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Deep Reinforcement Learning for Long Term Hydropower Production Scheduling

Abstract

We explore the use of deep reinforcement learning to provide strategies for long term scheduling of hydropower production. We consider a use-case where the aim is to optimise the yearly revenue given week-by-week inflows to the reservoir and electricity prices. The challenge is to decide between immediate water release at the spot price of electricity and storing the water for later power production at an unknown price, given constraints on the system. We successfully train a soft actor-critic algorithm on a simplified scenario with historical data from the Nordic power market. The presented model is not ready to substitute traditional optimisation tools but demonstrates the complementary potential of reinforcement learning in the data-rich field of hydropower scheduling.
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Category

Academic chapter

Language

English

Author(s)

Affiliation

  • SINTEF Digital / Mathematics and Cybernetics
  • SINTEF Energy Research / Energisystemer

Year

2020

Publisher

IEEE (Institute of Electrical and Electronics Engineers)

Book

2020 International Conference on Smart Energy Systems and Technologies - SEST

ISBN

9781728147017

View this publication at Norwegian Research Information Repository