一级毛片免费不卡在线视频,国产日批视频免费在线观看,菠萝菠萝蜜在线视频免费视频,欧美日韩亚洲无线码在线观看,久久精品这里精品,国产成人综合手机在线播放,色噜噜狠狠狠综合曰曰曰,琪琪视频

Identification of strategy parameter

時間:2023-05-07 03:52:47 自然科學(xué)論文 我要投稿
  • 相關(guān)推薦

Identification of strategy parameters for particle swarm optimizer through Taguchi method

Abstract:Particle swarm optimization (PSO), like other evolutionary algorithms is a population-based stochastic algorithm inspired from the metaphor of social interaction in birds, insects, wasps, etc. It has been used for finding promising solutions in complex search space through the interaction of particles in a swarm. It is a well recognized fact that the performance of evolutionary algorithms to a great extent depends on the choice of appropriate strategy/operating parameters like population size,crossover rate, mutation rate, crossover operator, etc. Generally, these parameters are selected through hit and trial process, which is very unsystematic and requires rigorous experimentation. This paper proposes a systematic based on Taguchi method reasoning scheme for rapidly identifying the strategy parameters for the PSO algorithm. The Taguchi method is a robust design approach using fractional factorial design to study a large number of parameters with small number of experiments. Computer simulations have been performed on two benchmark functions-Rosenbrock function and Griewank function-to validate the approach. 作者: Author: KHOSLA Arun[1]  KUMAR Shakti[2]  AGGARWAL K.K.[3] 作者單位: Department of Electronics and Communication Engineering, National Institute of Technology, Jalandhar 144011, IndiaCentre for Advanced Technology, Haryana Engineering College, Jagadhari 135003, IndiaVice Chancellor, GGS Indraprastha University, Delhi 110006, India 期 刊: 浙江大學(xué)學(xué)報A(英文版)   ISTICEISCI Journal: JOURNAL OF ZHEJIANG UNIVERSITY SCIENCE A 年,卷(期): 2006, 7(12) 分類號: N941 TP301.6 Keywords: Strategy parameters    Particle swarm optimization (PSO)    Taguchi method    ANOVA    機標(biāo)分類號: TS9 TN3 機標(biāo)關(guān)鍵詞: Taguchi method    evolutionary algorithms    fractional factorial design    robust design    search space 基金項目: Identification of strategy parameters for particle swarm optimizer through Taguchi method[期刊論文]  浙江大學(xué)學(xué)報A(英文版) --2006, 7(12)Particle swarm optimization (PSO), like other evolutionary algorithms is a population-based stochastic algorithm inspired from the metaphor of social interaction in birds, insects, wasps, etc. It has b...
《Identification of strategy parameters for particle swarm optimizer through Taguchi method.doc》
将本文的Word文档下载到电脑,方便收藏和打印
推荐度:
点击下载文档

【Identification of strategy parameter】相關(guān)文章:

Aircraft Flutter Modal Parameter Identification Using a Numerically Robust Least-squares Estimator in Frequency Domain04-28

Study of (∧) decay parameter in J/ψ→∧(∧)decay04-29

Purification and Structure Identification of Hyaluronic Acid04-28

Co-operative learning—a good teaching strategy04-30

Application of homotopy parameter inversion method in Miyun Reservoir04-27

A Method for Identification of Selenoprotein Genes in Archaeal Genomes05-02

Recording-based identification of site liquefaction04-29

Pharmacophore Identification of Hydroxamate HDAC 1 Inhibitors04-29

Identification of an epitope of SARS-coronavirus nucleocapsid protein04-28

Identification of Rhodiola species by using RP-HPLC04-29

Identification of strategy parameters for particle swarm optimizer through Taguchi method

Abstract:Particle swarm optimization (PSO), like other evolutionary algorithms is a population-based stochastic algorithm inspired from the metaphor of social interaction in birds, insects, wasps, etc. It has been used for finding promising solutions in complex search space through the interaction of particles in a swarm. It is a well recognized fact that the performance of evolutionary algorithms to a great extent depends on the choice of appropriate strategy/operating parameters like population size,crossover rate, mutation rate, crossover operator, etc. Generally, these parameters are selected through hit and trial process, which is very unsystematic and requires rigorous experimentation. This paper proposes a systematic based on Taguchi method reasoning scheme for rapidly identifying the strategy parameters for the PSO algorithm. The Taguchi method is a robust design approach using fractional factorial design to study a large number of parameters with small number of experiments. Computer simulations have been performed on two benchmark functions-Rosenbrock function and Griewank function-to validate the approach. 作者: Author: KHOSLA Arun[1]  KUMAR Shakti[2]  AGGARWAL K.K.[3] 作者單位: Department of Electronics and Communication Engineering, National Institute of Technology, Jalandhar 144011, IndiaCentre for Advanced Technology, Haryana Engineering College, Jagadhari 135003, IndiaVice Chancellor, GGS Indraprastha University, Delhi 110006, India 期 刊: 浙江大學(xué)學(xué)報A(英文版)   ISTICEISCI Journal: JOURNAL OF ZHEJIANG UNIVERSITY SCIENCE A 年,卷(期): 2006, 7(12) 分類號: N941 TP301.6 Keywords: Strategy parameters    Particle swarm optimization (PSO)    Taguchi method    ANOVA    機標(biāo)分類號: TS9 TN3 機標(biāo)關(guān)鍵詞: Taguchi method    evolutionary algorithms    fractional factorial design    robust design    search space 基金項目: Identification of strategy parameters for particle swarm optimizer through Taguchi method[期刊論文]  浙江大學(xué)學(xué)報A(英文版) --2006, 7(12)Particle swarm optimization (PSO), like other evolutionary algorithms is a population-based stochastic algorithm inspired from the metaphor of social interaction in birds, insects, wasps, etc. It has b...