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Machine learning of real-time power systems reliability management response

机译:机器学习实时电力系统的可靠性管理响应

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In this paper we study how supervised machine learning could be applied to build simplified models of realtime (RT) reliability management response to the realization of uncertainties. The final objective is to import these models into look-ahead operation planning under uncertainties. Our response models predict in particular the real-time reliability management costs and the resulting reliability level of the system. We tested our methodology on the IEEE-RTS96 benchmark. Among the supervised learning algorithms tested, extremely randomized trees, kernel ridge regression and neural networks appear to be the best methods for this application. Furthermore, by using feature “importances” computed by tree-based ensemble methods, we were able to extract the most relevant variables to predict the response of real-time reliability management, and thus obtain a better understanding of the system properties.
机译:在本文中,我们研究了如何将有监督的机器学习应用于构建简化的实时(RT)可靠性管理模型,以响应不确定性的实现。最终目标是在不确定性的情况下将这些模型导入到提前运行计划中。我们的响应模型尤其可以预测实时可靠性管理成本以及系统的最终可靠性水平。我们在IEEE-RTS96基准测试了我们的方法。在测试的监督学习算法中,极其随机的树,核岭回归和神经网络似乎是此应用程序的最佳方法。此外,通过使用基于树的集成方法计算的特征“重要性”,我们能够提取最相关的变量来预测实时可靠性管理的响应,从而更好地了解系统属性。

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