A Self-Adaptive Differential Evolution Algorithm with Dimension Perturb Operator Strategy
碩士 === 中原大學 === 資訊管理研究所 === 98 === Differential Evolution (DE) has been proven to be an efficient and robust algorithm for many real optimization problems. However, it still may converge toward local optimum solutions, need to manually adjust the parameters, and finding the best values for the contr...
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ndltd-TW-098CYCU53960182015-10-13T18:44:54Z http://ndltd.ncl.edu.tw/handle/66441978927912746645 A Self-Adaptive Differential Evolution Algorithm with Dimension Perturb Operator Strategy 運用維度擾動策略之自適應差分演化演算法 Chang-Yu Chiang 江長育 碩士 中原大學 資訊管理研究所 98 Differential Evolution (DE) has been proven to be an efficient and robust algorithm for many real optimization problems. However, it still may converge toward local optimum solutions, need to manually adjust the parameters, and finding the best values for the control parameters is a consuming task. In this paper that proposed a dimension perturb strategy and self-adaptive F value in original DE to increase the exploration ability and exploitation ability. Self-adaptive has been found to be highly beneficial for adjusting control parameters. The performance of self-adaptive differential evolution algorithm with dimension perturb operator strategy (PSADE) is showed on the following performance measures by benchmark functions: the solution quality and solution stability. This paper has found that PSADE can efficiently find the global value of these functions. Wei-Ping Lee 李維平 2010 學位論文 ; thesis 62 zh-TW |
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碩士 === 中原大學 === 資訊管理研究所 === 98 === Differential Evolution (DE) has been proven to be an efficient and robust algorithm for many real optimization problems. However, it still may converge toward local optimum solutions, need to manually adjust the parameters, and finding the best values for the control parameters is a consuming task. In this paper that proposed a dimension perturb strategy and self-adaptive F value in original DE to increase the exploration ability and exploitation ability. Self-adaptive has been found to be highly beneficial for adjusting control parameters. The performance of self-adaptive differential evolution algorithm with dimension perturb operator strategy (PSADE) is showed on the following performance measures by benchmark functions: the solution quality and solution stability. This paper has found that PSADE can efficiently find the global value of these functions.
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Wei-Ping Lee |
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Wei-Ping Lee Chang-Yu Chiang 江長育 |
author |
Chang-Yu Chiang 江長育 |
spellingShingle |
Chang-Yu Chiang 江長育 A Self-Adaptive Differential Evolution Algorithm with Dimension Perturb Operator Strategy |
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Chang-Yu Chiang |
title |
A Self-Adaptive Differential Evolution Algorithm with Dimension Perturb Operator Strategy |
title_short |
A Self-Adaptive Differential Evolution Algorithm with Dimension Perturb Operator Strategy |
title_full |
A Self-Adaptive Differential Evolution Algorithm with Dimension Perturb Operator Strategy |
title_fullStr |
A Self-Adaptive Differential Evolution Algorithm with Dimension Perturb Operator Strategy |
title_full_unstemmed |
A Self-Adaptive Differential Evolution Algorithm with Dimension Perturb Operator Strategy |
title_sort |
self-adaptive differential evolution algorithm with dimension perturb operator strategy |
publishDate |
2010 |
url |
http://ndltd.ncl.edu.tw/handle/66441978927912746645 |
work_keys_str_mv |
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