State-space fuzzy-neural network for modeling of nonlinear dynamics

Y. Todorov, M. Terziyska
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引用次数: 3

Abstract

This paper describes a novel idea for designing a fuzzy-neural network for modeling of nonlinear system dynamics. The presented approach assumes a state-space representation in order to obtain a more compact form of the model, without statement of a great number of parameters needed to represent a nonlinear behavior. To increase the flexibility of the network, simple Takagi-Sugeno inferences are used to estimate the current system states, by a set of a multiple local linear state estimators. Afterwards, the output of the network is defined, as function of the current and estimated system parameters. A simple learning algorithm based on two step Gradient descent procedure to adjust the network parameters, is applied. The potentials of the proposed modeling network are demonstrated by simulation experiments to model an oscillating pendulum and a nonlinear drying plant.
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非线性动力学建模的状态空间模糊神经网络
本文提出了一种设计用于非线性系统动力学建模的模糊神经网络的新思想。该方法采用状态空间表示,以获得更紧凑的模型形式,而不需要表示非线性行为所需的大量参数。为了增加网络的灵活性,使用简单的Takagi-Sugeno推理来估计当前系统的状态,通过一组多个局部线性状态估计器。然后,将网络的输出定义为当前系统参数和估计系统参数的函数。采用了一种基于两步梯度下降法的简单学习算法来调整网络参数。仿真实验证明了所提出的建模网络对振荡摆和非线性干燥装置的建模能力。
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