A Multi-Layer Data-Driven Security Constrained Unit Commitment Approach with Feasibility Compliance

Author:

Feliachi Ali,Iqbal TalhaORCID,Choudhry Muhammad,Ul Banna Hasan

Abstract

Security constrained unit commitment is an essential part of the day-ahead energy markets. The presence of discrete and continuous variables makes it a complex, mixed-integer, and time-hungry optimization problem. Grid operators solve unit commitment problems multiple times daily with only minor changes in the operating conditions. Solving a large-scale unit commitment problem requires considerable computational effort and a reasonable time. However, the solution time can be improved by exploiting the fact that the operating conditions do not change significantly in the day-ahead market clearing. Therefore, in this paper, a novel multi-layer data-driven approach is proposed, which significantly improves the solution time (90% time-reduction on average for the three studied systems). The proposed approach not only provides a near-optimal solution (<1% optimality gap) but also ensures that it is feasible for the stable operation of the system (0% infeasible predicted solutions). The efficacy of the developed algorithm is demonstrated through numerical simulations on three test systems, namely a 4-bus system and the IEEE 39-bus and 118-bus systems, and promising results are obtained.

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

Reference33 articles.

1. (2022, September 09). Electric Power Markets, Available online: https://www.ferc.gov/electric-power-markets.

2. (2022, May 12). U.S. Department of Energy, Electric Power Annual 2020, Energy Information Administration (EIA), March 2022, Available online: https://www.eia.gov/electricity/annual/pdf/epa.pdf.

3. Learning to Solve Large-Scale Security-Constrained Unit Commitment Problems;Xavier;INFORMS J. Comput.,2020

4. A method for planning economic unit commitment and maintenance of thermal power systems;Hara;IEEE Trans. Power App. Syst.,1966

5. Unit commitment;Kerr;IEEE Trans. Power App. Syst.,1966

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