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Title: Integrated stochastic optimal self-scheduling for two-settlement electricity markets
Authors: Pan, K 
Guan, Y
Issue Date: May-2022
Source: INFORMS journal on computing, May-June 2022, v. 34, no. 3, p. 1819-1840
Abstract: The complexity of current electricity wholesale markets and the increased volatility of electricity prices because of the intermittent nature of renewable generation make independent power producers (IPPs) face significant challenges to submit offers. This challenge increases for those owning traditional coal-fired thermal generators and renewable generation. In this paper, an integrated stochastic optimal strategy is proposed for an IPP using the self-scheduling approach through its participation in both day-ahead and realtime markets (i.e., two-settlement electricity markets) as a price taker. In the proposed approach, the IPP submits an offer for all periods to the day-aheadmarket for which amultistage stochastic programming setting is explored for providing real-time market offers for each period as a recourse. This strategy has the advantage of achieving overall maximum profits for both markets in the given operational time horizon. Such a strategy is theoretically proved to bemore profitable than alternative self-scheduling strategies as it takes advantage of the continuously realized scenario information of the renewable energy output and real-time prices over time. To improve computational efficiency, we explore polyhedral structures to derive strong valid inequalities, including convex hull descriptions for certain special cases, thus strengthening the formulation of our proposed model. Polynomial-time separation algorithms are then established for the derived exponentialsized inequalities to speed up the branch-and-cut process. Finally, both numerical and real case studies demonstrate the potential of the proposed strategy.
Keywords: Innovative formulation
Renewable generation
Self-scheduling
Stochastic optimization
Publisher: INFORMS
Journal: INFORMS journal on computing 
ISSN: 1091-9856
EISSN: 1526-5528
DOI: 10.1287/ijoc.2021.1150
Rights: © 2022 INFORMS
This is the accepted manuscript of the following article: Integrated Stochastic Optimal Self-Scheduling for Two-Settlement Electricity Markets. Kai Pan and Yongpei Guan. INFORMS Journal on Computing 2022 34:3, 1819-1840, which has been published in final form at https://doi.org/10.1287/ijoc.2021.1150.
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