评估用于快速识别突发事件的机器学习模型

Applied AI letters Pub Date : 2020-12-15 DOI:10.1002/ail2.19
Florian Schäfer, Jan-Hendrik Menke, Martin Braun
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引用次数: 0

摘要

潮流结果的快速逼近有助于电力系统规划和实际运行。在规划中,如果要考虑多年、不同的控制策略或应急策略,则需要进行数百万次的潮流计算。在实际运行中,电网运营商必须在短时间内评估电网状态是否符合应急要求。在本文中,我们比较了回归和分类方法来预测多变量结果,例如母线电压值和线路负载,或时间步长的二元分类来识别临界负载情况。我们以15分钟和5分钟分辨率为1年的时间序列在3个实际电力系统上进行了测试。我们比较了不同的机器学习模型,如多层感知器(mlp)、决策树、k近邻、梯度增强,并评估所需的训练时间和预测时间以及预测误差。我们还确定了每种方法所需的训练数据量,并显示了结果,包括未训练的生成缩减的近似值。对于比较的方法,我们确定了最适合任务的mlp。基于mlp的模型可以预测关键情况,准确率为97%至98%,假阴性预测的数量非常低,为0.0%至0.64%。
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Evaluating machine learning models for the fast identification of contingency cases

Fast approximations of power flow results are beneficial in power system planning and live operation. In planning, millions of power flow calculations are necessary if multiple years, different control strategies, or contingency policies are to be considered. In live operation, grid operators must assess if grid states comply with contingency requirements in a short time. In this paper, we compare regression and classification methods to either predict multivariable results, for example, bus voltage magnitudes and line loadings, or binary classifications of time steps to identify critical loading situations. We test the methods on three realistic power systems based on time series in 15 and 5 minutes resolution of 1 year. We compare different machine learning models, such as multilayer perceptrons (MLPs), decision trees, k-nearest neighbors, gradient boosting, and evaluate the required training time and prediction times as well as the prediction errors. We additionally determine the amount of training data needed for each method and show results, including the approximation of untrained curtailment of generation. Regarding the compared methods, we identified the MLPs as most suitable for the task. The MLP-based models can predict critical situations with an accuracy of 97% to 98% and a very low number of false negative predictions of 0.0% to 0.64%.

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