A Reinforcement Learning Approach for the Continuous Electricity Market of Germany: Trading from the Perspective of a Wind Park Operator
Malte Lehna, Bj\"orn Hoppmann, Ren\'e Heinrich, Christoph, Scholz

TL;DR
This paper introduces a Deep Reinforcement Learning-based trading strategy for the German intraday electricity market, demonstrating significant performance improvements over baseline methods in a simulated environment from a wind park operator's perspective.
Contribution
It presents a novel DRL approach using PPO for continuous intraday trading modeled as an MDP, with a simulation framework and a case study showing notable performance gains.
Findings
Achieved at least 45.24% improvement over baselines
Developed a simulation environment for one-minute intraday trading
Demonstrated the effectiveness of DRL in renewable energy trading scenarios
Abstract
With the rising extension of renewable energies, the intraday electricity markets have recorded a growing popularity amongst traders as well as electric utilities to cope with the induced volatility of the energy supply. Through their short trading horizon and continuous nature, the intraday markets offer the ability to adjust trading decisions from the day-ahead market or reduce trading risk in a short-term notice. Producers of renewable energies utilize the intraday market to lower their forecast risk, by modifying their provided capacities based on current forecasts. However, the market dynamics are complex due to the fact that the power grids have to remain stable and electricity is only partly storable. Consequently, robust and intelligent trading strategies are required that are capable to operate in the intraday market. In this work, we propose a novel autonomous trading approach…
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Taxonomy
TopicsElectric Power System Optimization · Energy Load and Power Forecasting · Smart Grid Energy Management
