Energy management strategy and capacity planning of an autonomous microgrid: Performance comparison of metaheuristic optimization searching techniques

Electricity generation using renewable energy-based microgrid (REM) is a prerequisite to achieve one of the objectives of sustainable development goal (SDG 7- Affordable and Clean Energy). Nonetheless, the optimum design of the REM is challenging due to fluctuating demand and intermittent nature of...

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Main Authors: Bukar, Abba Lawan, Tan, Chee Wei, Mat Said, Dalila, Mohammed Dobi, Abdulhakeem, Ayop, Razman, Alsharif, Abdulgader
Format: Article
Language:English
Published: Elsevier Ltd 2021
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Online Access:http://eprints.utm.my/id/eprint/96460/1/DalilaMatSaid2021_EnergyManagementStrategyAndCapacityPlanning.pdf
http://eprints.utm.my/id/eprint/96460/
http://dx.doi.org/10.1016/j.ref.2021.11.004
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spelling my.utm.964602022-07-24T10:40:58Z http://eprints.utm.my/id/eprint/96460/ Energy management strategy and capacity planning of an autonomous microgrid: Performance comparison of metaheuristic optimization searching techniques Bukar, Abba Lawan Tan, Chee Wei Mat Said, Dalila Mohammed Dobi, Abdulhakeem Ayop, Razman Alsharif, Abdulgader TK Electrical engineering. Electronics Nuclear engineering Electricity generation using renewable energy-based microgrid (REM) is a prerequisite to achieve one of the objectives of sustainable development goal (SDG 7- Affordable and Clean Energy). Nonetheless, the optimum design of the REM is challenging due to fluctuating demand and intermittent nature of the renewable energy sources. The optimum sizing of the REM is also associated with several non-convexities and nonlinearities, thereby precluding the application of deterministic optimization searching techniques for the sizing problem. This paper, therefore, proposes a rule-based algorithm and metaheuristic optimization searching technique (MOST) for the energy management (EM) and sizing of an autonomous microgrid, respectively. The purpose of the energy management scheme (EMS) is to provide power delivery sequence for the different components that compose the microgrid. Afterward, the EMS is optimized using MOST. For benchmarking, the paper compares the success of six different MOSTs. The simulation is performed for the climatic conditions of Maiduguri, Nigeria. The comparative results indicate that grasshopper optimization algorithm yields a better result relative to other studied MOSTs. Remarkably, it outperforms the grey wolf optimizer, the ant lion optimizer, and the particle swarm optimization by 3.0 percent, 5.8 percent, and 3.6 percent (equivalent to a cost savings of $8332.38, $4219.87, and $5144.64 from the target microgrid project). Results also indicate that the EMS adopted for the control of the microgrid has led to the implementation of a clean and affordable energy system. Moreover, the proposed microgrid configuration has minimized CO2 emission (by 92.3 %) and fuel consumption (by 92.4 %), when compared to the application of a fossil fuel-based diesel generator. Elsevier Ltd 2021 Article PeerReviewed application/pdf en http://eprints.utm.my/id/eprint/96460/1/DalilaMatSaid2021_EnergyManagementStrategyAndCapacityPlanning.pdf Bukar, Abba Lawan and Tan, Chee Wei and Mat Said, Dalila and Mohammed Dobi, Abdulhakeem and Ayop, Razman and Alsharif, Abdulgader (2021) Energy management strategy and capacity planning of an autonomous microgrid: Performance comparison of metaheuristic optimization searching techniques. Renewable Energy Focus, 40 . pp. 48-66. ISSN 1755-0084 http://dx.doi.org/10.1016/j.ref.2021.11.004
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
language English
topic TK Electrical engineering. Electronics Nuclear engineering
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Bukar, Abba Lawan
Tan, Chee Wei
Mat Said, Dalila
Mohammed Dobi, Abdulhakeem
Ayop, Razman
Alsharif, Abdulgader
Energy management strategy and capacity planning of an autonomous microgrid: Performance comparison of metaheuristic optimization searching techniques
description Electricity generation using renewable energy-based microgrid (REM) is a prerequisite to achieve one of the objectives of sustainable development goal (SDG 7- Affordable and Clean Energy). Nonetheless, the optimum design of the REM is challenging due to fluctuating demand and intermittent nature of the renewable energy sources. The optimum sizing of the REM is also associated with several non-convexities and nonlinearities, thereby precluding the application of deterministic optimization searching techniques for the sizing problem. This paper, therefore, proposes a rule-based algorithm and metaheuristic optimization searching technique (MOST) for the energy management (EM) and sizing of an autonomous microgrid, respectively. The purpose of the energy management scheme (EMS) is to provide power delivery sequence for the different components that compose the microgrid. Afterward, the EMS is optimized using MOST. For benchmarking, the paper compares the success of six different MOSTs. The simulation is performed for the climatic conditions of Maiduguri, Nigeria. The comparative results indicate that grasshopper optimization algorithm yields a better result relative to other studied MOSTs. Remarkably, it outperforms the grey wolf optimizer, the ant lion optimizer, and the particle swarm optimization by 3.0 percent, 5.8 percent, and 3.6 percent (equivalent to a cost savings of $8332.38, $4219.87, and $5144.64 from the target microgrid project). Results also indicate that the EMS adopted for the control of the microgrid has led to the implementation of a clean and affordable energy system. Moreover, the proposed microgrid configuration has minimized CO2 emission (by 92.3 %) and fuel consumption (by 92.4 %), when compared to the application of a fossil fuel-based diesel generator.
format Article
author Bukar, Abba Lawan
Tan, Chee Wei
Mat Said, Dalila
Mohammed Dobi, Abdulhakeem
Ayop, Razman
Alsharif, Abdulgader
author_facet Bukar, Abba Lawan
Tan, Chee Wei
Mat Said, Dalila
Mohammed Dobi, Abdulhakeem
Ayop, Razman
Alsharif, Abdulgader
author_sort Bukar, Abba Lawan
title Energy management strategy and capacity planning of an autonomous microgrid: Performance comparison of metaheuristic optimization searching techniques
title_short Energy management strategy and capacity planning of an autonomous microgrid: Performance comparison of metaheuristic optimization searching techniques
title_full Energy management strategy and capacity planning of an autonomous microgrid: Performance comparison of metaheuristic optimization searching techniques
title_fullStr Energy management strategy and capacity planning of an autonomous microgrid: Performance comparison of metaheuristic optimization searching techniques
title_full_unstemmed Energy management strategy and capacity planning of an autonomous microgrid: Performance comparison of metaheuristic optimization searching techniques
title_sort energy management strategy and capacity planning of an autonomous microgrid: performance comparison of metaheuristic optimization searching techniques
publisher Elsevier Ltd
publishDate 2021
url http://eprints.utm.my/id/eprint/96460/1/DalilaMatSaid2021_EnergyManagementStrategyAndCapacityPlanning.pdf
http://eprints.utm.my/id/eprint/96460/
http://dx.doi.org/10.1016/j.ref.2021.11.004
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score 13.18916