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Learning to Infer Voltage Stability Margin Using Transfer Learning

机译:学习使用转移学习来推断电压稳定裕度

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Preventing voltage collapse is critical for reliable operation of power systems. A challenging problem is that the voltage stability margin, i.e., the distance from a given power profile to the voltage stability boundary, is very computationally intensive to obtain. A novel machine learning based approach for real-time inference of voltage stability margin is developed, only needing a very small number of offline-computed voltage stability margin data. An accurate margin predictor is trained by first training a binary stability classifier and then transferring this pre-trained model to fine-tune on the small data set of margins. Numerical simulations demonstrate that the proposed method significantly outperforms Jacobian-based voltage stability margin estimation with even faster real-time computation.
机译:防止电压崩溃对于电力系统的可靠运行至关重要。一个具有挑战性的问题是,电压稳定裕度,即从给定功率曲线到电压稳定边界的距离,在计算上非常费力。开发了一种新颖的基于机器学习的方法来实时推断电压稳定裕度,仅需要很少量的离线计算的电压稳定裕度数据。通过首先训练二进制稳定性分类器,然后传输此预训练的模型以对小的边际数据集进行微调,可以训练出准确的边际预测器。数值仿真表明,该方法在实时计算速度更快的情况下,明显优于基于雅可比行列的电压稳定裕度估计。

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