Abstract:
This paper proposes a two-level distributed algorithmic framework for solving the AC optimal power flow (OPF) problem with convergence guarantees. The presence of highly ...Show MoreMetadata
Abstract:
This paper proposes a two-level distributed algorithmic framework for solving the AC optimal power flow (OPF) problem with convergence guarantees. The presence of highly nonconvex constraints in OPF poses significant challenges to distributed algorithms based on the alternating direction method of multipliers (ADMM). In particular, convergence is not provably guaranteed for nonconvex network optimization problems like AC OPF. In order to overcome this difficulty, we propose a new distributed reformulation for AC OPF and a two-level ADMM algorithm that goes beyond the standard framework of ADMM. We establish the global convergence and iteration complexity of the proposed algorithm under mild assumptions. Extensive numerical experiments over some largest test cases from NESTA and PGLib-OPF (up to 30 000-bus systems) demonstrate advantages of the proposed algorithm over existing ADMM variants in terms of convergence, scalability, and robustness. Moreover, under appropriate parallel implementation, the proposed algorithm exhibits fast convergence comparable to or even better than the state-of-the-art centralized solver.
Published in: IEEE Transactions on Power Systems ( Volume: 36, Issue: 6, November 2021)
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- IEEE Keywords
- Index Terms
- Global Convergence ,
- Convergence Guarantees ,
- Optimal Power Flow ,
- AC Optimal Power Flow ,
- Global Convergence Guarantees ,
- Non-convex Problem ,
- Distributed Algorithm ,
- Algorithmic Framework ,
- Mild Assumptions ,
- Non-convex Constraints ,
- Iteration Complexity ,
- Extensive Numerical Experiments ,
- Upper Bound ,
- Parallelization ,
- Proof Of Theorem ,
- Feasible Solution ,
- Local Agencies ,
- Quadratic Programming ,
- Penalty Parameter ,
- Stationary Solution ,
- Second-order Cone Programming ,
- Dual Variables ,
- Local Convergence ,
- Generation Cost ,
- Slack Variables ,
- Semidefinite Programming ,
- Nonlinear Solver ,
- Duality Gap ,
- Sequential Quadratic Programming
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Global Convergence ,
- Convergence Guarantees ,
- Optimal Power Flow ,
- AC Optimal Power Flow ,
- Global Convergence Guarantees ,
- Non-convex Problem ,
- Distributed Algorithm ,
- Algorithmic Framework ,
- Mild Assumptions ,
- Non-convex Constraints ,
- Iteration Complexity ,
- Extensive Numerical Experiments ,
- Upper Bound ,
- Parallelization ,
- Proof Of Theorem ,
- Feasible Solution ,
- Local Agencies ,
- Quadratic Programming ,
- Penalty Parameter ,
- Stationary Solution ,
- Second-order Cone Programming ,
- Dual Variables ,
- Local Convergence ,
- Generation Cost ,
- Slack Variables ,
- Semidefinite Programming ,
- Nonlinear Solver ,
- Duality Gap ,
- Sequential Quadratic Programming
- Author Keywords