecasting critically enables economic dispatch, optimal power system management, and the integration of wave energy into power grids, the forecasting process is complicated by the stochastic, intermittent, and non-stationary nature of waves. Thus, this paper proposes a novel hybrid forecasting model comprising an adaptive decomposition-based method (Nelder-Mead variational mode decomposition) and a convolutional neural network featuring bi-directional long short-term memory. Furthermore, we propose a fast and effective optimiser to adjust the hybrid model's hyper-parameters and evaluate the decomposition technique's role in increasing the accuracy of wave energy flux predictions considering a forecasting period of 6 h. With regard to assessing the proposed model's effectiveness, we use a real wave dataset from a buoy positioned off Favignana Island in the Mediterranean Sea and compare the proposed model with six well-known forecasting methods and five hybrid deep-learning models. According to our findings, the proposed model significantly outperforms existing approaches over extended time periods and compared with the bi-directional long short-term memory, the developed adaptive decomposition method, and new hyper-parameters tuner improve the prediction accuracy at 45% and 13.6%, respectively. • A novel hybrid convolutional model is proposed for wave energy flux prediction. • An effective hybrid variational mode decomposition method is introduced. • A new hyper-parameter optimiser is proposed: Equilibrium Nelder-Mead optimisation. • The proposed model's efficiency is compared with 11 hybrid and popular prediction models. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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36. A NEW KIND OF PSO: PREDATOR PARTICLE SWARM OPTIMIZATION.
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Neshat, Mehdi, Sargolzaei, Mehdi, Masoumi, Azra, and Najaran, Adel
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SWARM intelligence ,INDUSTRIAL efficiency ,BIRDS ,PREDATION ,CARDINAL points ,EXPERIENCE - Abstract
Today, swarm intelligence is widely used in optimization problems. PSO is one the best swarm intelligence methods. In the method, each particle moves toward the direction in which the best individual and group experience has happened. The most important disadvantage of this method is that it falls in local optima. To fix the problem, a metaheuristic method is proposed in this paper. There has always been a competition between prey and predator in the nature. Little birds often fly in a colony form to run away from birds of prey. Being inspired by the phenomenon, a new particle is added to PSO algorithm known as predator, also a new behavior called "Take flight from predator" is defined. This particle is responsible for attacking the colony of particles so as to prevent the premature convergence. With the predator attack to the colony, particles run away and again the chance rises for a Global optimum to be gained. The attack just caused particles dispersion and no particle dies. It can be repeated for m times and the optimal point is saved each time. To test the method, 12 benchmark functions were employed and the results were compared to OPSO, VPSO, LPSO, and GPSO methods. Regarding the results, the proposed method had a better performance. [ABSTRACT FROM AUTHOR]
- Published
- 2012
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37. A REVIEW OF ARTIFICIAL FISH SWARM OPTIMIZATION METHODS AND APPLICATIONS.
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Neshat, Mehdi, Adeli, Ali, Sepidnam, Ghodrat, Sargolzaei, Mehdi, and Toosi, Adel Najaran
- Subjects
ARTIFICIAL neural networks ,SWARM intelligence ,CELLULAR automata ,DISTRIBUTED artificial intelligence ,PROGRAM transformation - Abstract
The Swarm Intelligence is a new and modern method employed in optimization problems. The Swarm Intelligence method is based on the en masse movement of living animals like birds, fishes, ants and other social animals. Migration, seeking for food and fighting with enemies are social behaviors of animals. Optimization principle is seen in these animals. The Artificial Fish Swarm Optimization (AFSA) method is one of the Swarm Intelligence approaches that works based on the population and stochastic search. Fishes show very intelligently social behaviors. This algorithm is one of the best approaches of the Swarm Intelligence method with considerable advantages like high convergence speed, flexibility, error tolerance and high accuracy. this paper review the AFSA algorithm, its evolution stages from the start point up to now, improvements and applications in various fields like optimization, control, image processing, data mining, improving neural networks, networks, scheduling, and signal processing and so on. Also, various methods combining the AFSA with other optimization methods like PSO, Fuzzy Logic, Cellular Learning Automata or intelligent search methods like Tabu search, Simulated Annealing , Chaos Search and etc [ABSTRACT FROM AUTHOR]
- Published
- 2012
- Full Text
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38. Hepatitis Disease Diagnosis Using Hybrid Case Based Reasoning and Particle Swarm Optimization.
