TL;DR
This paper integrates deep reinforcement learning with time-series forecasting to improve battery energy arbitrage, demonstrating significant revenue gains even with imperfect price predictions in a challenging, non-stationary market.
Contribution
It introduces a novel approach combining DRL and multi-horizon forecasting to enhance battery control strategies for energy arbitrage in complex electricity markets.
Findings
Accumulated rewards increased by 60% with forecasts.
Multiple imperfect predictors improve decision-making.
Forecasting benefits persist despite market irregularities.
Abstract
Energy arbitrage is one of the most profitable sources of income for battery operators, generating revenues by buying and selling electricity at different prices. Forecasting these revenues is challenging due to the inherent uncertainty of electricity prices. Deep reinforcement learning (DRL) emerged in recent years as a promising tool, able to cope with uncertainty by training on large quantities of historical data. However, without access to future electricity prices, DRL agents can only react to the currently observed price and not learn to plan battery dispatch. Therefore, in this study, we combine DRL with time-series forecasting methods from deep learning to enhance the performance on energy arbitrage. We conduct a case study using price data from Alberta, Canada that is characterized by irregular price spikes and highly non-stationary. This data is challenging to forecast even…
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Taxonomy
MethodsSoftmax · Attention Is All You Need
