通过分割算法的线性估计的统一方法,II:离散模型

D. Lainiotis, K. Govindaraj
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引用次数: 9

摘要

在一种全新的线性估计方法中,Lainiotis[9-11]以“分区”或分解形式获得了全新的离散滤波和平滑算法。这些划分算法在理论上和计算上都有一些有趣的特性。在本文中,作为关于连续模型的第一部分的补充[13],通过展示离散分割算法作为离散线性滤波和平滑统一方法的基础,证明了分割算法的基本性质。具体地说,广义离散分割算法在理论上是有趣的,计算上是有吸引力的,并且包罗一切。广义分割算法的包涵性通过显示它们作为特殊情况包含了所有以前主要的滤波和平滑算法来证明。更重要的是,它们产生了重要的概括,过去著名的算法,以及这样的算法的整个家族。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A unifying approach to linear estimation via the partitioned algorithms, II: Discrete models
In a radically new approach to linear estimation, Lainiotis [9-11] obtained fundamentally new discrete filtering and smoothing algorithms in a "partitioned" or decomposed form. The partitioned algorithms were shown to have several theoretically interesting and computationally attractive properties. In this paper, a companion to part I on continuous models [13], the fundamental nature of the partitioned algorithms is demonstrated by showing that the discrete partitioned algorithms serve as the basis of a unifying approach to discrete linear filtering and smoothing. Specifically, generalized discrete partitioned algorithms are presented that are theoretically interesting, computationally attractive, and all encompassing. The all encompassing nature of the generalized partitioned algorithms is demonstrated by showing that they contain as special cases all previous major filtering and smoothing algorithms. More importantly, they yield important generalizations, of past well-known algorithms, as well as whole families of such algorithms.
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