低压配电网谐波源的机器学习元建模

Ansaar Dada, E. Labouré, M. Bensetti, Xavier Yang, Benoit George, M. Caujolle
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引用次数: 0

摘要

基于电力电子的非线性装置向其所连接的配电网注入谐波电流。它们的注入取决于先前存在的电源电压畸变和电网上游阻抗。由于建立了详细的时间模型,电磁瞬变(EMT)技术非常准确地捕捉了网络和设备谐波注入之间的非线性关系。它们的缺点是电网运营商很少能获得详细的电力电子模型,而且即使有,也需要耗费时间和资源,因为随着网络条件的变化,需要进行新的EMT模拟。近年来,机器学习元模型(MLM)已经能够准确预测非线性系统的行为。我们将此方法应用于频域谐波源的建模,并介绍了传销如何准确地预测各种器件的谐波电流。通过一系列EMT仿真,在各种电压和阻抗条件下对所提出的技术进行了数据库验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Metamodeling of Harmonic Sources in LV Distribution Networks
Power electronic-based non-linear devices inject harmonic current into the distribution grids they are connected to. Their injection depends on the preexisting distortions of their supply voltage and on the grid upstream impedances. Electromagnetic Transient (EMT) techniques capture quite accurately the non-linear relationships between the network and the device harmonic injections thanks to detailed time models. Their downsides are that detailed power electronic models are seldom available to grid operators, and when available, the simulations are time- and resource-consuming as new EMT simulations are required whenever the network conditions evolve. In recent years, machine learning metamodels (MLM) have been able to accurately predict the behavior of non-linear systems. We apply this approach to model harmonic sources in the frequency-domain and present in this paper how MLM accurately predict the harmonic currents of various devices. The proposed technique is validated over a database built with a series of EMT simulations performed with various voltage and impedance conditions.
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