- Author
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Neshat, Mehdi, Sargolzaei, Mehdi, Toosi, Adel Nadjaran, and Masoumi, Azrax
- Subjects
HEPATITIS diagnosis ,PARTICLE swarm optimization ,CASE-based reasoning ,DECISION making ,INFLAMMATION ,VIRAL hepatitis ,DIAGNOSIS - Abstract
Correct diagnosis of a disease is one of the most important problems in medicine. Hepatitis disease is one of the most dangerous diseases that affect millions of people every year and take man's life. In this paper, the combination of two methods of PSO and CBR (case-based reasoning) has been used to diagnose hepatitis disease. First, a case-based reasoning method is workable to preprocess the data set therefore a weight vector for every one feature is extracted. A particle swarm optimization model is then practical to assemble a decision-making system based on the selected features and diseases recognized. Many researchers have tried to have a more accurate diagnosis of the disease through the use of various methods. The data used has been taken from the site UCI called hepatitis disease. This database has 155 records and 19 fields. This method was compared with five other classification methods and given the results of the proposed method (CBR-PSO), better results were achieved. The proposed method could diagnose hepatitis disease with the accuracy of 93.25%. [ABSTRACT FROM AUTHOR]
- Published
- 2012
- Full Text
- View/download PDF
39. Flow Discharge Prediction Study Using a CFD-Based Numerical Model and Gene Expression Programming.
- Author
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Mozaffari, Sevda, Amini, Erfan, Mehdipour, Hossein, and Neshat, Mehdi
- Subjects
GENE expression ,DAM failures ,SPILLWAYS ,ARTIFICIAL intelligence ,DESIGN failures - Abstract
The significance of spillways is to allow the flood to be safely discharged from downstream. There is a strong correlation between the poor design of spillways and the failures of dams. In order to address this concern, the present study investigates the flow over the Nazloo-ogee spillway using the CFD 3D numerical model and an artificial intelligence method called Gene Expression Programming (GEP). In a physical model, discharge and flow depths were calculated for 21 different total heads. Among different turbulence models, the R N G turbulence model achieved the maximum compatibility in computational fluid dynamic simulation. In addition, GEP was used to estimate Q, in which 70% of collected data was dedicated to training and 30% to testing. R 2 , R M S E , and M A E were obtained as performance criteria, and the new mathematical equation for the prediction of discharge was obtained using this model. Finally, the numerical model and GEP outputs were compared with the experimental data. According to the results, the numerical model and GEP exhibited a high level of correspondence in simulating flow over an ogee-crested spillway. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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40. Marine Online Platforms of Services to Public End-Users—The Innovation of the ODYSSEA Project.
- Author
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Majidi Nezhad, Meysam, Neshat, Mehdi, Piras, Giuseppe, Astiaso Garcia, Davide, and Sylaios, Georgios
- Subjects
- *
MUNICIPAL services , *VIRTUAL communities , *ARCHITECTURAL style , *REMOTE sensing , *SUSTAINABILITY , *STAKEHOLDER analysis , *TELECOMMUNICATION satellites ,DEVELOPING countries - Abstract
Recently, various Earth Observation Networks (EONs) have been designed, developed and launched by in-situ, on-site and off-site collected data from fixed and moving marine sensors and remote sensing (RS) satellite data. This information can significantly help a wide range of public and private end-users better understand the medium- and high-resolution numerical models for regional, national and global coverage. In this context, such EON core services' operational numerical data can be seen of the growing demand result for marine sustainability development of developing countries and the European Union (EU). In this case, marine platforms can offer a wide range of benefits to users of human communities in the same environment using meticulous analyses. Furthermore, marine platforms can contribute to a deeper discourse on the ocean, given the required regulations, technical and legal considerations and users to a common typology using clear scientific terminology. In this regard, firstly, the following six steps have been used to develop a better understanding of the essential data structure that is commensurate with the efficiency of the marine end-user's service: (1) steps and challenges of collecting data, (2) stakeholder engagement to identify, detect and assess the specific needs of end-users, (3) design, develop and launch the products offered to meet the specific needs of users, (4) achieve sustainable development in the continuous provision of these products to end-users, (5) identify future needs and challenges, and (6) online platform architecture style related to providing these products to end-users. Secondly, the innovation of the ODYSSEA (Operating a Network of Integrated Observatory Systems in the Mediterranean Sea) platform project has been evaluated and reviewed as a successful project on marine online platforms to better understand how marine online platforms are being used, designed, developed and launched. The ODYSSEA platform provides a system that bridges the gap between operational oceanographic capabilities and the need for information on marine conditions, including for the end-user community. The project aims to develop a fully integrated and cost-effective cross-platform, multi-platform network of observation and forecasting systems across the Mediterranean Sea. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
