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

机译:基于随机神经网络的复杂系统模糊建模算法

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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.
机译:研究了复杂系统的模糊建模方法。提出了通用随机神经网络(GSNN)的概念,并结合改进的高木和Sugeno(MTS)模糊模型以及一阶GSNN给出了一种新的建模方法。使用期望最大化(EM)算法,给出了参数估计和模型选择过程。它避免了BP算法等其他方法带来的缺点,当参数数量较大时,如果不进行微调和主观修补,仍然难以直接应用BP算法。最后,通过仿真算例验证了方法的有效性。

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