Fault prediction for distribution network based on CNN and LightGBM algorithm

Fan Min, Liu Yaling, Zhang Xi, Chen Huan, Hu Yaqian, Fan Libo, Yang Qing
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引用次数: 2

Abstract

Fault prediction plays a significant role in enhancing the safety, reliability, and stability of distribution network. However, the problem of enormous time-series data and discrete data makes the prediction great challenge. The imbalance between normal and fault samples will reduce the accuracy of the model. In addition, the influence of time-series variables on distribution network is direct and continuous, so the time-series feature extraction is the key technique for fault prediction. In this work, we propose a fault prediction method for distribution network based on CNN and LightGBM algorithm. This method deeply learns feature of time-series data by utilizing CNN, and improves the adaptability for imbalanced dataset by training LightGBM submodels. Experimental results based on fault dataset of a district in Chongqing from 2017 to 2018 show that fault prediction performance can be ameliorated by utilizing this method.
基于CNN和LightGBM算法的配电网故障预测
故障预测对提高配电网的安全性、可靠性和稳定性具有重要作用。然而,大量的时间序列数据和离散数据给预测带来了很大的挑战。正常样本和故障样本之间的不平衡会降低模型的准确性。此外,时间序列变量对配电网的影响是直接和连续的,因此时间序列特征提取是故障预测的关键技术。本文提出了一种基于CNN和LightGBM算法的配电网故障预测方法。该方法利用CNN深度学习时间序列数据的特征,并通过训练LightGBM子模型提高对不平衡数据集的适应性。基于重庆某区2017 - 2018年故障数据集的实验结果表明,该方法可以提高故障预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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