41. A Numerical Methodology to Predict the Maximum Power Output of Tidal Stream Arrays.
- Author
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Radfar, Soheil, Panahi, Roozbeh, Majidi Nezhad, Meysam, and Neshat, Mehdi
- Abstract
Due to its high level of consistency and predictability, tidal stream energy is a feasible and promising type of renewable energy for future development and investment. Numerical modeling of tidal farms is a challenging task. Many studies have shown the applicability of the Blade Element Momentum (BEM) method for modeling the interaction of turbines in tidal arrays. Apart from its well-known capabilities, there is a scarcity of research using BEM to model tidal stream energy farms. Therefore, the main aim of this numerical study is to simulate a full-scale array in a real geographical position. A fundamental linear relationship to estimate the power capture of full-scale turbines using available kinetic energy flux is being explored. For this purpose, a real site for developing a tidal farm on the southern coasts of Iran is selected. Then, a numerical methodology is validated and calibrated for the established farm by analyzing an array of turbines. A linear equation is proposed to calculate the tidal power of marine hydrokinetic turbines. The results indicate that the difference between the predicted value and the actual power does not exceed 6%. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
42. Layout optimisation of offshore wave energy converters using a novel multi-swarm cooperative algorithm with backtracking strategy: A case study from coasts of Australia.
- Author
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Neshat, Mehdi, Mirjalili, Seyedali, Sergiienko, Nataliia Y., Esmaeilzadeh, Soheil, Amini, Erfan, Heydari, Azim, and Garcia, Davide Astiaso
- Subjects
- *
METAHEURISTIC algorithms , *WAVE energy , *ALGORITHMS , *RENEWABLE energy sources , *ENERGY consumption , *FARM size - Abstract
Wave energy technologies have the potential to play a significant role in the supply of renewable energy worldwide. One of the most promising designs for wave energy converters (WECs) are fully submerged buoys. In this paper, we explore the optimisation of WEC arrays consisting of three-tether buoys. Such arrays can be optimised for total energy output by adjusting the relative positions of buoys in a wave farm. As there are complex hydrodynamic interactions among WECs, the evaluation of each parameter setting is computationally expensive and thus limits the feasible number of full model evaluations that can be made. Furthermore, these WEC interactions make up a non-convex, multi-modal (with multiple local-optima), continuous and constrained optimisation problem. This problem is challenging to solve using optimisation methods. To tackle the challenge of optimising the positions of WECs in a wave farm, we propose a novel multi-swarm cooperative co-evolution algorithm which consists of three meta-heuristics: the multi verse optimiser (MVO) algorithm, the equilibrium optimisation (EO) method, and the moth flame optimisation (MFO) approach with a backtracking strategy, we introduce a fast, effective new surrogate model to speed up the process of optimisation. To assess the effectiveness of our proposed approach, 11 state-of-the-art bio-inspired algorithms and three recent hybrid heuristic techniques were compared in six real wave situations located on the coasts of Australia, with two wave farm sizes (four and nine WECs). The experimental study presented in this paper shows that our hybrid cooperative framework exhibited the best performance in terms of the quality of obtained solutions, computational efficiency, and convergence speed compared with other 14 state-of-the-art meta-heuristics. Furthermore, we found that the power output of the best-found 9-buoy arrangements were higher than that of perpendicular layouts at at 4.15 % , 3.29 % , 3.62 % , 9.2 % , 5.74 % , and 2.43 % for the Perth, Adelaide, Sydney, Tasmania, Brisbane, and Darwin wave sites, respectively. Our investigations reveal that the best-found arrangement at the Tasmania wave site was able to absorb the highest level of wave power relative to the other locations. • A new Multi-swarm Cooperative optimisation framework is proposed to optimise wave farms performance. • A new fast surrogate model is developed to speed up expensive optimisation process of wave farm. • To improve the placement of converters, a symmetrical backtracking search algorithm is proposed. • To handle the infeasible wave converters layout during the optimisation, a new and effective repair function is developed. • The proposed optimiser enhances significantly the total power output at six wave farms compared with previous methods. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
43. A Novel Hybrid Sine Cosine Algorithm and Pattern Search for Optimal Coordination of Power System Damping Controllers.
