English

Efficient Unit Commitment Constraint Screening under Uncertainty

Systems and Control 2024-08-12 v1 Systems and Control Optimization and Control

Abstract

Day-ahead unit commitment (UC) is a fundamental task for power system operators, where generator statuses and power dispatch are determined based on the forecasted nodal net demands. The uncertainty inherent in renewables and load forecasting requires the use of techniques in optimization under uncertainty to find more resilient and reliable UC solutions. However, the solution procedure of such specialized optimization may differ from the deterministic UC. The original constraint screening approach can be unreliable and inefficient for them. Thus, in this work we design a novel screening approach under the forecasting uncertainty. Our approach accommodates such uncertainties in both chance-constrained and robust forms, and can greatly reduce the UC instance size by screening out non-binding constraints. To further improve the screening efficiency, we utilize the multi-parametric programming theory to convert the underlying optimization problem of the screening model to a piecewise affine function. A multi-area screening approach is further developed to handle the computational intractability issues for large-scale problems. We verify the proposed method's performance on a variety of UC setups and uncertainty situations. Experimental results show that our robust screening procedure can guarantee better feasibility, while the CC screening can produce more efficient reduced models. The average screening time for a single line flow constraint can be accelerated by 71.2X to 131.3X using our proposed method.

Keywords

Cite

@article{arxiv.2408.05185,
  title  = {Efficient Unit Commitment Constraint Screening under Uncertainty},
  author = {Xuan He and Honglin Wen and Yufan Zhang and Yize Chen and Danny H. K. Tsang},
  journal= {arXiv preprint arXiv:2408.05185},
  year   = {2024}
}

Comments

In submission, 11 pages, 10 figures