Toward a scalable robust security-constrained optimal power flow using a proximal projection bundle method
•evaluation of power system vulnerabilities require more accurate models.•semidefinite programming model demonstrably more accurate than common alternatives.•use of semidefinite programming relaxation creates computational challenges on GPU.•proximal projection bundle methods demonstrably effective,...
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Veröffentlicht in: | Electric power systems research 2020-12, Vol.189 (C), p.106681, Article 106681 |
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Sprache: | eng |
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Zusammenfassung: | •evaluation of power system vulnerabilities require more accurate models.•semidefinite programming model demonstrably more accurate than common alternatives.•use of semidefinite programming relaxation creates computational challenges on GPU.•proximal projection bundle methods demonstrably effective, implementable on GPU.
Robust security-constrained optimal power flow (rSCOPF) aims to find the worst-case contingencies of alternating current optimal power flow (ACOPF) in power systems. With the rise of GPU architectures on the upcoming supercomputer architectures, optimization algorithms that rely on sparse linear algebra and indefinite linear systems are becoming increasingly hard to solve efficiently (e.g. interior-point method). To address this we revisit a maximin optimization formulation of the rSCOPF and the single-level mixed-integer semidefinite programming (MISDP) reformulation, which is obtained by taking the Lagrangian relaxation of the inner minimization ACOPF problem. In this paper, we focus on the development of a proximal projection bundle method (PPBM) for solving continuous relaxation node subproblems of the MISDP problem, based primarily on the well-known alternating direction method of multipliers. Cutting planes reminiscent of bundle method ideas are also applied in coordination with updates of the proximal parameter. The cutting-plane method can generate a large number of linear inequalities, leading to a large scale but decomposable quadratic programming (QP) subproblem that is amenable to GPUs. We present the numerical results on the IEEE 30, 57, 118, and 300-bus systems by using our PBMM method. We discuss the main computational bottleneck of our method, which is the time taken to solve each iteration of a QP subproblem instance of the PPBM, and how GPU architectures can accelerate this solution process. |
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ISSN: | 0378-7796 1873-2046 |
DOI: | 10.1016/j.epsr.2020.106681 |