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Microgrid fault diagnosis model based on Weighted Fuzzy Neural Petri Net

机译:基于加权模糊神经Petri网的微电网故障诊断模型

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摘要

With the extensive application of renewable energy generation, microgrid has become a new focus in power system research. Efficient fault diagnosis is important to ensure the safe operation of the microgrid. Because of the characteristics of high complexity and non-linearity of the microgrid topology, it is difficult to build a universal fault diagnosis model under different operating states. To solve this problem, we partition the microgrid topology into the proximal area and the remote area based on distance from the grid. The fault alarm information is classified into three types of protection information sets: primary protection set, near-backup protection set and far-backup protection set. And more complete diagnostic models are built with adding in the interaction between different protections. At the same time, this paper proposes Weighted Fuzzy Neural Petri Net (WFNPN), which can make diagnostic models by Petri net, and train specific parameters by fuzzy neural network without excessive reliance on artificial experience. And the method can reduce computational complexity and improve the model accuracy. Example analysis results verify the versatility and fault tolerance of the model.
机译:随着可再生能源发电的广泛应用,微电网已成为电力系统研究的新焦点。高效的故障诊断对于确保微电网的安全运行非常重要。由于微电网拓扑的高复杂度和非线性的特点,很难在不同的工作状态下建立通用的故障诊断模型。为了解决这个问题,我们根据距网格的距离将微网格拓扑划分为近端区域和远端区域。故障告警信息分为三类保护信息集:主保护集,近备份保护集和远备份保护集。通过添加不同保护之间的交互,可以构建更完善的诊断模型。同时,本文提出了加权模糊神经Petri网(WFNPN),可以通过Petri网建立诊断模型,并通过模糊神经网络训练具体参数,而无需过多依赖人工经验。该方法可以降低计算复杂度,提高模型精度。实例分析结果验证了该模型的多功能性和容错性。

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