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Problem-Driven Scenario Reduction Framework for Power System Stochastic Operation

Authors :
Zhuang, Yingrui
Cheng, Lin
Qi, Ning
Almassalkhi, Mads R.
Liu, Feng
Publication Year :
2024

Abstract

Scenario reduction (SR) aims to identify a small yet representative scenario set to depict the underlying uncertainty, which is critical to scenario-based stochastic optimization (SBSO) of power systems. Existing SR techniques commonly aim to achieve statistical approximation to the original scenario set. However, SR and SBSO are commonly considered into two distinct and decoupled processes, which cannot guarantee a superior approximation of the original optimality. Instead, this paper incorporates the SBSO problem structure into the SR process and introduces a novel problem-driven scenario reduction framework. Specifically, we transform the original scenario set in distribution space into the decision applicability between scenarios in problem space. Subsequently, the SR process, embedded by a distinctive problem-driven distance metric, is rendered as a mixed-integer linear programming formulation to obtain the representative scenario set while minimizing the optimality gap. Furthermore, ex-ante and ex-post problem-driven evaluation indices are proposed to evaluate the performance of SR. A two-stage stochastic economic dispatch problem with renewable generation and energy storage validates the effectiveness of the proposed framework. Numerical experiments demonstrate that the proposed framework significantly outperforms existing SR methods by identifying salient (e.g., worst-case) scenarios, and achieving an optimality gap of less than 0.1% within acceptable computation time.<br />Comment: This is a manuscript submitted to IEEE Transactions on Power Systems. This manuscript contains 10 pages, 5 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.07810
Document Type :
Working Paper