Structure-Aware Commitment Reduction for Network-Constrained Unit Commitment with Solver-Preserving Guarantees
Guangwen Wang, Jiaqi Wu, Yang Weng, Baosen Zhang

TL;DR
This paper introduces a structure-aware, solver-compatible dimensionality reduction method for network-constrained unit commitment, leveraging structural regularities and LLM guidance to significantly speed up solutions while preserving optimality.
Contribution
It proposes a novel framework that identifies and fixes a sparse set of commitment variables based on structural regularities, reducing computational complexity without sacrificing feasibility or optimality.
Findings
Achieves order-of-magnitude speedups on large-scale cases.
Reduces branch-and-bound nodes and solution time.
Maintains near-optimal objective values.
Abstract
The growing number of individual generating units, hybrid resources, and security constraints has significantly increased the computational burden of network-constrained unit commitment (UC), where most solution time is spent exploring branch-and-bound trees over unit-hour binary variables. To reduce this combinatorial burden, recent approaches have explored learning-based guidance to assist commitment decisions. However, directly using tools such as large language models (LLMs) to predict full commitment schedules is unreliable, as infeasible or inconsistent binary decisions can violate inter-temporal constraints and degrade economic optimality. This paper proposes a solver-compatible dimensionality reduction framework for UC that exploits structural regularities in commitment decisions. Instead of generating complete schedules, the framework identifies a sparse subset of structurally…
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