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Change detection for uncertain autoregressive dynamic models through nonparametric estimation

机译:基于非参数估计的不确定自回归动态模型的变化检测

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摘要

A new statistical approach for on-line change detection in uncertain dynamic system is proposed. In change detection problem, the distribution of a sequence of observations can change at some unknown instant. The goal is to detect this change, for example a parameter change, as quickly as possible with a minimal risk of false detection. In this paper, the observations come from an uncertain system modeled by an autoregressive model containing an unknown functional component. The popular Page's CUSUM rule is not applicable anymore since it requires the full knowledge of the model. A new detection CUSUM-like scheme is proposed, which is based on the nonparametric estimation of the unknown component from a learning sample. Moreover, the estimation procedure can be updated on-line which ensures a better detection, especially at the beginning of the monitoring procedure. Simulation trials were performed on a model describing a water treatment process and show the interest of this new procedure with respect to the classic CUSUM rule. (C) 2016 Elsevier B.V. All rights reserved.
机译:提出了一种不确定动态系统中在线变化检测的统计方法。在变化检测问题中,一系列观测值的分布可能会在某个未知时刻发生变化。目的是在错误检测风险最小的情况下,尽快检测此变化,例如参数变化。在本文中,观察结果来自一个不确定系统,该系统由包含未知功能成分的自回归模型建模。流行的Page的CUSUM规则不再适用,因为它需要模型的全部知识。提出了一种新的类似于CUSUM的检测方案,该方案基于对学习样本中未知成分的非参数估计。此外,估计程序可以在线更新,从而确保更好的检测,尤其是在监视程序开始时。在描述水处理过程的模型上进行了模拟试验,并表明了该新程序对经典CUSUM规则的兴趣。 (C)2016 Elsevier B.V.保留所有权利。

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