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A laplacian-based approach for finding near globally optimal solutions to OPF problems

机译:基于拉普拉斯的方法来寻找OPF问题的近乎全球最优的解决方案

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A semidefinite programming (SDP) relaxation globally solves many optimal power flow (OPF) problems. For other OPF problems where the SDP relaxation only provides a lower bound on the objective value rather than the globally optimal decision variables, recent literature has proposed a penalization approach to find feasible points that are often nearly globally optimal. A disadvantage of this penalization approach is the need to specify penalty parameters. This paper presents an alternative approach that algorithmically determines a penalization appropriate for many OPF problems. The proposed approach constrains the generation cost to be close to the lower bound from the SDP relaxation. The objective function is specified using iteratively determined weights for a Laplacian matrix. This approach yields feasible points to the OPF problem that are guaranteed to have objective values near the global optimum due to the constraint on generation cost. The proposed approach is demonstrated on both small OPF problems and a variety of large test cases representing portions of European power systems.
机译:半定性编程(SDP)放宽总体上解决了许多最佳潮流(OPF)问题。对于SDP松弛仅提供目标值下限而不是全局最优决策变量的其他OPF问题,最近的文献提出了一种惩罚方法来查找通常几乎是全局最优的可行点。这种惩罚方法的缺点是需要指定惩罚参数。本文提出了一种替代方法,该算法可通过算法确定适用于许多OPF问题的惩罚。所提出的方法将发电成本约束为接近SDP松弛的下限。使用拉普拉斯矩阵的迭代确定的权重指定目标函数。这种方法为OPF问题提供了可行的要点,由于发电成本的限制,这些可行的要点可以保证其目标值接近全局最优值。在小的OPF问题和代表欧洲电力系统一部分的各种大型测试案例中均论证了所提出的方法。

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