- Author
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Eslami, Mahdiyeh, Neshat, Mehdi, and Khalid, Saifulnizam Abd.
- Abstract
This paper presents an effective hybrid optimization technique based on a chaotic sine cosine algorithm (CSCA) and pattern search (PS) for the coordinated design of power system stabilizers (PSSs) and static VAR compensator (SVC)-based controllers. For this purpose, the design problem is considered as an optimization problem whose decision variables are the controllers' parameters. Due to the nonlinearities of large, interconnected power systems, methods capable of handling any nonlinearity of power networks are preferable. In this regard, a nonlinear time domain-based objective function was used. Then, the proposed hybrid chaotic sine cosine pattern search (hCSC-PS) algorithm was employed for solving this optimization problem. The proposed method employed the global search ability of SCA and the local search ability of PS. The performance of the new hCSC-PS was investigated using a set of benchmark functions, and then the results were compared with those of the standard SCA and some other methods from the literature. In addition, a case study from the literature is considered to evaluate the efficiency of the proposed hCSC-PS for the coordinated design of controllers in the power system. PSSs and additional SVC controllers are being considered to demonstrate the feasibility of the new technique. In order to ensure the robustness and performance of the proposed controller, the objective function is evaluated for various extreme loading conditions and system configurations. The numerical investigations show that the new approach may provide better optimal damping and outperforms previous methods. Nonlinear time-domain simulation shows the superiority of the proposed controller and its ability in providing efficient damping of electromechanical oscillations. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
44. Comparative Study of Oscillating Surge Wave Energy Converter Performance: A Case Study for Southern Coasts of the Caspian Sea.
- Author
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Amini, Erfan, Asadi, Rojin, Golbaz, Danial, Nasiri, Mahdieh, Naeeni, Seyed Taghi Omid, Majidi Nezhad, Meysam, Piras, Giuseppe, and Neshat, Mehdi
- Abstract
The search for renewable energy supplies for today's global energy demand, particularly ocean wave energy for coastal areas, has become undeniably widespread in the last two decades. The Caspian Sea represents an immense opportunity for using ocean renewable energy, especially considering its long shoreline. In this study, the locations with maximum potential wave energy were chosen in the central, eastern, and western zones of the Caspian Sea's southern coasts. Accordingly, the wave and bathymetric data were used as the input to calculate the oscillating surge wave energy converter's flap geometric dimensions based on previous studies. Then, the geometric model was designed, and then the wave energy converters were modeled in the Wave Energy Converter Simulator (WEC-Sim) module in the MATLAB software. Furthermore, eight models in each sea state were simulated to find the best value of the PTO damping coefficient, which led to the highest capture factor. Finally, all the external forces on the WEC's flap and the converter's power output results were compared, taking into account the effects of the flap height on the total power output. It was found that Nowshahr port has more potential than the Anzali and Amirabad ports, as the converter's absorbed power proved to be 16.7 kW/m (Capture factor = 63%) at this site. Consequently, by conducting a comparative analysis between the selected sites, the excitation, radiation damping, and power take-off forces were scrutinized. The results show that the highest applied forces to the converter's flap occurred at Nowshahr port, followed by the Anzali and Amirabad ports, due to the directional characteristics of the waves at the central coasts of the Caspian Sea. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
