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Fault Diagnosis in Smart Distribution System Using Smart Sensors and Entropy

机译:基于智能传感器和熵的智能配电系统故障诊断

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摘要

Power quality and reliability of electric power supply have become indispensable in today's digital world. Advanced measurement, sensing and communications are available in smart grid environment. Using advanced infrastructure, tools and techniques, modern researchers are trying to device sophisticated methods for fault diagnosis. This paper proposes a technique using nonconventional symlet mother wavelet function to carry out fault diagnosis process. The technique is discussed for extracting entropy of fault transient signal and is used for pattern recognition. The algorithm is presented which is developed using MATLAB software for fault identification, classification and location tasks. The method is implemented on a 9-bus system model, and the results are discussed. The results show effectiveness of symlet nonconventional wavelet function for feature extraction task. The performance indicates the applicability of the method to fault identification, classification and location tasks. The result proves superiority of the method over other methods of feature selection. The method is useful for real-time monitoring and automation purpose of power system if developed further.
机译:在当今的数字世界中,电源的电能质量和可靠性已变得不可或缺。在智能电网环境中可以进行高级测量,传感和通信。现代研究人员正在使用先进的基础架构,工具和技术,尝试使用复杂的方法进行故障诊断。提出了一种利用非常规的小波母小波函数进行故障诊断的技术。讨论了提取故障暂态信号熵的技术,并将其用于模式识别。提出了使用MATLAB软件开发的用于故障识别,分类和定位任务的算法。该方法在9总线系统模型上实现,并讨论了结果。结果表明,Symlet非常规小波函数在特征提取任务中的有效性。性能表明该方法适用于故障识别,分类和定位任务。结果证明了该方法优于其他特征选择方法。如果进一步发展,该方法对于电力系统的实时监视和自动化目的是有用的。

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