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The Fuzzy Modeling Algorithm for Complex Systems Based on Stochastic Neural Network

The Fuzzy Modeling Algorithm for Complex Systems Based on Stochastic Neural Network
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摘要 A fuzzy modeling method for complex systems is studied. The notation of general stochastic neural network (GSNN) is presented and a new modeling method is given based on the combination of the modified Takagi and Sugeno's (MTS) fuzzy model and one-order GSNN. Using expectation-maximization(EM) algorithm, parameter estimation and model selection procedures are given. It avoids the shortcomings brought by other methods such as BP algorithm, when the number of parameters is large, BP algorithm is still difficult to apply directly without fine tuning and subjective tinkering. Finally, the simulated example demonstrates the effectiveness. A fuzzy modeling method for complex systems is studied. The notation of general stochastic neural network (GSNN) is presented and a new modeling method is given based on the combination of the modified Takagi and Sugeno's (MTS) fuzzy model and one-order GSNN. Using expectation-maximization(EM) algorithm, parameter estimation and model selection procedures are given. It avoids the shortcomings brought by other methods such as BP algorithm, when the number of parameters is large, BP algorithm is still difficult to apply directly without fine tuning and subjective tinkering. Finally, the simulated example demonstrates the effectiveness.
机构地区 School of Management
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2002年第3期46-51,共6页 系统工程与电子技术(英文版)
基金 ~~
关键词 Complex system modeling General stochastic neural network MTS fuzzy model Expectation-maximization algorithm Complex system modeling, General stochastic neural network, MTS fuzzy model, Expectation-maximization algorithm
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