多模型自适应控制的一种新技术:序列参数判别和混合参数矢量

A. Cezayirli
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引用次数: 1

摘要

为了在一类非线性对象的自适应控制中提供更快的收敛性,我们提出了一种新的方法。目前,多模型自适应系统中的每个模型都是作为一个整体来评估的,使用由估计误差得出的代价函数。因此,对于具有多个未知参数的装置,改善瞬态响应所需的固定模型的数量变得相当大。该方案通过顺序和单独考虑每个参数来消除这一困难;与经典多模型自适应系统相比,通过假设参数误差向量的任何元素的减少都会导致状态估计误差的减少,反之亦然,从而提供更好的收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new technique in multi-model adaptive control: Sequential parameter discrimination and hybrid parameter vector
We propose a new methodology in order to provide faster convergence in adaptive control of a class of nonlinear plants. Currently, each model in a multi-model adaptive system is evaluated as a whole, using a cost function derived from estimation errors. Therefore the number of fixed models required for improvement in transient response becomes quite large, for the plants having several unknown parameters. The proposed scheme removes this difficulty by considering each parameter sequentially and individually; and provides better convergence as compared to classical multi-model adaptive systems by using an assumption that a decrease in any element of the parameter error vector results in decrease in the state estimation error and vice-versa.
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