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首页> 外文期刊>Power Delivery, IEEE Transactions on >A Neural-Network-Based Data-Driven Nonlinear Model on Time- and Frequency-Domain Voltage–Current Characterization for Power-Quality Study
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A Neural-Network-Based Data-Driven Nonlinear Model on Time- and Frequency-Domain Voltage–Current Characterization for Power-Quality Study

机译:基于神经网络的时域和频域电压-电流表征的数据驱动非线性模型,用于电能质量研究

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摘要

An accurate model of nonlinear load is important for the evaluation of power quality (PQ). Among different PQ disturbance sources, alternating current electric arc furnace (AC EAF) is one of most complicated and serious loads. To provide effective operation prediction of AC EAF, a data-driven modeling approach based on time- and frequency-domain voltage-current characterization is proposed in this paper. With the prediction of the proposed model in the time domain, the dynamic and short-term behavior of AC EAF can be observed. And the quasistationary and long-term features of AC EAF would be extracted via the frequency-domain phase of the proposed model. From the comparison on the field measurement data, the performance of the proposed model can be verified in the applications of PQ studies.
机译:准确的非线性负载模型对于评估电能质量(PQ)非常重要。在不同的PQ干扰源中,交流电弧炉(AC EAF)是最复杂和严重的负载之一。为了提供交流电电弧炉的有效运行预测,本文提出了一种基于时域和频域电压-电流特性的数据驱动建模方法。通过在时域中对提出的模型进行预测,可以观察到AC EAF的动态和短期行为。并通过该模型的频域相位提取AC EAF的准平稳和长期特征。通过与现场测量数据的比较,可以在PQ研究的应用中验证所提出模型的性能。

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