45. Wind turbine power output prediction using a new hybrid neuro-evolutionary method.
- Author
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Neshat, Mehdi, Nezhad, Meysam Majidi, Abbasnejad, Ehsan, Mirjalili, Seyedali, Groppi, Daniele, Heydari, Azim, Tjernberg, Lina Bertling, Astiaso Garcia, Davide, Alexander, Bradley, Shi, Qinfeng, and Wagner, Markus
- Subjects
- *
WIND power , *WIND turbines , *RECURRENT neural networks , *WIND power industry , *WIND power plants , *COSINE function - Abstract
Short-term wind power prediction is challenging due to the chaotic characteristics of wind speed. Since, for wind power industries, designing an accurate and reliable wind power forecasting model is essential, we deployed a novel composite deep learning-based evolutionary approach for accurate forecasting of the power output in wind-turbine farms, which is developed in three stages. At the beginning stage (pre-processing), the k-means clustering method and an autoencoder are employed to detect and filter noise in the SCADA measurements. In the Next step (decomposition), in order to decompose the SCADA time-series data, we proposed a new hybrid variational mode decomposition (HVMD) method, that consists of VMD and two heuristics: greedy Nelder-Mead search algorithm (GNM) and adaptive randomised local search (ARLS). Both heuristics are applied to tune the hyper-parameters of VMD that results in improving the performance of the forecasting model. In the third phase, based on prior knowledge that the underlying wind patterns are highly non-linear and diverse, we proposed a novel alternating optimisation algorithm that consists of self-adaptive differential evolution (SaDE) algorithm and sine cosine optimisation method as a hyper-parameter optimizer and then combine with a recurrent neural network (RNN) called Long Short-term memory (LSTM). This framework allows us to model the power curve of a wind turbine on a farm. A historical dataset from supervisory control and data acquisition (SCADA) systems were applied as input to estimate the power output from an onshore wind farm in Sweden. Two short time forecasting horizons, including 10 min ahead and 1 h ahead, are considered in our experiments. The achieved prediction results supported the superiority of the proposed hybrid model in terms of accurate forecasting and computational runtime compared with earlier published hybrid models applied in this paper. • A novel deep learning-based evolutionary forecasting model is proposed. • A new hybrid decomposition method is introduced. • A Fast and effective hyper-parameters tuning algorithm proposed, hybrid SCA and SaDE. • The performance of the proposed model is validated on two case studies SCADA data. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
46. Exploring Wind Energy Potential as a Driver of Sustainable Development in the Southern Coasts of Iran: The Importance of Wind Speed Statistical Distribution Model.
- Author
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Filom, Siyavash, Radfar, Soheil, Panahi, Roozbeh, Amini, Erfan, and Neshat, Mehdi
- Abstract
Wind energy as a clean and inexhaustible source of renewable energy can be a key element of sustainable development that decreases dependence of countries on fossil fuels. Therefore, implementing accurate and comprehensive feasibility studies in countries with a high level of consumption of traditional energy resources is vital; an approach encouraged and supported by green funds and climate change action. It is also crucial to helping spur economic and sustainable growth of these countries. In this regard, this study aims at accurate evaluation of onshore wind energy potential in seven coastal cities in the south of Iran. Six Probability Distribution Functions (PDFs) were examined over representative stations. It was deduced that the Weibull function, which is the most used PDF in similar studies, was only applicable to one station. Here, Gamma distribution offered the best fit for three stations and for the other ones, Generalized Extreme Value (GEV) performed better. Considering the ranking of six examined PDFs and the simplicity of Gamma, it was identified as the effective function in the southern coasts of Iran bearing in mind the geographic distribution of stations. Moreover, six wind energy converter power curve functions contributed to investigating the capacity factor. It is found that, using only one function could cause under- or over-estimation. Then, stations were classified based on the National Renewable Energy Laboratory system. Last but not least, examining a range of wind energy converters enabled scholars to extend this study into practice and prioritize the development of stations considering budget limits. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
47. Multi-Mode Wave Energy Converter Design Optimisation Using an Improved Moth Flame Optimisation Algorithm.
- Author
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Neshat, Mehdi, Sergiienko, Nataliia Y., Mirjalili, Seyedali, Majidi Nezhad, Meysam, Piras, Giuseppe, and Astiaso Garcia, Davide
- Subjects
- *
WAVE energy , *OCEAN wave power , *OCEAN waves , *FLAME , *MOTHS , *ALGORITHMS - Abstract
Ocean renewable wave power is one of the more encouraging inexhaustible energy sources, with the potential to be exploited for nearly 337 GW worldwide. However, compared with other sources of renewables, wave energy technologies have not been fully developed, and the produced energy price is not as competitive as that of wind or solar renewable technologies. In order to commercialise ocean wave technologies, a wide range of optimisation methodologies have been proposed in the last decade. However, evaluations and comparisons of the performance of state-of-the-art bio-inspired optimisation algorithms have not been contemplated for wave energy converters' optimisation. In this work, we conduct a comprehensive investigation, evaluation and comparison of the optimisation of the geometry, tether angles and power take-off (PTO) settings of a wave energy converter (WEC) using bio-inspired swarm-evolutionary optimisation algorithms based on a sample wave regime at a site in the Mediterranean Sea, in the west of Sicily, Italy. An improved version of a recent optimisation algorithm, called the Moth–Flame Optimiser (MFO), is also proposed for this application area. The results demonstrated that the proposed MFO can outperform other optimisation methods in maximising the total power harnessed from a WEC. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
