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      Multi-agent Deep Reinforcement Learning for Zero Energy Communities

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          Abstract

          Advances in renewable energy generation and introduction of the government targets to improve energy efficiency gave rise to a concept of a Zero Energy Building (ZEB). A ZEB is a building whose net energy usage over a year is zero, i.e., its energy use is not larger than its overall renewables generation. A collection of ZEBs forms a Zero Energy Community (ZEC). This paper addresses the problem of energy sharing in such a community. This is different from previously addressed energy sharing between buildings as our focus is on the improvement of community energy status, while traditionally research focused on reducing losses due to transmission and storage, or achieving economic gains. We model this problem in a multi-agent environment and propose a Deep Reinforcement Learning (DRL) based solution. Each building is represented by an intelligent agent that learns over time the appropriate behaviour to share energy. We have evaluated the proposed solution in a multi-agent simulation built using osBrain. Results indicate that with time agents learn to collaborate and learn a policy comparable to the optimal policy, which in turn improves the ZEC's energy status. Buildings with no renewables preferred to request energy from their neighbours rather than from the supply grid.

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          Reinforcement Learning for RoboCup Soccer Keepaway

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            A cooperative net zero energy community to improve load matching

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              A centralized optimal energy management system for microgrids

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                Author and article information

                Journal
                08 October 2018
                Article
                1810.03679
                d4d06d72-2f02-4781-8723-06c56980ceae

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                97R40
                Submitted to AICS 2018 http://aics2018.scss.tcd.ie/cfp.html
                cs.LG cs.AI cs.MA stat.ML

                Machine learning,Artificial intelligence
                Machine learning, Artificial intelligence

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