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Data-driven Optimization Approaches for Optimal Power Flow with Uncertain Reserves from Load Control

机译:具有负载控制不确定储备的最佳功率流的数据驱动优化方法

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Aggregations of electric loads, like heating and cooling systems, can be controlled to help the power grid balance supply and demand, but the amount of balancing reserves available from these resources is uncertain. In this paper, we investigate data-driven optimization methods that are suited to dispatching power systems with uncertain balancing reserves provided by load control. Specifically, we consider a chance-constrained optimal power flow problem in which we aim to satisfy constraints that include random variables either jointly with a specified probability or individually with different risk tolerance levels. We focus on the realistic case in which we do not have full knowledge of the uncertainty distributions and compare distribution-free approaches with several stochastic optimization methods. We conduct experimental studies on the IEEE 9-bus test system assuming uncertainty in load, load-control reserve capacities, and renewable energy generation. The results show the computational efficacy of the distributionally robust approach and its flexibility in trading off between cost and robustness of solutions driven by data.
机译:可以控制电荷,如加热和冷却系统的电荷聚集,以帮助电网平衡供需,但这些资源可获得的平衡储备量不确定。在本文中,我们调查了适合用负载控制提供的不确定平衡储备来调度电力系统的数据驱动优化方法。具体地,我们考虑一个机会约束的最佳功率流问题,其中我们的目标是满足包括随机变量的约束,其中与指定的概率单独使用不同的风险容忍度。我们专注于我们没有完全了解不确定性分布的实际情况,并比较了几种随机优化方法的无分布方法。我们对IEEE 9-Bus测试系统进行实验研究,假设负载,负载控制储备能力和可再生能源产生不确定性。结果显示了分布稳健的方法的计算效果及其在数据的成本和稳健性之间交易的灵活性。

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