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首页> 外文期刊>Multiscale modeling & simulation >ROBUSTNESS, WEAK STABILITY, AND STABILITY IN DISTRIBUTION OF ADAPTIVE FILTERING ALGORITHMS UNDER MODEL MISMATCH
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ROBUSTNESS, WEAK STABILITY, AND STABILITY IN DISTRIBUTION OF ADAPTIVE FILTERING ALGORITHMS UNDER MODEL MISMATCH

机译:模型失配下自适应滤波算法的鲁棒性,弱稳定性和稳定性

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摘要

This work is concerned with robustness, convergence, and stability of adaptive filtering (AF) type algorithms in the presence of model mismatch. The algorithms under consideration are recursive and have inherent multiscale structure. They can be considered as dynamic systems, in which the "state" changes much more slowly than the perturbing noise. Beyond the existing results on adaptive algorithms, model mismatch significantly affects convergence properties of AF algorithms, raising issues of algorithm robustness. Weak convergence and weak stability (i.e., recurrence) under model mismatch are derived. Based on the limiting stochastic differential equations of suitably scaled iterates, stability in distribution is established. Then algorithms with decreasing step sizes and their convergence properties are examined. When input signals are large, identification bias due to model mismatch will become large and unacceptable. Methods for reducing such bias are introduced when the identified models are used in regulation problems.
机译:这项工作涉及在模型不匹配的情况下自适应滤波(AF)类型算法的鲁棒性,收敛性和稳定性。所考虑的算法是递归的,并且具有固有的多尺度结构。可以将它们视为动态系统,其中“状态”的变化要比干扰噪声的变化慢得多。除了现有的自适应算法结果外,模型失配还会显着影响AF算法的收敛性,从而引发算法鲁棒性问题。推导了模型不匹配下的弱收敛和弱稳定性(即重复性)。基于适当缩放的迭代项的极限随机微分方程,可以确定分布的稳定性。然后检查步长减小的算法及其收敛性。当输入信号较大时,由于模型不匹配而引起的识别偏差将变大且无法接受。当将确定的模型用于监管问题时,将介绍减少此类偏差的方法。

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