Tracking of linear time-varying systems using state-space least mean square

M.B. Malik, R. A. Bhatti
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引用次数: 10

Abstract

In this paper, we present a generalized least mean square (LMS) algorithm. This new filter, which has been termed as state-space least mean square (SSLMS), incorporates linear time-varying state-space model of the underlying environment. The tracking ability of the LMS is limited due to linear regression model assumption. By overcoming this restriction, SSLMS exhibits a marked improvement in tracking performance over standard LMS and its known variants. The derivation of SSLMS is based on the minimum norm solution of an underdetermined linear least squares problem. An example of tracking a linear time-varying system demonstrates the ability and flexibility of SSLMS.
线性时变系统的状态空间最小均方跟踪
本文提出了一种广义最小均方(LMS)算法。这种新的滤波器被称为状态空间最小均方(SSLMS),它结合了底层环境的线性时变状态空间模型。线性回归模型的假设限制了LMS的跟踪能力。通过克服这一限制,SSLMS在跟踪性能方面比标准LMS及其已知变体有了显著的改进。SSLMS的推导是基于一个待定线性最小二乘问题的最小范数解。一个跟踪线性时变系统的实例证明了SSLMS的能力和灵活性。
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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