线性不确定系统鲁棒故障和状态空间估计:一种RLS方法

F. Gannouni, F. Ben Hmida
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引用次数: 3

摘要

从正则化最小二乘估计的角度出发,研究了不确定系统联合故障和状态估计的鲁棒滤波问题。该方法是基于假设没有关于故障动态演化的先验知识。与早期的研究相比,最小二乘设计的鲁棒准则同时包含正则化和加权,并适用于大类别的不确定性。正则化最小二乘问题的解决方案产生执行正则化而不是反正则化的鲁棒滤波方程。通过实例验证了该滤波器的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust fault and state-space estimation for linear uncertain systems: An RLS approach
This paper addresses the robust filtering problem of joint fault and state estimation for uncertain systems from the viewpoint of regularized least-square estimation. The method is based on the assumption that no prior knowledge about the dynamical evolution of the fault is available. Compared with earlier studies the robust criterion for least-square designs incorporate simultaneously both regularization and weighting and applies to a large class of uncertainties. The solution to the regularized least-square problem yields robust filter equations that perform regularization as opposed to de-regularization. The proposed filter is tested by an illustrative example.
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