A reinforcement learning approach using Markov decision processes for battery energy storage control within a smart contract framework
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hdl:2117/407519
Document typeArticle
Defense date2024-05-10
PublisherElsevier
Rights accessRestricted access - publisher's policy
(embargoed until 2026-03)
This work is protected by the corresponding intellectual and industrial property rights.
Except where otherwise noted, its contents are licensed under a Creative Commons license
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Attribution-NonCommercial-NoDerivs 4.0 International
Abstract
With the increasing penetration of renewable energy sources (RESs), the necessity for employing smart methods to control and manage energy has become undeniable. This study introduces a real-time energy management system based on a multi-agent system supervised by a smart contract, employing a bottom-up approach for a grid-connected DC micro-grid equipped with solar photovoltaic panels (PV), wind turbines (WT), microturbines (MT), and battery energy storage (BES). Each unit is controlled and managed through a distributed decision-making structure. The BES agent is governed by an intelligent structure based on a reinforcement learning model. To facilitate interaction and coordination among agents, a tendering process is employed, where each agent, under its supervised control structure, presents its offer for the tendered item at each time period. The tendering organization allocates demand using the first-price sealed-bid algorithm among bidders to optimize energy cost in the Microgrid. The proposed approach offers a real-time intelligent system capable of ensuring fault tolerance, stability, and reliability in the Microgrid. The main achievement of this study is the development of a robust real-time energy management system that integrates various renewable energy sources and battery storage while ensuring efficient operation and resilience in the face of faults or disruptions.
CitationSelseleh Jonban, M. [et al.]. A reinforcement learning approach using Markov decision processes for battery energy storage control within a smart contract framework. "Journal of energy storage", 10 Maig 2024, vol. 86, part B, núm. article 111342.
ISSN2352-1538
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