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Self-adaptation Optimize BP Neural Network Design Based on the Genetic Algorithms
作者姓名:CHAI Yi  YIN Hong-peng  LI Da-jie  ZHANG Ke
作者单位:College of Automation, Chongqing University, Chongqing 400030, China
摘    要:BP(Back Propagation) Neural networks is in the presence of the local optimization in the Neural networks training.The algorithm have slow convergence and the local convergence problem which impact the neural networks work performance.In order to cover these shortcomings and solves the size's hugeness and the low efficiency of the net problem in the traditional NN designing,the action principles of BP-Neural network's structure are analyzed,and a new method is formed which is confirmed from the Enhance genetic algorithms(EGA).The method can identify network configuration and network training methods.By adopting the number coding,self-adaptable multi-point variations operation,this method can effectively reduce the network size and the network convergence time,increase the network training speed.Tomatoes disease diagnosis examples illustrate the feasibility of this approach.

关 键 词:improved  genetic  arithmetic      EGA      BP  arithmetic      multi-layer  sensor    NN  Structure
修稿时间:2006/12/22 0:00:00

Self-adaptation Optimize BP Neural Network Design Based on the Genetic Algorithms
CHAI Yi,YIN Hong-peng,LI Da-jie,ZHANG Ke.Self-adaptation Optimize BP Neural Network Design Based on the Genetic Algorithms[J].Storage & Process,2007(4):91-96.
Authors:CHAI Yi  YIN Hong-peng  LI Da-jie  ZHANG Ke
Institution:College of Automation, Chongqing University, Chongqing 400030, China
Abstract:BP(Back Propagation) Neural networks is in the presence of the local optimization in the Neural networks training.The algorithm have slow convergence and the local convergence problem which impact the neural networks work performance.In order to cover these shortcomings and solves the size's hugeness and the low efficiency of the net problem in the traditional NN designing,the action principles of BP-Neural network's structure are analyzed,and a new method is formed which is confirmed from the Enhance genetic algorithms(EGA).The method can identify network configuration and network training methods.By adopting the number coding,self-adaptable multi-point variations operation,this method can effectively reduce the network size and the network convergence time,increase the network training speed.Tomatoes disease diagnosis examples illustrate the feasibility of this approach.
Keywords:improved genetic arithmetic  EGA  BP arithmetic  multi-layer sensor  NN Structure
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