Data-driven battery operation for energy arbitrage using rainbow deep
reinforcement learning
- URL: http://arxiv.org/abs/2106.06061v1
- Date: Thu, 10 Jun 2021 21:27:35 GMT
- Title: Data-driven battery operation for energy arbitrage using rainbow deep
reinforcement learning
- Authors: Daniel J. B. Harrold, Jun Cao, and Zhong Fan
- Abstract summary: The model-free deep reinforcement learning algorithm Rainbow Deep Q-Networks is used to control a battery in a small microgrid.
The grid operates with its own demand and renewable generation based on a dataset collected at Keele University.
- Score: 1.8175650854482457
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As the world seeks to become more sustainable, intelligent solutions are
needed to increase the penetration of renewable energy. In this paper, the
model-free deep reinforcement learning algorithm Rainbow Deep Q-Networks is
used to control a battery in a small microgrid to perform energy arbitrage and
more efficiently utilise solar and wind energy sources. The grid operates with
its own demand and renewable generation based on a dataset collected at Keele
University, as well as using dynamic energy pricing from a real wholesale
energy market. Four scenarios are tested including using demand and price
forecasting produced with local weather data. The algorithm and its
subcomponents are evaluated against two continuous control benchmarks with
Rainbow able to outperform all other method. This research shows the importance
of using the distributional approach for reinforcement learning when working
with complex environments and reward functions, as well as how it can be used
to visualise and contextualise the agent's behaviour for real-world
applications.
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