Fault diagnosis of power system using neural Petri net and fuzzy neural Petri net

P. Binh, N. Tuyen
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引用次数: 12

Abstract

In previous study Petri net models were developed for detecting fault location in power system. In the current work, we proposed two models to diagnose the fault: the neural Petri net (NPN) and the fuzzy neural Petri net (FNPN). These models based on underlying Petri net. When the faults occur in power system, it is inevitable that a great amount data transmitted to the control center, but there are some incomplete and uncertain information of protective relays and circuit breaker (CB). Two class of Petri net called the NPN and FNPN, can be used for detection. The final diagnostic report contains information about the location of fault. The developed methodology is tested using an actual power system. Fast and accurate results are obtained
基于神经Petri网和模糊神经Petri网的电力系统故障诊断
在以往的研究中,建立了Petri网模型用于电力系统故障定位检测。本文提出了两种故障诊断模型:神经Petri网(NPN)和模糊神经Petri网(FNPN)。这些模型基于底层的Petri网。当电力系统发生故障时,不可避免地要向控制中心传输大量的数据,但保护继电器和断路器(CB)的信息存在一些不完整和不确定性。两类Petri网称为NPN和FNPN,可用于检测。最终的诊断报告包含故障定位信息。所开发的方法在实际电力系统中进行了测试。得到快速准确的结果
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