首页> 外文会议>International Symposium on Neural Networks(ISNN 2006) pt.2; 20060528-0601; Chengdu(CN) >A New Recurrent Neurofuzzy Network for Identification of Dynamic Systems
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A New Recurrent Neurofuzzy Network for Identification of Dynamic Systems

机译:一种新的递归神经模糊网络,用于动态系统识别

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In this paper a new structure of a recurrent neurofuzzy network is proposed. The network considers two cascade-interconnected Fuzzy Inference Systems (FISs), one recurrent and one static, that model the behaviour of a unknown dynamic system from input-output data. Each FIS's rule involves a linear system in a controllable canonical form. The training for the recurrent FIS is made by a gradient-based Real-Time Recurrent Learning Algorithm (RTRLA), while the training for the static FIS is based on a simple gradient method. The initial parameter conditions previous to training are obtained by extracting information from a static FISs trained with delayed input-output signals. To demonstrate its effectiveness, the identification of two non-linear dynamic systems is included.
机译:本文提出了一种递归神经模糊网络的新结构。该网络考虑了两个级联互连的模糊推理系统(FIS),一个是递归的,一个是静态的,它们根据输入输出数据来模拟未知动态系统的行为。每个FIS的规则都涉及可控规范形式的线性系统。循环FIS的训练由基于梯度的实时循环学习算法(RTRLA)进行,而静态FIS的训练则基于简单的梯度方法。训练之前的初始参数条件是通过从经过延迟输入输出信号训练的静态FIS中提取信息来获得的。为了证明其有效性,本文包括两个非线性动态系统的识别。

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