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Publication Detail
Reinforcement Learning for Electricity Network Operation
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Publication Type:Journal article
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Publication Sub Type:Rapid Communication
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Authors:Kelly A, O'Sullivan A, Mars PD, Marot A
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Publication date:16/03/2020
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Journal:Arxiv
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Status:Unpublished
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Keywords:eess.SP, eess.SP, cs.LG, stat.ML, I.2
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Author URL:
Abstract
This paper presents the background material required for the Learning to Run
Power Networks Challenge. The challenge is focused on using Reinforcement
Learning to train an agent to manage the real-time operations of a power grid,
balancing power flows and making interventions to maintain stability. We
present an introduction to power systems targeted at the machine learning
community and an introduction to reinforcement learning targeted at the power
systems community. This is to enable and encourage broader participation in the
challenge and collaboration between these two communities.
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