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Forecast of Line Ice-coating Degree Using Circumfluence Index Support Vector Machine Method

机译:环流指数和支持向量机方法预测线冰涂层

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Forecast of line ice-coating plays an important role for reducing the damage of power grid from ice rain efficiently. Aiming at the climate feature and forecast purpose in Hunan area, forecasts for ice-coating number of days and ice-coating thickness are transformed into forecasts for ice-coating degree. According to the calculated ice-coating degree coefficient, ice-coating degree is indicated and divided. Because normal climate information and ice-coating forecast method are hard to satisfy the requirement of de-icing schedule and financial risk reducing, circumfluence indexes as atmosphere information and support vector machine (SVM) as forecast method are presented to forecast lines ice-coating degree. Through correlation analysis about 74 circumfluence indexes to ice-coating degree, correlation coefficient and associated correlation coefficient are calculated and listed. These 8 circumfluence indexes of higher coefficients are chosen as independent variables to be used to forecast the ice-coating degree in weeks or months. SVM models based on two kinds of kernel functions for forecasting ice-coating degree are built. Ice-coating samples and circumfluence indexes of 30 years are adopted in Hunan. The parameters of two kinds of SVM models are got through Particle Swarm optimization. The forecast results show that polynomial kernel function SVM model is more efficient and suitable than radial basis function to winter ice-coating forecast.
机译:线冰涂层预测对减少有效冰雨的电网损坏起着重要作用。针对气候特征和预测目的在湖南地区,冰涂层数量和冰涂层的预测转化为冰涂层的预测。根据计算的冰涂层系数,指示和分开冰涂度。由于正常的气候信息和冰涂预测方法难以满足去结冰的时间表和财务风险的要求,因此作为大气信息和支持向量机(SVM)作为预测方法,因此提出了预测线冰涂层。通过对冰涂度的约74个环状指标的相关性分析,计算和列出相关系数和相关的相关系数。将较高系数的这8个环状指标作为独立变量选择,用于预测周或数月的冰涂层。建立了基于两种内核功能的SVM模型,用于预测冰涂层度。湖南采用了30年的冰涂样品和环流指数。通过粒子群优化进行两种SVM模型的参数。预测结果表明,多项式内核功能SVM模型比冬季冰涂预测更有效,适用于径向基函数。

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