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A General Stochastic Optimization Framework for Convergence Bidding (2210.06543v4)

Published 12 Oct 2022 in math.OC, cs.GT, cs.LG, and eess.SP

Abstract: Convergence (virtual) bidding is an important part of two-settlement electric power markets as it can effectively reduce discrepancies between the day-ahead and real-time markets. Consequently, there is extensive research into the bidding strategies of virtual participants aiming to obtain optimal bids to submit to the day-ahead market. In this paper, we introduce a price-based general stochastic optimization framework to obtain optimal convergence bid curves. Within this framework, we develop a computationally tractable linear programming-based optimization model, which produces bid prices and volumes simultaneously. We also show that different approximations and simplifications in the general model lead naturally to state-of-the-art convergence bidding approaches, such as self-scheduling and opportunistic approaches. Our general framework also provides a straightforward way to compare the performance of these models, which is demonstrated by numerical experiments on the California (CAISO) market.

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Authors (2)
  1. Letif Mones (8 papers)
  2. Sean Lovett (4 papers)
Citations (3)

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