Back-propagation fuzzy system as nonlinear dynamic system identifiers

Li-Xin Wang, J. Mendel
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引用次数: 493

Abstract

The authors develop a training algorithm, similar to the backpropagation algorithm for neural networks, to train fuzzy systems to match desired input-output pairs. The key ideas in developing this training algorithm are to view a fuzzy system as a three-layer feedforward network, and to use the chain rule to determine gradients of the output errors of the fuzzy system with respect to its design parameters. It is shown that this training algorithm performs an error backpropagation procedure: hence, the fuzzy system equipped with the backpropagation training algorithm is called the backpropagation fuzzy system (BP FS). An online initial parameter choosing method is proposed for the BP FS, and it is shown that it is straightforward to incorporate linguistic if-then rules into the BP FS. Two examples are presented which demonstrate (1) how the fuzzy system learns to match an unknown nonlinear mapping as training progresses and (2) that performance is improved by incorporating linguistic rules.<>
作为非线性动态系统标识符的反向传播模糊系统
作者开发了一种训练算法,类似于神经网络的反向传播算法,以训练模糊系统匹配期望的输入输出对。开发该训练算法的关键思想是将模糊系统视为一个三层前馈网络,并使用链式法则确定模糊系统的输出误差相对于其设计参数的梯度。结果表明,该训练算法执行了一个误差反向传播过程,因此,采用反向传播训练算法的模糊系统称为反向传播模糊系统(BP FS)。提出了一种BP神经网络的在线初始参数选择方法,结果表明,将语言if-then规则引入BP神经网络是一种简单的方法。本文给出了两个例子来演示(1)模糊系统如何在训练过程中学习匹配未知的非线性映射;(2)通过结合语言规则来提高性能。
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