Optimizing a domestic battery and solar photovoltaic system with deep reinforcement learning
Kell, Alexander J. M., McGough, A. Stephen, Forshaw, Matthew
–arXiv.org Artificial Intelligence
A lowering in the cost of batteries and solar PV systems has led to a high uptake of solar battery home systems. In this work, we use the deep deterministic policy gradient algorithm to optimise the charging and discharging behaviour of a battery within such a system. Our approach outputs a continuous action space when it charges and discharges the battery, and can function well in a stochastic environment. We show good performance of this algorithm by lowering the expenditure of a single household on electricity to almost \$1AUD for large batteries across selected weeks within a year.
arXiv.org Artificial Intelligence
Sep-10-2021
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