Low-rank solution of convex relaxation for optimal power flow problem

S. Sojoudi, Ramtin Madani, J. Lavaei
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引用次数: 18

Abstract

This paper is concerned with solving the nonconvex problem of optimal power flow (OPF) via a convex relaxation based on semidefinite programming (SDP). We have recently shown that the SDP relaxation has a rank-1 solution from which the global solution of OPF can be found, provided the power network has no cycle. The present paper aims to provide a better understating of the SDP relaxation for cyclic networks. To this end, an upper bound is derived on rank of the minimum-rank solution of the SDP relaxation, which depends only on the topology of the power network. This bound is expected to be very small in practice due to the mostly planar structure of real-world networks. A heuristic method is then proposed to enforce the low-rank solution of the SDP relaxation to become rank-1. To elucidate the efficacy of this technique, it is proved that this method works for weakly-cyclic networks with cycles of size 3. Although this paper mainly focuses on OPF, the results developed here can be applied to several OPF-based emerging optimizations for future electrical grids.
最优潮流问题凸松弛的低秩解
研究了基于半定规划(SDP)的凸松弛法求解最优潮流的非凸问题。我们最近已经证明,在电网没有循环的情况下,SDP松弛有一个秩1解,从中可以找到OPF的全局解。本文旨在更好地理解循环网络的SDP松弛。为此,导出了仅依赖于电网拓扑结构的SDP松弛最小秩解的秩上界。由于现实世界的网络大多是平面结构,因此这个界限在实践中预计会非常小。然后提出了一种启发式方法来强制SDP松弛的低秩解成为秩1。为了说明该技术的有效性,证明了该方法适用于周期大小为3的弱循环网络。虽然本文主要关注的是OPF,但这里开发的结果可以应用于未来电网的几种基于OPF的新兴优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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