Joint identification of system parameter and noise parameters in quantized systems

IF 2.1 3区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS
Jieming Ke, Yanlong Zhao, Ji-Feng Zhang
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引用次数: 0

Abstract

This paper investigates the joint identification problem of unknown system parameter and noise parameters in quantized systems when the noises involved are Gaussian with unknown variance and mean value. Under such noises, previous investigations show that the unknown system parameter and noise parameters are not jointly identifiable in the single-threshold quantizer case. The joint identifiability in the multi-threshold quantizer case still remains an open problem. This paper proves that the unknown system parameter, the noise variance and the mean value are jointly identifiable if and only if there are at least two thresholds. Then, a decomposition-recombination identification algorithm is proposed to jointly identify the unknown system parameter and noise parameters. Firstly, a technique is designed to convert the identification problem with unknown noise parameters into an extended parameter identification problem with standard Gaussian noises. Secondly, the extended parameter is identified by a stochastic approximation method for quantized systems. For the effectiveness, this paper obtains the strong consistency and the Lp convergence for the algorithm under non-persistently exciting inputs and without any a priori knowledge on the range of the unknown system parameter. The almost sure convergence rate is also obtained. Furthermore, when the mean value is known, the unknown system parameter and noise variance can be jointly identified under weaker conditions on the inputs and the quantizer. Finally, the effectiveness of the proposed algorithm is demonstrated by simulation.
量化系统中系统参数和噪声参数的联合识别
本文研究了量化系统中未知系统参数和噪声参数的联合识别问题,当涉及的噪声是方差和均值未知的高斯噪声时。以往的研究表明,在这种情况下,未知系统参数和噪声参数在单门限量化器情况下是不可联合识别的。多门限量化器情况下的联合可识别性仍是一个悬而未决的问题。本文证明,当且仅当至少有两个阈值时,未知系统参数、噪声方差和均值是可联合识别的。然后,本文提出了一种分解-组合识别算法来联合识别未知系统参数和噪声参数。首先,设计了一种技术,将未知噪声参数的识别问题转换为标准高斯噪声的扩展参数识别问题。其次,通过量化系统的随机逼近方法来识别扩展参数。在有效性方面,本文获得了算法在非持续激励输入下的强一致性和 Lp 收敛性,并且不需要任何关于未知系统参数范围的先验知识。同时还获得了几乎确定的收敛速率。此外,当平均值已知时,在输入和量化器的较弱条件下,未知系统参数和噪声方差可以被联合识别。最后,通过仿真证明了所提算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Systems & Control Letters
Systems & Control Letters 工程技术-运筹学与管理科学
CiteScore
4.60
自引率
3.80%
发文量
144
审稿时长
6 months
期刊介绍: Founded in 1981 by two of the pre-eminent control theorists, Roger Brockett and Jan Willems, Systems & Control Letters is one of the leading journals in the field of control theory. The aim of the journal is to allow dissemination of relatively concise but highly original contributions whose high initial quality enables a relatively rapid review process. All aspects of the fields of systems and control are covered, especially mathematically-oriented and theoretical papers that have a clear relevance to engineering, physical and biological sciences, and even economics. Application-oriented papers with sophisticated and rigorous mathematical elements are also welcome.
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