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Betting vs. Trading: Learning a Linear Decision Policy for Selling Wind Power and Hydrogen

Abstract

We develop a bidding strategy for a hybrid power plant combining co-located wind turbines and an electrolyzer, constructing a price-quantity bidding curve for the day-ahead electricity market while optimally scheduling hydrogen production. Without risk management, single imbalance pricing leads to an all-or-nothing trading strategy, which we term “betting”. To address this, we propose a data-driven, pragmatic approach that leverages contextual information to train linear decision policies for both power bidding and hydrogen scheduling. By introducing explicit risk constraints to limit imbalances, we move from the all-or-nothing approach to a “trading” strategy, where the plant diversifies its power trading decisions. We evaluate the model under three scenarios: when the plant is either conditionally allowed, always allowed, or not allowed to buy power from the grid, which impacts the green certification of the hydrogen produced. Comparing our data-driven strategy with an oracle model that has perfect foresight, we show that the risk-constrained, data-driven approach delivers satisfactory performance.

Funding source: We gratefully acknowledge the Danish Energy Technology Development and Demonstration Programme (EUDP) for supporting this research through the ViPES2X project (Grant number: 640222-496237), and the Innovation Fund Denmark for supporting our work through the PtX Markets project (Grant number: 150-00001B).
Related subjects: Policy & Socio-Economics
Countries: Denmark
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/content/journal7396
2025-07-23
2025-12-05
/content/journal7396
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