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Fault classification in power system distribution network integrated with distributed generators using CNN

机译:使用CNN的分布式发电机集成的电力系统配电网络中的故障分类

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摘要

Fault detection is the critical stage of the relaying system and their successful completion in minimum time is expected for fault clearance. With the increasing usage of distributed generators (DGs) in a distribution network, the conventional relaying methods are becoming inappropriate due to changing fault current levels. This paper presents a deep learning algorithm i.e. Convolutional Neural Network (CNN) customized for fault classification in the distributed networks integrated with DGs. This is first time that CNN has been used for fault detection using raw and sampled-data of three-phase voltage and current signals of various fault classes and no-fault class. The 10-fold cross-validation is used to demonstrate the performance of the proposed model in terms of different metrics such as accuracy, sensitivity, specificity, precision, and F1 score. The proposed model has attended an average 10-fold cross-validation accuracy of 99.52% for all the tested fault cases. This featureless proposed method has been compared with conventional approaches from literature and has shown better performance in terms of accuracy and computation burden. Further, a similar fault study is conducted on a mixed transmission line and distribution network with PV as DG using the proposed method and found performance accuracy of 99.92% and 99.97%, respectively.
机译:故障检测是中继系统的关键阶段,预计故障间隙最短时间成功完成。随着分布式发电机(DGS)在配送网络中的增加,传统的中继方法由于变化的故障电流水平而变得不恰当。本文介绍了深度学习算法I.E.卷积神经网络(CNN),用于与DG集成的分布式网络中的故障分类。这是第一次使用三相电压和各种故障类的三相电压和电流信号的原始和采样数据使用的CNN用于故障检测。 10倍的交叉验证用于展示所提出的模型的性能,从不同的指标,例如准确性,灵敏度,特异性,精度和F1分数。所有测试故障情况下,拟议的模型都参加了平均10倍的交叉验证精度为99.52%。这种无特色提出的方法已经与文献的常规方法进行了比较,并且在准确性和计算负担方面表现出更好的性能。此外,使用所提出的方法,用PV为DG的混合传输线和分配网络在混合传输线和分配网络上进行了类似的故障研究,并分别发现性能准确度为99.92%和99.97%。

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