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Analyzing noise-induced tracking errors in control systems with saturation: A stochastic linearization approach

机译:用饱和度分析控制系统中的噪声引起的跟踪误差:随机线性化方法

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摘要

Noise Induced Tracking Error (NITE) refers to the tracking error of the mean of the output in feedback control systems with nonlinear instrumentation subject to zero-mean measurement noise. Most of the previous work rely on the stochastic averaging for NITE analysis, the validity of which requires that the bandwidth of the zero mean measurement noise is much higher than that of the system. This is because the results obtained by stochastic averaging are asymptotic with respect to the noise bandwidth. Due to the asymptotic nature of the analysis tool, it is not straightforward to provide a quantitative argument for high bandwidth. An alternative method in the literature that can analyze NITE is stochastic linearization for random input, which is analogous to the well known describing function approach for sinusoidal input. Unlike stochastic averaging, stochastic linearization is not an asymptotic approximation. Therefore, analysis can be carried out for any given noise bandwidth. We carry out NITE analysis using stochastic linearization for a class of LPNI systems that are prone to NITE; identify the system conditions under which the averaging analysis of NITE may yield inaccurate results for a finite noise bandwidth; and prove that the results from the two methods agree as the noise bandwidth approaches infinity. In addition, an existing NITE mitigation strategy is extended based on the proposed method. Numerical examples are given to illustrate the results. (C) 2021 The Franklin Institute. Published by Elsevier Ltd. All rights reserved.
机译:噪声引起的跟踪误差(NITE)是指具有非线性仪器的反馈控制系统中输出的均值的跟踪误差,其受到零平均测量噪声。最先前的工作依赖于NITE分析的随机平均,其有效性要求零平均测量噪声的带宽远高于系统的带宽。这是因为通过随机平均获得的结果是关于噪声带宽的渐近。由于分析工具的渐近性,为高带宽提供定量参数并不直。可以分析液的文献中的一种替代方法是随机输入的随机线性化,其类似于众所周知的富人的正弦输入功能方法。与随机平均不同,随机线性化不是渐近近似。因此,可以对任何给定的噪声带宽进行分析。我们使用随机线性化进行了一类易于液的LPNI系统进行了液体分析;确定NITE的平均分析的系统条件可以产生有限噪声带宽产生不准确的结果;并证明这两种方法的结果同意,因为噪声带宽接近无穷大。此外,基于所提出的方法扩展了现有的举行减缓策略。给出了数值例子来说明结果。 (c)2021年富兰克林学院。 elsevier有限公司出版。保留所有权利。

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  • 来源
    《Journal of the Franklin Institute》 |2021年第12期|6261-6280|共20页
  • 作者单位

    DGIST Dept Informat & Commun Engn Daegu 42988 South Korea;

    Univ Vermont Dept Elect & Biomed Engn Burlington VT USA;

    DGIST Dept Informat & Commun Engn Daegu 42988 South Korea;

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