Extreme Learning Machine neural networks for multi-agent system in power generation

Extreme Learning Machine (ELM) is widely known as an effective learning algorithm than the conventional learning methods from the point of learning speed as well as generalization. The hidden neurons are optional in neuron alike whereas the weights are the criteria required to study the linking amon...

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Main Authors: Yaw C.T., Wong S.Y., Yap K.S., Tan C.H.
Other Authors: 36560884300
Format: Article
Published: Science Publishing Corporation Inc 2023
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spelling my.uniten.dspace-240362023-05-29T14:54:38Z Extreme Learning Machine neural networks for multi-agent system in power generation Yaw C.T. Wong S.Y. Yap K.S. Tan C.H. 36560884300 55812054100 24448864400 55175180600 Extreme Learning Machine (ELM) is widely known as an effective learning algorithm than the conventional learning methods from the point of learning speed as well as generalization. The hidden neurons are optional in neuron alike whereas the weights are the criteria required to study the linking among the output layer as well as hidden layers. On the other hand, the ensemble model to integrate every independent prediction of several ELMs to produce a final output. This particular approach was included in a Multi-Agent System (MAS). By hybrid those two approached, a novel extreme learning machine based multi-agent systems (ELM-MAS) for handling classification problems is presented in this paper. It contains two layers of ELMs, i.e., individual agent layer and parent agent layer. Several activation functions using benchmark datasets and real-world applications, i.e., satellite image, image segmentation, fault diagnosis in power generation (including circulating water systems as well as GAST governor) were used to test the ELM-MAS developed. Our experimental results suggest that ELM-MAS is capable of achieving good accuracy rates relative to others approaches. � 2018 Authors. Final 2023-05-29T06:54:38Z 2023-05-29T06:54:38Z 2018 Article 10.14419/ijet.v7i4.35.22760 2-s2.0-85059238173 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85059238173&doi=10.14419%2fijet.v7i4.35.22760&partnerID=40&md5=16e6ae27919ba9648964489d95e3322c https://irepository.uniten.edu.my/handle/123456789/24036 7 4 347 353 Science Publishing Corporation Inc Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
description Extreme Learning Machine (ELM) is widely known as an effective learning algorithm than the conventional learning methods from the point of learning speed as well as generalization. The hidden neurons are optional in neuron alike whereas the weights are the criteria required to study the linking among the output layer as well as hidden layers. On the other hand, the ensemble model to integrate every independent prediction of several ELMs to produce a final output. This particular approach was included in a Multi-Agent System (MAS). By hybrid those two approached, a novel extreme learning machine based multi-agent systems (ELM-MAS) for handling classification problems is presented in this paper. It contains two layers of ELMs, i.e., individual agent layer and parent agent layer. Several activation functions using benchmark datasets and real-world applications, i.e., satellite image, image segmentation, fault diagnosis in power generation (including circulating water systems as well as GAST governor) were used to test the ELM-MAS developed. Our experimental results suggest that ELM-MAS is capable of achieving good accuracy rates relative to others approaches. � 2018 Authors.
author2 36560884300
author_facet 36560884300
Yaw C.T.
Wong S.Y.
Yap K.S.
Tan C.H.
format Article
author Yaw C.T.
Wong S.Y.
Yap K.S.
Tan C.H.
spellingShingle Yaw C.T.
Wong S.Y.
Yap K.S.
Tan C.H.
Extreme Learning Machine neural networks for multi-agent system in power generation
author_sort Yaw C.T.
title Extreme Learning Machine neural networks for multi-agent system in power generation
title_short Extreme Learning Machine neural networks for multi-agent system in power generation
title_full Extreme Learning Machine neural networks for multi-agent system in power generation
title_fullStr Extreme Learning Machine neural networks for multi-agent system in power generation
title_full_unstemmed Extreme Learning Machine neural networks for multi-agent system in power generation
title_sort extreme learning machine neural networks for multi-agent system in power generation
publisher Science Publishing Corporation Inc
publishDate 2023
_version_ 1806426210383691776
score 13.188404