高效型連續蟻群優化演算法於模糊系統設計

碩士 === 國立嘉義大學 === 電機工程學系研究所 === 104 === This thesis proposed a new metaheuristic population-based evolutionary optimization algorithms, mutation-aided elite continuous ant colony optimization (MECACO), for the design of TSK-type fuzzy neural network (FNN) and TSK-type recurrent fuzzy network (TRFN)....

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Main Authors: Li Ping Shen, 沈立評
Other Authors: Chi-Chung Chen
Format: Others
Language:en_US
Online Access:http://ndltd.ncl.edu.tw/handle/33569249246654433891
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spelling ndltd-TW-104NCYU54420062017-07-30T04:41:33Z http://ndltd.ncl.edu.tw/handle/33569249246654433891 高效型連續蟻群優化演算法於模糊系統設計 高效型連續蟻群優化演算法於模糊系統設計 Li Ping Shen 沈立評 碩士 國立嘉義大學 電機工程學系研究所 104 This thesis proposed a new metaheuristic population-based evolutionary optimization algorithms, mutation-aided elite continuous ant colony optimization (MECACO), for the design of TSK-type fuzzy neural network (FNN) and TSK-type recurrent fuzzy network (TRFN). The basic principle of MECACO is a stochastic search algorithm, which combines a new designed elites-based continuous ACO with the mutation technique employing the dynamic mutation probability to exploit and explore the solutions globally at the same time. The MECACO was used to the reinforcement learning of the FNN and TRFN for the tracking control of the nonlinear dynamic plants, chaos prediction, and system identification to show its effectiveness. The performance superiority of the MECACO to different continuous ACO-based algorithms is demonstrated through simulation examples of the fuzzy systems design. Chi-Chung Chen 陳志忠 學位論文 ; thesis 0 en_US
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description 碩士 === 國立嘉義大學 === 電機工程學系研究所 === 104 === This thesis proposed a new metaheuristic population-based evolutionary optimization algorithms, mutation-aided elite continuous ant colony optimization (MECACO), for the design of TSK-type fuzzy neural network (FNN) and TSK-type recurrent fuzzy network (TRFN). The basic principle of MECACO is a stochastic search algorithm, which combines a new designed elites-based continuous ACO with the mutation technique employing the dynamic mutation probability to exploit and explore the solutions globally at the same time. The MECACO was used to the reinforcement learning of the FNN and TRFN for the tracking control of the nonlinear dynamic plants, chaos prediction, and system identification to show its effectiveness. The performance superiority of the MECACO to different continuous ACO-based algorithms is demonstrated through simulation examples of the fuzzy systems design.
author2 Chi-Chung Chen
author_facet Chi-Chung Chen
Li Ping Shen
沈立評
author Li Ping Shen
沈立評
spellingShingle Li Ping Shen
沈立評
高效型連續蟻群優化演算法於模糊系統設計
author_sort Li Ping Shen
title 高效型連續蟻群優化演算法於模糊系統設計
title_short 高效型連續蟻群優化演算法於模糊系統設計
title_full 高效型連續蟻群優化演算法於模糊系統設計
title_fullStr 高效型連續蟻群優化演算法於模糊系統設計
title_full_unstemmed 高效型連續蟻群優化演算法於模糊系統設計
title_sort 高效型連續蟻群優化演算法於模糊系統設計
url http://ndltd.ncl.edu.tw/handle/33569249246654433891
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