Grid-SiPhyR: An end-to-end learning to optimize framework for
combinatorial problems in power systems
- URL: http://arxiv.org/abs/2206.06789v3
- Date: Wed, 24 May 2023 21:27:45 GMT
- Title: Grid-SiPhyR: An end-to-end learning to optimize framework for
combinatorial problems in power systems
- Authors: Rabab Haider and Anuradha M. Annaswamy
- Abstract summary: SiPhyR is a physics-informed machine learning framework for end-to-end learning to optimize for problems.
We demonstrate the effectiveness of SiPhyR on an emerging paradigm for clean energy systems.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Mixed integer problems are ubiquitous in decision making, from discrete
device settings and design parameters, unit production, and on/off or yes/no
decision in switches, routing, and social networks. Despite their prevalence,
classical optimization approaches for combinatorial optimization remain
prohibitively slow for fast and accurate decision making in dynamic and
safety-critical environments with hard constraints. To address this gap, we
propose SiPhyR (pronounced: cipher), a physics-informed machine learning
framework for end-to-end learning to optimize for combinatorial problems.
SiPhyR employs a novel physics-informed rounding approach to tackle the
challenge of combinatorial optimization within a differentiable framework that
has certified satisfiability of safety-critical constraints. We demonstrate the
effectiveness of SiPhyR on an emerging paradigm for clean energy systems:
dynamic reconfiguration, where the topology of the electric grid and power flow
are optimized so as to maintain a safe and reliable power grid in the presence
of intermittent renewable generation. Offline training of the unsupervised
framework on representative load and generation data makes dynamic decision
making via the online application of Grid-SiPhyR computationally feasible.
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