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Robust codiagnosability of discrete-event systems against permanent loss of observations

机译:离散事件系统对于永久丢失观测值具有强大的协同诊断能力

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Different notions of robust diagnosability of discrete-event systems (DESs) have been introduced in the literature. In all these works, the objective is the detection of unobservable fault events in DESs subject to uncertainties in the observation of the events and/or in the plant model. Recently, the so-called robust diagnosability of DESs against permanent loss of observations (RDPLO) has been introduced, where the uncertainty is in the observable event set of the system. In this regard, the language generated by the system is said to be robustly diagnosable if it is possible to detect the fault occurrence, within a bounded delay, even when some sensors permanently fail to communicate the occurrence of the events to the diagnoser. In this paper, we extend the definition of RDPLO to the decentralized case leading to the definition of robust codiagnosability against permanent loss of observations (RCPLO). The paper also addresses the issue of online implementation, and we propose an efficient scheme to carry out online robust codiagnosis against permanent loss of observations. Another contribution of the paper is the development of a polynomial time algorithm for the verification of the RCPLO.
机译:文献中已经引入了对离散事件系统(DES)进行可靠诊断的不同概念。在所有这些工作中,目标是检测DES中无法观察到的故障事件,但要在事件的观察和/或工厂模型中存在不确定性。最近,引入了所谓的DES对永久性观测值丢失的强大诊断能力(RDPLO),其中不确定性在系统的可观察事件集中。在这方面,如果即使在某些传感器永久无法将事件的发生传达给诊断者的情况下,也可以在有限的延迟内检测到故障的发生,则可以可靠地诊断由系统生成的语言。在本文中,我们将RDPLO的定义扩展到了分散的案例,从而导致了针对永久性丢失观察值(RCPLO)的强大的共诊断能力的定义。本文还讨论了在线实施的问题,我们提出了一种有效的方案,可以对观察力的永久丢失进行在线鲁棒的协同诊断。本文的另一个贡献是开发了用于验证RCPLO的多项式时间算法。

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