Multi-agent system for microgrids: design, optimization and performance

被引:0
作者
Khadija Tazi
Fouad Mohamed Abbou
Farid Abdi
机构
[1] Sidi Mohamed Ben Abdellah University,Signal, System and Components Laboratory, FST
[2] Al Akhawayn University in Ifrane,School of Science and Engineering
来源
Artificial Intelligence Review | 2020年 / 53卷
关键词
Multi-agent systems; Microgrid; Renewable energy sources; Optimization and learning algorithms; Consensus; Performance indicators;
D O I
暂无
中图分类号
学科分类号
摘要
Smart grids are considered a promising alternative to the existing power grid, combining intelligent energy management with green power generation. Decomposed further into microgrids, these small-scaled power systems increase control and management efficiency. With scattered renewable energy resources and loads, multi-agent systems are a viable tool for controlling and improving the operation of microgrids. They are autonomous systems, where agents interact together to optimize decisions and reach system objectives. This paper presents an overview of multi-agent systems for microgrid control and management. It discusses design elements and performance issues, whereby various performance indicators and optimization algorithms are summarized and compared in terms of convergence time and performance in achieving system objectives. It is found that Particle Swarm Optimization has a good convergence time, so it is combined with other algorithms to address optimization issues in microgrids. Further, information diffusion and consensus algorithms are explored, and according to the literature, many variants of average-consensus algorithm are used to asynchronously reach an equilibrium. Finally, multi-agent system for multi-microgrid service restoration is discussed. Throughout the paper, challenges and research gaps are highlighted in each section as an opportunity for future work.
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页码:1233 / 1292
页数:59
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  • [1] Abdel-Raouf O(2013)A survey of harmony search algorithm Int J Comput Appl 70 17-26
  • [2] Metwally MAB(2017)Multi-agent oriented solution for forecasting-based control strategy with load priority of microgrids in an island mode—case study: tunisian petroleum platform Electr Power Syst Res 152 411-423
  • [3] Abidi MG(2012)Overview of artificial bee colony (ABC) algorithm and its applications IEEE Trans Power Syst 1 2-675
  • [4] Abu-Mouti FS(2016)Economic dispatch using chaotic bat algorithm Energy 96 666-21
  • [5] El-Hawary ME(2014)Nature-inspired algorithms: state-of-art, problems and prospects Int J Comput Appl 100 14-1290
  • [6] Adarsh BR(2016)Distributed architecture for agents-based energy negotiation in solar powered microgrids Concurr Comput 28 1275-207
  • [7] Raghunathan T(2010)Analysis of particle swarm optimization algorithm Comput Inf Sci 8076 193-8
  • [8] Jayabarathi T(2013)A Principled Approach for Smart Microgrids Simulation using MAS. MATES LNAI 6 1-619
  • [9] Yang X-S(2013)An intelligent particle swarm optimization model based on multi-agent system Afr J Comput ICT 5 607-13
  • [10] Agarwal P(2017)A novel cloud-based platform for implementation of oblivious power routing for clusters of microgrids IEEE Access 10 1-2498