Journal of the Korean Society for Precision Engineering (한국정밀공학회지)
- Volume 14 Issue 4
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- Pages.110-118
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- 1997
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- 1225-9071(pISSN)
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- 2287-8769(eISSN)
Fuzzy Division Method to Minimize the Modeling Error in Neural Network
뉴럴 네트웍 모델링에서 에러를 최소화하기 위한 퍼지분할법
Abstract
Multi-layer neural networks with error back-propagation algorithm have a great potential for identifying nonlinear systems with unknown characteristics. However, because they have a demerit that the speed of convergence is too slow, various methods for improving the training characteristics of backpropagition networks have been proposed. In this paper, a fuzzy division method is proposed to improve the convergence speed, which can find out an effective fuzzy division by the tuning of membership function and independently train each neural network after dividing the network model into several parts. In the simulations, the proposed method showed that the optimal fuzzy partitions could be found from the arbitray initial ones and that the convergence speed was faster than the traditional method without the fuzzy division.
Keywords