基于GS-XGBoost的传输线结冰机器学习预测

J. Sensors Pub Date : 2022-08-09 DOI:10.1155/2022/2753583
Yi Ma, Hao Pan, G. Qian, Fangrong Zhou, Yutang Ma, G. Wen, Meng Zhao, Tianyu Li
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引用次数: 1

摘要

近年来的数据表明,输电线路结冰是恶劣天气下影响电网运行的主要问题;它大大增加了运营成本,影响了人们的生活。因此,建立一种预测输电线路结冰风险的计算方法对电网的稳定具有重要意义。在这项研究中,我们提出了一种最大互信息系数(MIC)和网格搜索优化的极端梯度增强(GS-XGBoost)输电线路结冰风险预测方法。首先,计算冰厚与降水、风速、风向、相对湿度、坡度、坡向、高程等特征因子之间的mic,过滤出有效特征;其次,采用网格搜索方法对XGBoost的超参数进行调整。生成的GS-XGBoost模型使用训练集(70%的数据)基于最佳参数构建预测系统。最后,使用测试集(30%的数据)评估GS-XGBoost的性能。对于多线、跨区域的结冰数据,我们的实验结果表明,GS-XGBoost在准确率、精密度、召回率和f1分数方面优于其他机器学习方法。
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Prediction of Transmission Line Icing Using Machine Learning Based on GS-XGBoost
In recent years, data have shown that transmission line icing is the main problem affecting the operation of power grids in bad weather; it greatly increases operating costs and affects people’s lives. Therefore, the development of a calculation method to predict the risk of ice on transmission lines is of great importance for the stability of the power grid. In this study, we propose a maximum mutual information coefficient (MIC) and grid search optimization extreme gradient boosting (GS-XGBoost) transmission line ice risk prediction method. First, the MICs between the ice thickness and the precipitation, wind speed, wind direction, relative humidity, slope, aspect, and elevation characteristic factors are calculated to filter out the effective features. Second, a grid search method is used to adjust the hyperparameters of XGBoost. The resulting GS-XGBoost model builds a prediction system based on the best parameters using a training set (70% of the data). Finally, the performance of GS-XGBoost is evaluated using a test set (30% of the data). For multiline, cross-regional icing data, our experimental results show that GS-XGBoost outperforms other machine learning methods in terms of accuracy, precision, recall, and F 1 score.
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