48. A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA Data.
- Author
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Heydari, Azim, Majidi Nezhad, Meysam, Neshat, Mehdi, Garcia, Davide Astiaso, Keynia, Farshid, De Santoli, Livio, and Bertling Tjernberg, Lina
- Subjects
FUZZY neural networks ,HILBERT-Huang transform ,WIND power ,WIND turbines ,FORECASTING ,TURBINE generators - Abstract
A cost-effective and efficient wind energy production trend leads to larger wind turbine generators and drive for more advanced forecast models to increase their accuracy. This paper proposes a combined forecasting model that consists of empirical mode decomposition, fuzzy group method of data handling neural network, and grey wolf optimization algorithm. A combined K-means and identifying density-based local outliers is applied to detect and clean the outliers of the raw supervisory control and data acquisition data in the proposed forecasting model. Moreover, the empirical mode decomposition is employed to decompose signals and pre-processing data. The fuzzy GMDH neural network is a forecaster engine to estimate the future amount of wind turbines energy production, where the grey wolf optimization is used to optimize the fuzzy GMDH neural network parameters in order to achieve a lower forecasting error. Moreover, the model has been applied using actual data from a pilot onshore wind farm in Sweden. The obtained results indicate that the proposed model has a higher accuracy than others in the literature and provides single and combined forecasting models in different time-steps ahead and seasons. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
49. A Comparative Study of Metaheuristic Algorithms for Wave Energy Converter Power Take-Off Optimisation: A Case Study for Eastern Australia.
- Author
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Amini, Erfan, Golbaz, Danial, Asadi, Rojin, Nasiri, Mahdieh, Ceylan, Oğuzhan, Majidi Nezhad, Meysam, Neshat, Mehdi, and Kim, Kyong-hwan
- Subjects
WAVE energy ,OCEAN waves ,COVARIANCE matrices ,CLEAN energy ,METAHEURISTIC algorithms ,COMPARATIVE studies ,HIGH-dimensional model representation - Abstract
One of the most encouraging sorts of renewable energy is ocean wave energy. In spite of a large number of investigations in this field during the last decade, wave energy technologies are recognised as neither mature nor broadly commercialised compared to other renewable energy technologies. In this paper, we develop and optimise Power Take-off (PTO) configurations of a well-known wave energy converter (WEC) called a point absorber. This WEC is a fully submerged buoy with three tethers, which was proposed and developed by Carnegie Clean Energy Company in Australia. Optimising the WEC's PTO parameters is a challenging engineering problem due to the high dimensionality and complexity of the search space. This research compares the performance of five state-of-the-art metaheuristics (including Covariance Matrix Adaptation Evolution Strategy, Gray Wolf optimiser, Harris Hawks optimisation, and Grasshopper Optimisation Algorithm) based on the real wave scenario in Sydney sea state. The experimental achievements show that the Multiverse optimisation (MVO) algorithm performs better than the other metaheuristics applied in this work. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
50. A Parametric Study of Wave Energy Converter Layouts in Real Wave Models.
- Author
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Amini, Erfan, Golbaz, Danial, Amini, Fereidoun, Majidi Nezhad, Meysam, Neshat, Mehdi, and Astiaso Garcia, Davide
- Subjects
WAVE energy ,OCEAN waves ,RENEWABLE energy sources ,FREQUENCY-domain analysis ,OCEAN wave power - Abstract
Ocean wave energy is a broadly accessible renewable energy source; however, it is not fully developed. Further studies on wave energy converter (WEC) technologies are required in order to achieve more commercial developments. In this study, four CETO6 spherical WEC arrangements have been investigated, in which a fully submerged spherical converter is modelled. The numerical model is applied using linear potential theory, frequency-domain analysis, and irregular wave scenario. We investigate a parametric study of the distance influence between WECs and the effect of rotation regarding significant wave direction in each arrangement compared to the pre-defined layout. Moreover, we perform a numerical landscape analysis using a grid search technique to validate the best-found power output of the layout in real wave models of four locations on the southern Australian coast. The results specify the prominent role of the distance between WECs, along with the relative angle of the layout to dominant wave direction, in harnessing more power from the waves. Furthermore, it is observed that a rise in the number of WECs contributed to an increase in the optimum distance between converters. Consequently, the maximum exploited power from each buoy array has been found, indicating the optimum values of the distance between buoys in different real wave scenarios and the relative angle of the designed layout with respect to the dominant in-site wave direction. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
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