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Transformer hot spot temperature prediction using a hybrid algorithm of support vector regression and information granulation

机译:支持向量回归与信息粒化混合算法的变压器热点温度预测

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摘要

A novel algorithm for transformer hot spot temperature prediction is proposed and presented in this paper. The algorithm is an integration of Support Vector Regression (SVR) and Information Granulation (IG), which is based on the principle of time series regression. The historical records consisting of measured hot spot temperature, top oil temperature, load current and ambient temperature of a transformer are used for verifying the proposed hybrid algorithm. The results show that the algorithm consistently outperforms a number of existing thermal modelling based methods (IEEE model, Swift's model and Susa's model) in estimating transformer's hot spot temperature.
机译:提出并提出了一种变压器热点温度预测的新算法。该算法是基于时间序列回归原理的支持向量回归(SVR)和信息粒度(IG)的集成。由测量的热点温度,顶油温度,负载电流和变压器的环境温度组成的历史记录用于验证所提出的混合算法。结果表明,该算法在估算变压器的热点温度方面始终优于许多现有的基于热模型的方法(IEEE模型,Swift模型和Susa模型)。

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