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Supervised learning for optimal power flow as a real-time proxy

机译:有监督的学习以实时代理的方式实现最佳潮流

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In this work we design and compare different supervised learning algorithms to compute the cost of Alternating Current Optimal Power Flow (ACOPF). The motivation for quick calculation of OPF cost outcomes stems from the growing need of algorithmic-based long-term and medium-term planning methodologies in power networks. Integrated in a multiple time-horizon coordination framework, we refer to this approximation module as a proxy for predicting short-term decision outcomes without the need of actual simulation and optimization of them. Our method enables fast approximate calculation of OPF cost with less than 1% error on average, achieved in run-times that are several orders of magnitude lower than of exact computation. Several test-cases such as IEEE-RTS96 are used to demonstrate the efficiency of our approach.
机译:在这项工作中,我们设计并比较了不同的监督学习算法,以计算交流最优功率流(ACOPF)的成本。快速计算OPF成本结果的动机源于电力网络中对基于算法的长期和中期规划方法的日益增长的需求。集成在多个时间-水平协调框架中,我们将此近似模块称为代理,用于预测短期决策结果,而无需实际模拟和优化。我们的方法实现了OPF成本的快速近似计算,平均误差小于1%,并且在运行时比精确计算要低几个数量级。几个测试用例(例如IEEE-RTS96)用于证明我们方法的效率。

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