首页> 外文会议>International Conference on Artificial Neural Nets and Genetic Algorithms, 2001, Prague, Czech Republic >Genetic Algorithm Based Parameters Identification for Power Transformer Thermal Overload Protection
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Genetic Algorithm Based Parameters Identification for Power Transformer Thermal Overload Protection

机译:基于遗传算法的电力变压器热过载保护器参数辨识

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摘要

Recent studies by various authors have shown as the IEEE Transformer Loading Guide model and the more recent modified equations, proposed by the Working Group K3 of the IEEE "Power System Relaying Committee", are lacking in accuracy in prediction the winding hottest spot temperature of a power transformer in presence of overload conditions. This is mainly due to the deviation of the parameters of the thermal model of the power transformer in presence of overload conditions. In the paper a novel technique to identify the thermal parameters to be used for the estimation of the hot spot temperature is presented. The proposed method is based on a Genetic Algorithm (GA) which, working on the load current and on the measured hot spot temperature pattern, permits to identify a corrected set of parameters for the thermal model of the power transformer. Thanks to data obtained from experimental tests, the GA based method is tested to evaluate the performance of the proposed method in terms of accuracy.
机译:各种作者的最新研究已将其作为IEEE变压器负载指南模型,并且由IEEE“电力系统中继委员会”的工作组K3提出的最新修正方程式在预测绕组绕组最热点温度方面缺乏准确性。过载条件下的电力变压器。这主要是由于在过载条件下电力变压器热模型参数的偏差。在本文中,提出了一种新颖的技术,用于识别用于估算热点温度的热参数。所提出的方法基于遗传算法(GA),该遗传算法在负载电流和测得的热点温度模式上工作,可以为电力变压器的热模型确定一组校正的参数。得益于从实验测试获得的数据,对基于GA的方法进行了测试,以评估该方法在准确性方面的性能。

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