An improved bat algorithm with artificial neural networks for classification problems
Metaheuristic search algorithms have been used for quite a while to optimally solve complex searching problems with ease. Nowadays, nature inspired swarm intelligent algorithms have become quite popular due to their propensity for finding optimal solutions with agility. Moreover several algorithms b...
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my-uthm-ep.100432023-10-01T07:04:40Z An improved bat algorithm with artificial neural networks for classification problems 2016-05 Rehman Gillani, Syed Muhammad Zubair QA Mathematics QA76 Computer software Metaheuristic search algorithms have been used for quite a while to optimally solve complex searching problems with ease. Nowadays, nature inspired swarm intelligent algorithms have become quite popular due to their propensity for finding optimal solutions with agility. Moreover several algorithms belonging to the stochastic and detenninistic classes are available (i.e. ABC, HS, CS, WS, BPNN, LM, and ERNN etc.). Recently, a new metaheuristic search Bat algorithm has become quite popular due its tendency towards convergence to optimal points in the search trajectory by using echo-location behavior of bats as its random walk. However, Bat suffers from large step lengths that sometimes make it to converge to sub-optimal solution. Therefore, in order to improve the exploration and exploitation behavior of bats, this research proposed an improved Bat with Gaussian Distribution (BAGD) algorithm that takes small step lengths and ensures convergence to global optima. Then, the proposed BAGD algorithm is frnther hybridized with Simulated Annealing (SA) and Genetic Algorithm (GA) to perform two stage optimization in which the former algorithm finds the optimal solution and the latter algorithm starts from where the first one is converged. This multi-stage optimization ensures that optimal solution is always reached. The proposed BAGD, SABa, and GBa are tested on several benchmark functions and improvements in convergence to global optima were detected. Finally in this research, the proposed BAGD, SABa, an.::l GBa are used to enhance the convergence properties ofBPNN, LM, and ERNN with proper estimation of the initial weights. The proposed Bat variants with Al',IN such as; Bat-BP, BALM, BAGD-LM, BAGD-RNN, GBa-LM, GBa-RNN, 01\ H· -RN J, an 1 ,., ABa-LM are evaluated and compared with ABC-BP, and ABC-] i•vf : l 2016-05 Thesis http://eprints.uthm.edu.my/10043/ http://eprints.uthm.edu.my/10043/1/24p%20SYED%20MUHAMMAD%20ZUBAIR%20REHMAN%20GILLANI.pdf text en public http://eprints.uthm.edu.my/10043/2/SYED%20MUHAMMAD%20ZUBAIR%20REHMAN%20GILLANI%20COPYRIGHT%20DECLARATION.pdf text en staffonly http://eprints.uthm.edu.my/10043/3/SYED%20MUHAMMAD%20ZUBAIR%20REHMAN%20GILLANI%20WATERMARK.pdf text en validuser phd doctoral Universiti Tun Hussein Onn Malaysia Fakulti Sains Komputer dan Teknologi Maklumat |
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QA Mathematics QA76 Computer software Rehman Gillani, Syed Muhammad Zubair An improved bat algorithm with artificial neural networks for classification problems |
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Metaheuristic search algorithms have been used for quite a while to optimally solve complex searching problems with ease. Nowadays, nature inspired swarm intelligent algorithms have become quite popular due to their propensity for finding optimal solutions with agility. Moreover several algorithms belonging to the stochastic and detenninistic classes are available (i.e. ABC, HS, CS, WS, BPNN, LM, and ERNN etc.). Recently, a new metaheuristic search Bat algorithm has become quite popular due its tendency towards convergence to optimal points in the search trajectory by using echo-location behavior of bats as its random walk. However, Bat suffers from large step lengths that sometimes make it to converge to sub-optimal solution. Therefore, in order to improve the exploration and exploitation behavior of bats, this research proposed an improved Bat with Gaussian Distribution (BAGD) algorithm that takes small step lengths and ensures convergence to global optima. Then, the proposed BAGD algorithm is frnther hybridized with Simulated Annealing (SA) and Genetic Algorithm (GA) to perform two stage optimization in which the former algorithm finds the optimal solution and the latter algorithm starts from where the first one is converged. This multi-stage optimization ensures that optimal solution is always reached. The proposed BAGD, SABa, and GBa are tested on several benchmark functions and improvements in convergence to global optima were detected. Finally in this research, the proposed BAGD, SABa, an.::l GBa are used to enhance the convergence properties ofBPNN, LM, and ERNN with proper estimation of the initial weights. The proposed Bat variants with Al',IN such as; Bat-BP, BALM, BAGD-LM, BAGD-RNN, GBa-LM, GBa-RNN, 01\ H· -RN J, an 1 ,., ABa-LM are evaluated and compared with ABC-BP, and ABC-] i•vf : l |
format |
Thesis |
qualification_name |
Doctor of Philosophy (PhD.) |
qualification_level |
Doctorate |
author |
Rehman Gillani, Syed Muhammad Zubair |
author_facet |
Rehman Gillani, Syed Muhammad Zubair |
author_sort |
Rehman Gillani, Syed Muhammad Zubair |
title |
An improved bat algorithm with artificial neural networks for classification problems |
title_short |
An improved bat algorithm with artificial neural networks for classification problems |
title_full |
An improved bat algorithm with artificial neural networks for classification problems |
title_fullStr |
An improved bat algorithm with artificial neural networks for classification problems |
title_full_unstemmed |
An improved bat algorithm with artificial neural networks for classification problems |
title_sort |
improved bat algorithm with artificial neural networks for classification problems |
granting_institution |
Universiti Tun Hussein Onn Malaysia |
granting_department |
Fakulti Sains Komputer dan Teknologi Maklumat |
publishDate |
2016 |
url |
http://eprints.uthm.edu.my/10043/1/24p%20SYED%20MUHAMMAD%20ZUBAIR%20REHMAN%20GILLANI.pdf http://eprints.uthm.edu.my/10043/2/SYED%20MUHAMMAD%20ZUBAIR%20REHMAN%20GILLANI%20COPYRIGHT%20DECLARATION.pdf http://eprints.uthm.edu.my/10043/3/SYED%20MUHAMMAD%20ZUBAIR%20REHMAN%20GILLANI%20WATERMARK.pdf |
_version_ |
1783728984006066176 |