DocumentCode
1711130
Title
Fast genetic on-line learning algorithm for neural network and its application to temperature control
Author
Topalov, Andon V. ; Kim, Kwang-Choon ; Kim, Jong-Hwan ; Lee, Bong-Kuk
Author_Institution
Dept. Control Syst., Plovdiv Univ., Bulgaria
fYear
1996
Firstpage
649
Lastpage
654
Abstract
The paper proposes a fast online learning method for neural network structures by using genetic algorithm (GA) and dynamic back propagation algorithm (BP) jointly. GA is used in the coarse tuning process which adjusts interconnection weights of the neural network. The dynamic back propagation algorithm is subsequently applied to achieve fine adjusting of the network weights. The fitness function, based on the squared error between the teaching signal and the network output value, is redefined at every time step and the proposed GA based algorithm solves a nonstationary function optimization task. At every time step the solution with the best fitness function is used for current representation of the neural network weights and biases. It is shown through the simulations and real time temperature control of drying oven that this learning algorithm has faster convergence ability and better performance on reducing mapping error in the online learning neural network structures. This leads to an improvement of the transient response of neuro adaptive systems. The proposed method has the potential to be applied to many practical areas such as system modeling and control, signal processing and pattern recognition
Keywords
backpropagation; genetic algorithms; intelligent control; neurocontrollers; temperature control; coarse tuning process; dynamic back propagation algorithm; fast online learning method; fitness function; genetic algorithm; interconnection weights; mapping error; network output value; neural network structures; neural network weights; neuro adaptive systems; nonstationary function optimization task; online learning neural network structures; pattern recognition; real time temperature control; signal processing; squared error; system modeling; teaching signal; Education; Error correction; Genetic algorithms; Heuristic algorithms; Learning systems; Neural networks; Ovens; Signal processing algorithms; Temperature control; Transient response;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolutionary Computation, 1996., Proceedings of IEEE International Conference on
Conference_Location
Nagoya
Print_ISBN
0-7803-2902-3
Type
conf
DOI
10.1109/ICEC.1996.542677
Filename
542677
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