基于支持向量回归的直流变流器功率损耗预测方法

Bingyuan Tan, Jia Liu, Wenmin Luo, Huibin Zhou, Jin-quan Zhao
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引用次数: 0

摘要

对于高压直流换流站,由于换流站在正常运行时,其运行参数是动态变化的,常用的功率损耗确定方法难以准确实时反映换流站功率损耗的变化。为此,本文提出了一种基于支持向量回归的直流变流器功率损耗预测方法。根据该方法,首先对变换器的功率损耗数据进行分析。然后在功率损耗数据中选择合适的特征,从而获得功率损耗样本的数据集,用于进一步的工作。通过对之前收集的数据集应用支持向量回归算法,可以预测高压直流换流站在不同运行参数下的变流器功率损耗。最后,采用交叉验证法对预测方法的稳定性进行验证。验证结果表明,该方法能够准确、稳定地实时预测高压直流换流站变流器的功率损耗。
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A Method for Predicting Power Loss of HVDC Converters Based on Support Vector Regression
For a HVDC converter station, the commonly used power loss determination methods are difficult to accurately reflect the changes of power loss of the converter in real time, given that the operating parameters of the converter station are dynamically changing when the converter station is running normally. Therefore, this paper proposes a method for predicting power loss of HVDC converters based on support vector regression. According to this method, firstly, the power loss data of a converter is analyzed. Then the appropriate feature in the power loss data is selected and thus a dataset of power loss samples can be obtained for further work. By applying the support vector regression algorithm to the dataset collected before, it is possible to predict the power loss of a converter for various operating parameters of the HVDC converter station. Finally, the cross-validation method was used to validate the stability of the prediction method. The result of the validation shows that the proposed method is able to accurately and stably predict the power loss of a converter of the HVDC converter station in real time.
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