Continuous Switch Model and Heuristics for Mixed-Integer Problems in Power Systems
Aayushya Agarwal, Amritanshu Pandey, Larry Pillegi

TL;DR
This paper introduces a circuit-based continuous switch model to transform complex mixed-integer nonlinear power system problems into more tractable NLP problems, enabling efficient solutions for large-scale networks.
Contribution
It presents a novel circuit-inspired continuous switch model and homotopy methods that improve the solvability and convergence of large-scale power system optimization problems.
Findings
Achieves robust convergence for systems with over 70,000 buses
Outperforms industry-standard tools in solution quality and speed
Provides a tight relaxation of the original MINLP problem
Abstract
Many power systems operation and planning computations (e.g., transmission and generation switching and placement) solve a mixed-integer nonlinear problem (MINLP) with binary variables representing the decision to connect devices to the grid. Binary variables with nonlinear AC network constraints make this problem NP-hard. For large real-world networks, obtaining an AC feasible optimum solution for these problems is computationally challenging and often unattainable with state-of-the-art tools today. In this work, we map the MINLP decision problem into a set of equivalent circuits by representing binary variables with a circuit-based continuous switch model. We characterize the continuous switch model by a controlled nonlinear impedance that more closely mimics the physical behavior of a real-world switch. This mapping effectively transforms the MINLP problem into an NLP problem. We…
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Taxonomy
TopicsOptimal Power Flow Distribution · Power System Optimization and Stability · Electric Power System Optimization
