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Study on forecasting method of transmission line galloping via BP neural network

机译:基于BP神经网络的输电线路舞动预测方法研究。

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This paper analyzes the external meteorological factors that influencing galloping, a BP neural network learning algorithm is established by taking wind, inducted angle of wind direction and line, relative humidity, and ambient temperature as input vectors. The galloping probability is predicted by judging whether the prone-galloping weather conditions are satisfied utilizing the proposed method, and its prediction performance is assessed through several test indexes with the purpose of improvement. A case study is presented by adopting historical galloping data of Henan power grid, and the result shows that the proposed method is effective and practical, which can provide support for power system operation staffs to make reasonable decisions as well as ensure the power grid securely tiding over the peak-load during winter.
机译:本文分析了影响疾驰的外部气象因素,以风,风向和线的感应角,相对湿度和环境温度为输入向量,建立了BP神经网络学习算法。提出的方法是通过判断是否容易发生疾驰的天气条件来预测飞驰的概率,并通过若干测试指标对飞驰的预测性能进行了改进。结合河南电网的历史舞动数据进行了案例研究,结果表明该方法是有效可行的,可以为电力系统运行人员做出合理的决策提供支持,并确保电网安全运行。在冬季的高峰负荷。

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