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Novel Approach Towards Global Optimality of Optimal Power Flow Using Quadratic Convex Optimization

机译:使用二次凸优化的最优功率流动全局最优性的新方法

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Optimal Power Flow (OPF) can be modeled as a nonconvex Quadratically Constrained Quadratic Program (QCQP). Our purpose is to solve OPF to global optimality. To this end, we specialize the Mixed-Integer Quadratic Convex Reformulation method (MIQCR) to (OPF). This is a method in two steps. First, a Semi-Definite Programming (SDP) relaxation of (OPF) is solved. Then the optimal dual variables of this relaxation are used to reformulate OPF into an equivalent new quadratic program, where all the non-convexity is moved to one additional constraint. In the second step, this reformulation is solved within a branch-and-bound algorithm, where at each node a quadratic and convex relaxation of the reformulated problem, obtained by relaxing the non-convex added constraint, is solved. The key point of our approach is that the lower bound at the root node of the branch-and-bound tree is equal to the SDP relaxation value. We test this method on several OPF cases, from two-bus networks to more-than-a-thousand-buses networks from the MAT-POWER repository. Our first results are very encouraging.
机译:最佳功率流(OPF)可以建模为非凸显二次约束的二次程序(QCQP)。我们的目的是解决OPF到全球最优性。为此,我们专业为混合整数二次凸重新制定方法(MIQCR)至(OPF)。这是两个步骤的方法。首先,解决了(OPF)的半确定编程(SDP)放松。然后,这种放松的最佳双变量用于将OPF重构为等同的新型程序,其中所有非凸性被移动到一个附加约束。在第二步中,该重构在分支和绑定算法内解决,其中通过放松非凸增加的约束而获得的重新突出的问题的二次和凸出的重新突出的凸出放松。我们的方法的关键点是分支和边界树的根节点处的下限等于SDP松弛值。我们在几个OPF案例中测试此方法,从两巴士网络到来自Mat-Power Repository的多于千道网络。我们的第一个结果非常令人鼓舞。

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