A Data-Driven Convergence Bidding Strategy Based on Reverse Engineering of Market Participants' Performance: A Case of California ISO
Ehsan Samani, Mahdi Kohansal, Hamed Mohsenian-Rad

TL;DR
This paper analyzes real-world convergence bidding strategies in the California ISO electricity market, identifies existing strategies through data clustering, and proposes a new strategy that can increase profits by over 40%.
Contribution
It introduces a data-driven reverse engineering approach to characterize market strategies and develops a novel convergence bidding strategy outperforming existing methods.
Findings
Identified three main clusters of CB strategies in California ISO.
Uncovered a common real-world strategy not matching existing literature.
Proposed strategy increases net profit by over 40% in case studies.
Abstract
Convergence bidding, a.k.a., virtual bidding, has been widely adopted in wholesale electricity markets in recent years. It provides opportunities for market participants to arbitrage on the difference between the day-ahead market locational marginal prices and the real-time market locational marginal prices. Given the fact that convergence bids (CBs) have a significant impact on the operation of electricity markets, it is important to understand how market participants strategically select their CBs in real-world. We address this open problem with focus on the electricity market that is operated by the California ISO. In this regard, we use the publicly available electricity market data to learn, characterize, and evaluate different types of convergence bidding strategies that are currently used by market participants. Our analysis includes developing a data-driven reverse engineering…
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