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自适应粒子群算法在非线性回归中的应用
引用本文:陈高波,杨小红.自适应粒子群算法在非线性回归中的应用[J].武汉工业学院学报,2010,29(1):100-102.
作者姓名:陈高波  杨小红
作者单位:1. 武汉工业学院,数理科学系,湖北,武汉,430023
2. 武汉市慈惠中学,湖北,武汉,430040
基金项目:湖北省教育厅科研项目,武汉工业学院基金资助项目 
摘    要:采用自适应算法调整粒子群的权重,优化非线性回归模型的参数,并将其应用于酶促反应的参数求解。与线性化、非线性最小二乘以及标准粒子群的结果比较表明,用自适应粒子群求解的非线性回归方程有更高的精度。

关 键 词:自适应  粒子群  非线性回归

Application in nonlinear regression of adaptive particle swarm optimization
CHEN Gao-bo,YANG Xiao-hong.Application in nonlinear regression of adaptive particle swarm optimization[J].Journal of Wuhan Polytechnic University,2010,29(1):100-102.
Authors:CHEN Gao-bo  YANG Xiao-hong
Affiliation:CHEN Gao-bo1,YANG Xiao-hong2(1.Department of Mathematics , Physics,Wuhan Polytechnic University,Wuhan 430023,China,2.Wuhan Cihui School,Wuhan 430040,China)
Abstract:An adaptive weights adjustment algorithm for particle swarm optimization is adopted to optimize the parameters of nonlinear regression model in this paper.The adaptive particle swarm optimization is used to solve the parameters of enzyme catalytic reaction.Compared with linearation,nonlinear least square and standard particle swarm optimization,the results show that nonlinear regression equation based on adapative particle swarm optimization has higher precision.
Keywords:adaptive  particle swarm optimization  nonlinear regression  
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