即插即用场景中的随机故障检测

F. Boem, S. Riverso, G. Ferrari-Trecate, T. Parisini
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引用次数: 6

摘要

本文提出了一种新的随机故障检测(FD)方法,用于监测即插即用(PnP)场景下的大型系统(lss)。该架构考虑了测量噪声和建模不确定性的随机边界,提供了具有保证虚警概率水平的概率时变FD阈值。被监控的LSS由多个相互连接的子系统组成,设计的FD体系结构能够实现新子系统的插拔和现有子系统的插拔。此外,所提出的PnP方法可以执行故障子系统的拔插,以避免故障在互连的LSS中传播。类似地,一旦问题得到解决,断开连接的子系统可以重新插入。重新配置过程只涉及邻近子系统的局部操作,从而允许可伸缩的体系结构。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,以允许PnP操作,并在每一步最小化FD阈值的不确定性方差。电力网的仿真结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic Fault Detection in a plug-and-play scenario
This paper proposes a novel stochastic Fault Detection (FD) approach for the monitoring of Large-Scale Systems (LSSs) in a Plug-and-Play (PnP) scenario. The proposed architecture considers stochastic bounds on the measurement noises and modeling uncertainties, providing probabilistic time-varying FD thresholds with guaranteed false alarms probability levels. The monitored LSS consists of several interconnected subsystems and the designed FD architecture is able to manage plugging-in of novel subsystems and un-plugging of existing ones. Moreover, the proposed PnP approach can perform the unplugging of faulty subsystems in order to avoid the propagation of faults in the interconnected LSS. Analogously, once the issue has been solved, the disconnected subsystem can be re-plugged-in. The reconfiguration processes involve only local operations of neighboring subsystems, thus allowing a scalable architecture. 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 allow PnP operations and to minimize at each step the variance of the uncertainty of the FD thresholds. Simulation results on a Power Network application show the effectiveness of the proposed approach.
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