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基于灰色投影优化随机森林算法的输电线路舞动预警方法
引用本文:卢明,赵书杰,刘振声,杨晓辉,李哲,宋礼斌.基于灰色投影优化随机森林算法的输电线路舞动预警方法[J].电测与仪表,2020,57(9):45-51,57.
作者姓名:卢明  赵书杰  刘振声  杨晓辉  李哲  宋礼斌
作者单位:国网河南省电力公司电力科学研究院;华中科技大学电气与电子工程学院;武汉云兆信息技术有限公司
基金项目:国家电网公司科技项目(52170217000U00K2);中原科技创新领军人才资助项目(194200510024)。
摘    要:为实现对输电线路舞动的准确预警,多种预警模型被建立。其中对于预警模型的研究点多集中于参数的最优选取,而尚未开展针对训练样本的聚类改进,特别是地形参量存在难以客观衡量的问题,容易导致预测精度不佳抑或模型存在适应性问题。为此,提出了一种基于灰色投影优化随机森林算法的舞动预警模型。通过加权灰色关联投影法来优化选取与待预测样本关联度较高的样本作为训练样本集,以此来改进随机森林模型对低关联度数据的拟合能力。此外,模型还通过多维度参量即导线分裂数、直径、档距等内部参量以及风速、风向角、湿度等外部参量作为输入特征量来提高预警的准确性。利用历史舞动数据对模型进行检验,结果显示该模型的预警结果相较于传统随机森林算法和BP神经网络具有明显优势。通过该方法,可为输电线路舞动预警提供一种新的解决路线。

关 键 词:输电线路  舞动  预警方法  灰色投影  随机森林
收稿时间:2018/12/25 0:00:00
修稿时间:2018/12/29 0:00:00

Early warning method of transmission line galloping based on random forest optimized by grey relation projection
LU Ming,ZHAO Shujie,LIU Zhensheng,YANG Xiaohui,LI Zhe and SONG Libin.Early warning method of transmission line galloping based on random forest optimized by grey relation projection[J].Electrical Measurement & Instrumentation,2020,57(9):45-51,57.
Authors:LU Ming  ZHAO Shujie  LIU Zhensheng  YANG Xiaohui  LI Zhe and SONG Libin
Affiliation:(Electric Power Research Institute of State Grid Henan Electric Power Company,Zhengzhou 450052,China;School of Electrical and Electronic Engineering,Huazhong University of Science&Technology,Wuhan 430074,China;Wuhan Data-cloud Information Technology Limited Company,Wuhan 430096,China)
Abstract:In order to achieve accurate early warning of galloping,many kinds of early warning models have been established.The research points of early warning models are mostly focused on the selection of optimal parameters.However,the clustering improvement of training samples has not been carried out,especially the terrain parameters,which are difficult to measure objectively.It is easy to lead to poor prediction accuracy and the adaptability of models.Therefore,a galloping early warning model based on random forest optimized by grey correlation projection was proposed in this paper.The method of weighted grey correlation projection was used to select optimal training samples which were tightly correlated with the predicted samples,so as to improve the fitting ability of random forest model when inputting low correlation data.In addition,multi-dimensional parameters were considered as input factors in order to improve the accuracy of early warning,including internal factors(conductor splitting number,diameter,spacing,etc.)and external factors(wind speed,wind direction angle,humidity,etc.).The historical data of transmission line galloping was used to verify the effectiveness of the proposed model.The results show that the early warning results of this model have obvious advantages in accuracy when comparing with traditional random forest algorithm and BP neural network.This method could provide a new solution for the early warning of transmission lines galloping.
Keywords:transmission line  galloping  early warning method  grey relation projection  random forest
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