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Rolling intrinsic for battery valuation in day-ahead and intraday markets

Rolling intrinsic for battery valuation in day-ahead and intraday markets ArXiv ID: 2510.01956 “View on arXiv” Authors: Daniel Oeltz, Tobias Pfingsten Abstract Battery Energy Storage Systems (BESS) are a cornerstone of the energy transition, as their ability to shift electricity across time enables both grid stability and the integration of renewable generation. This paper investigates the profitability of different market bidding strategies for BESS in the Central European wholesale power market, focusing on the day-ahead auction and intraday trading at EPEX Spot. We employ the rolling intrinsic approach as a realistic trading strategy for continuous intraday markets, explicitly incorporating bid–ask spreads to account for liquidity constraints. Our analysis shows that multi-market bidding strategies consistently outperform single-market participation. Furthermore, we demonstrate that maximum cycle limits significantly affect profitability, indicating that more flexible strategies which relax daily cycling constraints while respecting annual limits can unlock additional value. ...

October 2, 2025 · 2 min · Research Team

Deep reinforcement learning with positional context for intraday trading

Deep reinforcement learning with positional context for intraday trading ArXiv ID: 2406.08013 “View on arXiv” Authors: Unknown Abstract Deep reinforcement learning (DRL) is a well-suited approach to financial decision-making, where an agent makes decisions based on its trading strategy developed from market observations. Existing DRL intraday trading strategies mainly use price-based features to construct the state space. They neglect the contextual information related to the position of the strategy, which is an important aspect given the sequential nature of intraday trading. In this study, we propose a novel DRL model for intraday trading that introduces positional features encapsulating the contextual information into its sparse state space. The model is evaluated over an extended period of almost a decade and across various assets including commodities and foreign exchange securities, taking transaction costs into account. The results show a notable performance in terms of profitability and risk-adjusted metrics. The feature importance results show that each feature incorporating contextual information contributes to the overall performance of the model. Additionally, through an exploration of the agent’s intraday trading activity, we unveil patterns that substantiate the effectiveness of our proposed model. ...

June 12, 2024 · 2 min · Research Team

Fast and Furious: A High-Frequency Analysis of Robinhood Users' Trading Behavior

Fast and Furious: A High-Frequency Analysis of Robinhood Users’ Trading Behavior ArXiv ID: 2307.11012 “View on arXiv” Authors: Unknown Abstract We analyze Robinhood (RH) investors’ trading reactions to intraday hourly and overnight price changes. Contrasting with recent studies focusing on daily behaviors, we find that RH users strongly favor big losers over big gainers. We also uncover that they react rapidly, typically within an hour, when acquiring stocks that exhibit extreme negative returns. Further analyses suggest greater (lower) attention to overnight (intraday) movements and exacerbated behaviors post-COVID-19 announcement. Moreover, trading attitudes significantly vary across firm size and industry, with a more contrarian strategy towards larger-cap firms and a heightened activity on energy and consumer discretionary stocks. ...

July 20, 2023 · 2 min · Research Team