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Icing thickness prediction of overhead transmission lines base on combined kernel function SVM

机译:基于组合核函数SVM的架空输电线路覆冰厚度预测

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Light icing of overhead transmission lines would cause huge hazards such as conductor galloping and line over load, while heavy ice would cause serious faults such as disconnection and tower falling down, resulting in paralysis of the grid. With the prediction of the icing thickness on transmission lines which can preclude the contingency caused by icing. This paper studies two types of kernel function (KF), the radial basis function (RBF) KF and polynomial (Poly) KF. The two kinds of KFs are applied to the support vector machine (SVM) to predict the icing thickness and then the results were compared. Based on the characteristics of RBF KF and Poly KF, a combined KF of weighting sum RBF KF and Poly KF is proposed. From the experimental results, the prediction performance of combined KF SVM is superior to single KF SVMs.
机译:架空输电线路的冰层结冰会导致巨大的危险,例如导体疾驰和线路过载,而重冰会导致严重的故障,例如断路和铁塔掉落,从而导致电网瘫痪。通过对输电线路上结冰厚度的预测,可以排除由结冰引起的意外情况。本文研究两种类型的核函数(KF),径向基函数(RBF)KF和多项式(Poly)KF。将两种KF应用于支持向量机(SVM)来预测结冰厚度,然后比较结果。根据RBF KF和Poly KF的特点,提出了加权和RBF KF和Poly KF的组合KF。从实验结果来看,组合式KF SVM的预测性能优于单个KF SVM。

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