基于ARIMA-CSSVR的输电线路结冰联合预测方法

Tianqi Li, X. Shi, Nan Cao, Zhetao Gu, Sidong Zhao, Y. Huang, Xiaodong Liang
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引用次数: 0

摘要

输电线路结冰实时预测对电网灾害预警具有重要意义。在相同地形条件下,空气湿度、温度、风速等“微气象”因素是影响电力线结冰的主要原因。现有的基于机理和统计的模型构建和预测精度难以满足实际应用的要求,而相关的智能计算模型忽略了时间积累的影响。本文提出了一种基于ARIMA-CSSVR的组合预测模型。ARIMA预测输电线路结冰呈线性增长。采用基于CS优化的SVR对ARIMA预测时间序列中包含的非线性误差进行拟合。然后将这两个结果结合起来作为最终的预测。通过数值算例与其他机器学习算法进行比较,验证了该方法的预测优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combined Prediction Method of Transmission Line Icing Based on ARIMA-CSSVR
Real-time prediction of icing on power transmission lines is of great significance for grid disaster warning. Under the same terrain conditions, "micro-meteorological" such as air humidity, temperature, and wind speed are the main reasons that affect the icing of power lines. The construction and prediction accuracy of the existing mechanism-based and statistical model are difficult to meet the requirements of practical applications, while related intelligent computing models ignore the effect of time accumulation. This paper proposes a combined prediction model based on ARIMA-CSSVR. ARIMA predicts the linear growth of icing on power transmission lines. SVR based on CS optimized is used to fit the nonlinear errors contained in the ARIMA predicted time series. Then combined the two results as the final prediction. A numerical example is used to compare it with other machine learning algorithms, and the prediction advantage of this method is verified.
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