A failure prediction method of power distribution network based on PSO and XGBoost

J. Fang, Hong-Bing Wang, Fan Yang, Kuang Yin, Xiang Lin, Min Zhang
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引用次数: 2

Abstract

ABSTRACT The power distribution network is an important link between the end of power grid and the users. Precise predictions on the risk probability of the distribution network in severe weather could provide the electric company with a reference to daily operation and maintenance arrangements. The company could also prepare professional mechanists and necessary supplies in advance and restoring power supply in a short time. In this paper, a failure risk prediction of power distribution network method based on particle swarm optimisation and extreme gradient boosting tree algorithm is proposed. The local weather data is fed into the model, outputting the failure severity and probability of the area in the same period. The case study shows that our proposed method relieves the low accuracy problem by introducing the particle swarm optimisation algorithm to search the optimal values of critical parameters. On the testing dataset, the accuracy of our method reaches 96.19%, showing that our model can efficiently evaluate the risk level of the distribution network working conditions. Moreover, the algorithm can extract the association rules between the weather features and the failure risk levels, offering the data support for the failure risk prevention of the distribution network under severe weather.
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基于粒子群算法和XGBoost的配电网故障预测方法
配电网是连接电网末端和用户的重要环节。准确预测配电网在恶劣天气下的风险概率,可以为电力公司的日常运维安排提供参考。公司也可以提前准备专业的机械师和必要的耗材,在短时间内恢复供电。提出了一种基于粒子群优化和极值梯度提升树算法的配电网故障风险预测方法。将当地的天气数据输入到模型中,输出同一时期该地区的故障严重程度和概率。实例研究表明,该方法通过引入粒子群算法来搜索关键参数的最优值,有效地解决了算法精度低的问题。在测试数据集上,该方法的准确率达到96.19%,表明该模型可以有效地评估配电网工况的风险水平。此外,该算法还可以提取天气特征与故障风险等级之间的关联规则,为恶劣天气下配电网的故障风险防范提供数据支持。
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来源期刊
Australian Journal of Electrical and Electronics Engineering
Australian Journal of Electrical and Electronics Engineering Engineering-Electrical and Electronic Engineering
CiteScore
2.30
自引率
0.00%
发文量
46
期刊介绍: Engineers Australia journal and conference papers.
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