Distributed model-based fault diagnosis with stochastic uncertainties

F. Boem, T. Parisini
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引用次数: 4

Abstract

This paper proposes a novel distributed fault detection and isolation approach for the monitoring of non linear large-scale systems. The proposed architecture considers stochastic characterization of the measurement noises and modeling uncertainties, computing at each step stochastic time-varying thresholds with guaranteed false alarms probability levels. The convergence properties of the distributed estimation are demonstrated. A novel fault isolation method is proposed basing on a Generalized Observer Scheme, providing guaranteed error probabilities of the fault exclusion task. A consensus approach is used for the estimation of variables shared among more than one subsystem; a method is proposed to define the time-varying consensus weights in order to minimize at each step the variance of the uncertainty of the fault detection and isolation thresholds. Detectability and isolability conditions are provided.
基于分布式模型的随机不确定性故障诊断
本文提出了一种用于非线性大系统监测的分布式故障检测与隔离方法。该体系结构考虑了测量噪声的随机特征和建模的不确定性,在每一步计算随机时变阈值,并保证虚警概率水平。证明了分布式估计的收敛性。提出了一种基于广义观测器的故障隔离方法,保证了故障排除任务的错误概率。采用共识方法对多个子系统共享的变量进行估计;提出了一种定义时变共识权的方法,以使故障检测和隔离阈值在每一步的不确定性方差最小。给出了可探测性和可隔离性条件。
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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