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Faulty patterns diagnosis for k-bounded non-Markovian timed stochastic Petri nets

机译:k型非马车定期随机培养网的诊断故障模式诊断

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This paper concerns the diagnosis of stochastic discrete event systems that behave with non-Markovian dynamics. K-bounded partially observed Petri nets are used to model the system structure and the sensors. Stochastic processes with probability density functions of finite support are used to model the dynamics including some failure processes. The faults to be detected and isolated are defined as faulty patterns. From the proposed modelling and the timed measurements, the probabilities of consistent trajectories are computed with a numerical scheme. Diagnosis in terms of probability is established as a consequence. The advantage of the proposed scheme is that it can be used for arbitrary probability density functions. It works also for various time semantics including race and preselection policies. Consequently it is suitable in many application domains including manufacturing, computer science, transport and logistic.
机译:本文涉及诊断与非马洛维亚动态的随机离散事件系统的诊断。 K型部分观察到的Petri网用于建模系统结构和传感器。具有有限支撑概率密度函数的随机过程用于模拟包括某些故障过程的动态。要检测和隔离的故障被定义为错误的模式。根据所提出的建模和定时测量,通过数值方案计算一致轨迹的概率。根据概率的诊断是根据结果建立的。所提出的方案的优点是它可用于任意概率密度函数。它还适用于各种时间语义,包括种族和预选政策。因此,它适用于许多应用领域,包括制造,计算机科学,运输和物流。

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