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Modelling and Control of Nonlinear, Operating Point Dependent Systems via Associative Memory Networks

机译:通过关联存储网络对非线性,与工作点相关的系统进行建模和控制

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摘要

This paper presents a novel approach to the modelling and control of a specific class of nonlinear systems whose parameters are unknown nonlinear functions of the measurable operating points. An associative memory network is used to identify each nonlinear function, whose inputs are the measurable operating points and output being the estimated value of the parameter. Two different cases are considered; the first being those systems where the networks can exactly model the nonlinear functions, whereas the second case considers those systems which can only approximate the nonlinear functions to a known accuracy. The first type of system is referred to as a matching system and the second is called a mismatching system. During the modelling phase, the weights for each network are trained in parallel using the normalised back-propagation algorithm for matching system, and the modified recursive least squares algorithm for mismatching systems. It has been shown that these algorithms together with Goodwin's technical lemma lead to a stable d-step-ahead control scheme for matching systems and a pole assignment control strategy for mismatching systems.
机译:本文提出了一种新颖的方法,用于建模和控制一类特定的非线性系统,其参数是可测量工作点的未知非线性函数。关联存储网络用于识别每个非线性函数,其输入是可测量的工作点,输出是参数的估计值。考虑了两种不同的情况;第一种是网络可以准确地对非线性函数建模的系统,而第二种情况则考虑了那些只能将非线性函数逼近已知精度的系统。第一种系统称为匹配系统,第二种称为不匹配系统。在建模阶段,使用针对匹配系统的归一化反向传播算法和针对不匹配系统的改进的递归最小二乘算法,并行训练每个网络的权重。结果表明,这些算法与Goodwin的技术引理共同导致了用于匹配系统的稳定的d步提前控制方案和用于不匹配系统的极点分配控制策略。

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