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首页> 外文期刊>IEEE Transactions on Automatic Control >Stable Process Approach to Analysis of Systems Under Heavy-Tailed Noise: Modeling and Stochastic Linearization
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Stable Process Approach to Analysis of Systems Under Heavy-Tailed Noise: Modeling and Stochastic Linearization

机译:重型噪声下系统分析的稳定工艺方法:建模与随机线性化

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摘要

The Wiener process has provided a lot of practically useful mathematical tools to model stochastic noise in many applications. However, this framework is not enough for modeling extremal events, since many statistical properties of dynamical systems driven by the Wiener process are inevitably Gaussian. The goal of this work is to develop a framework that can represent a heavy-tailed distribution without losing the advantages of the Wiener process. To this end, we investigate models based on stable processes (this term "stable" has nothing to do with "dynamical stability") and clarify their fundamental properties. In addition, we propose a method for stochastic linearization, which enables us to approximately linearize static non-linearities in feedback systems under heavy-tailed noise, and analyze the resulting error theoretically. The proposed method is applied to assessing wind power fluctuation to show the practical usefulness.
机译:Wiener进程提供了许多实际上有用的数学工具来模拟许多应用中的随机噪声。然而,这种框架对于建模极值事件是不够的,因为由维纳过程驱动的动态系统的许多统计特性不可避免地是高斯的。这项工作的目标是制定一个框架,可以代表重型分布,而不会失去维纳流程的优势。为此,我们调查基于稳定过程的模型(此术语“稳定”与“动态稳定性”无关,并阐明其基本属性。此外,我们提出了一种用于随机线性化的方法,这使得我们能够在重尾噪声下大致线性化反馈系统中的静态非线性,并从理论上分析所产生的误差。该方法应用于评估风力波动以显示实际有用性。

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