Electric Water Heaters Management via Reinforcement Learning With Time-Delay in Isolated Microgrids
Isolated microgrids powered by renewable energy sources, battery storage, and backup diesel generators need appropriate demand response to utilize available energy and reduce diesel consumption efficiently. However, real-time demand-side management has become a significant challenge due to the commu...
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doaj-f862fdb8776d4cf98d161f8ba450ee4f2021-10-01T23:00:38ZengIEEEIEEE Access2169-35362021-01-01913256913257910.1109/ACCESS.2021.31128179537814Electric Water Heaters Management via Reinforcement Learning With Time-Delay in Isolated MicrogridsJiangjiao Xu0https://orcid.org/0000-0002-7883-705XHisham Mahmood1https://orcid.org/0000-0003-2400-7154Hao Xiao2https://orcid.org/0000-0002-9368-1495Enrico Anderlini3https://orcid.org/0000-0002-8860-8330Mohammad Abusara4https://orcid.org/0000-0002-4195-5079College of Engineering, Mathematics and Physical Sciences, Exeter University, Exeter, U.K.Department of Electrical and Computer Engineering, Florida Polytechnic University, Lakeland, FL, USAChinese Academy of Sciences (CAS), Institute of Electrical Engineering (IEE), Beijing, ChinaDepartment of Mechanical Engineering, University College London, London, U.K.College of Engineering, Mathematics and Physical Sciences, Exeter University, Exeter, U.K.Isolated microgrids powered by renewable energy sources, battery storage, and backup diesel generators need appropriate demand response to utilize available energy and reduce diesel consumption efficiently. However, real-time demand-side management has become a significant challenge due to the communication time-delay issue. In this paper, a distributed model-free strategy is proposed to manage the demand of Electric Water Heater (EWH) units. The distributed artificial intelligence technology based on Reinforcement Learning (RL) is adopted to independently control the 150 EWHs using a virtual tariff. Two different strategies are proposed to generate the virtual tariff and they are compared to each other to investigate the impact of communication time-delay to the proposed RL algorithm in real-time control scenario. The first strategy is based on measuring the battery State of Charge (SOC) in real time while the second method is based on predicting the SOC 24-hours in advance using an Artificial Neural Network (ANN). The results show that the communication time-delay greatly influences the convergence result of the first method while the second method showed high immunity. The results also show that the proposed algorithm reduces the use of energy consumption by an average of 8.91%(6.675kW) for each EWH, which symbolizes the viability of the proposed approach.https://ieeexplore.ieee.org/document/9537814/Energy storagedistributed controlreinforcement learningelectric water heatersQ-learningtime-delay |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jiangjiao Xu Hisham Mahmood Hao Xiao Enrico Anderlini Mohammad Abusara |
spellingShingle |
Jiangjiao Xu Hisham Mahmood Hao Xiao Enrico Anderlini Mohammad Abusara Electric Water Heaters Management via Reinforcement Learning With Time-Delay in Isolated Microgrids IEEE Access Energy storage distributed control reinforcement learning electric water heaters Q-learning time-delay |
author_facet |
Jiangjiao Xu Hisham Mahmood Hao Xiao Enrico Anderlini Mohammad Abusara |
author_sort |
Jiangjiao Xu |
title |
Electric Water Heaters Management via Reinforcement Learning With Time-Delay in Isolated Microgrids |
title_short |
Electric Water Heaters Management via Reinforcement Learning With Time-Delay in Isolated Microgrids |
title_full |
Electric Water Heaters Management via Reinforcement Learning With Time-Delay in Isolated Microgrids |
title_fullStr |
Electric Water Heaters Management via Reinforcement Learning With Time-Delay in Isolated Microgrids |
title_full_unstemmed |
Electric Water Heaters Management via Reinforcement Learning With Time-Delay in Isolated Microgrids |
title_sort |
electric water heaters management via reinforcement learning with time-delay in isolated microgrids |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2021-01-01 |
description |
Isolated microgrids powered by renewable energy sources, battery storage, and backup diesel generators need appropriate demand response to utilize available energy and reduce diesel consumption efficiently. However, real-time demand-side management has become a significant challenge due to the communication time-delay issue. In this paper, a distributed model-free strategy is proposed to manage the demand of Electric Water Heater (EWH) units. The distributed artificial intelligence technology based on Reinforcement Learning (RL) is adopted to independently control the 150 EWHs using a virtual tariff. Two different strategies are proposed to generate the virtual tariff and they are compared to each other to investigate the impact of communication time-delay to the proposed RL algorithm in real-time control scenario. The first strategy is based on measuring the battery State of Charge (SOC) in real time while the second method is based on predicting the SOC 24-hours in advance using an Artificial Neural Network (ANN). The results show that the communication time-delay greatly influences the convergence result of the first method while the second method showed high immunity. The results also show that the proposed algorithm reduces the use of energy consumption by an average of 8.91%(6.675kW) for each EWH, which symbolizes the viability of the proposed approach. |
topic |
Energy storage distributed control reinforcement learning electric water heaters Q-learning time-delay |
url |
https://ieeexplore.ieee.org/document/9537814/ |
work_keys_str_mv |
AT jiangjiaoxu electricwaterheatersmanagementviareinforcementlearningwithtimedelayinisolatedmicrogrids AT hishammahmood electricwaterheatersmanagementviareinforcementlearningwithtimedelayinisolatedmicrogrids AT haoxiao electricwaterheatersmanagementviareinforcementlearningwithtimedelayinisolatedmicrogrids AT enricoanderlini electricwaterheatersmanagementviareinforcementlearningwithtimedelayinisolatedmicrogrids AT mohammadabusara electricwaterheatersmanagementviareinforcementlearningwithtimedelayinisolatedmicrogrids |
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