Functional series identification of nonlinear systems for adaptive control

F. King, M. Warren
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引用次数: 0

Abstract

The well-known techniques for nonlinear systems identification via Wiener or Cameron-Martin series expansion require Gaussian white noise (or, in certain variations, shot noise or broad band Gaussian noise) as a test input signal. Certain applications to adaptive control require the extension of these methods to cover inputs consisting of zero mean white noise superimposed on a deterministic reference signal. An extension of the Cameron-Martin expansion is made to cover this case, and the properties of this expansion (best representation theorem, Bessel inequality, mean square convergence, Parseval's theorem) are shown. An identification method based on a least-squares solution for the parameters of this expansion has been successfully tested in a computer simulation.
非线性系统自适应控制的函数串辨识
众所周知,通过维纳或卡梅隆-马丁级数展开的非线性系统识别技术需要高斯白噪声(或在某些变化中,散粒噪声或宽带高斯噪声)作为测试输入信号。自适应控制的某些应用需要扩展这些方法,以覆盖由叠加在确定性参考信号上的零平均白噪声组成的输入。本文对Cameron-Martin展开式进行了扩展,并给出了展开式的一些性质(最佳表示定理、贝塞尔不等式、均方收敛、Parseval定理)。基于最小二乘解的参数辨识方法在计算机仿真中得到了成功的验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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