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Distributed Optimal Power Flow with Data-Driven Sensitivity Computation

机译:具有数据驱动灵敏度计算的分布式最佳功率流量

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On account of the increasing influx of distributed energy resources into modern power grids, it is essential to develop efficient distributed control and optimization algorithms capable of providing suitable solutions with access to local data alone. This paper uses a distributed optimal power flow (OPF) algorithm based on a gradient projection method, which applies to any arbitrary grid topology, to solve the OPF problem. A multi-variable linear regression method learns the network sensitivities with historical operational data. The use of a data-driven approach avoids the requirement of accurate information on line parameters and network topology. Additionally, introduced curtailment cost factors into the objective cost function encourage the usage of renewable power sources. In conclusion, we show that the solution achieved using data-driven sensitivities provides an average optimality gap of 1.8% to the centralized OPF solution with numerical test results on a modified IEEE 69 bus system.
机译:由于将分布式能源资源的流入越来越高,开发高效的分布式控制和优化算法,能够提供合适的解决方案,可以单独访问本地数据。本文采用基于梯度投影方法的分布式最优功率流(OPF)算法,该方法适用于任何任意网格拓扑,以解决OPF问题。多变量线性回归方法使用历史操作数据来了解网络敏感性。使用数据驱动方法避免了关于线参数和网络拓扑的准确信息的要求。此外,将缩减成本因素引入客观成本函数鼓励使用可再生能源。总之,我们表明,使用数据驱动敏感性实现的解决方案为中集中的OPF解决方案提供了1.8%的平均最优性差距,在改进的IEEE 69总线系统上具有数值测试结果。

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