journal article Open Access Feb 10, 2025

Economic Optimal Dispatch of Networked Hybrid Renewable Energy Microgrid

Systems Vol. 13 No. 2 pp. 109 · MDPI AG
View at Publisher Save 10.3390/systems13020109
Abstract
With the increasing importance of renewable energy in the global energy transition, the microgrid has attracted wide attention as an efficient and flexible power solution. However, there are some problems in current networked microgrid systems, such as complex structure, numerous parameters, and significant fluctuations in generation capacity. Aiming at the parameter optimization problem of networked microgrids integrating multiple energy generation and energy storage forms, this paper constructs a multi-objective microgrid structure decision-making model. The model comprehensively considers operation and maintenance costs, fuel costs, power abandonment and lack-of-power punishment costs, power transaction costs, and pollution treatment costs, aiming to realize the joint optimization of economic benefits and environmental sustainability. Furthermore, an improved multi-objective particle swarm optimization (IMOPSO) algorithm is designed to solve the model. In order to verify the effectiveness of the model in the scenarios of distributed energy and energy load fluctuation, this paper uses the scenario analysis method to realize the data analysis of 2000 scenarios, and obtains four typical deterministic scenarios for simulation experiments. The experimental results show that, compared with the traditional microgrid, when the capacity configuration is determined by the number of wind driven generators, photovoltaic panels, diesel generators, and batteries being 5, 189, 2, and 107, respectively, the proposed net-connected economic dispatch optimization method based on hybrid renewable energy in this paper reduces the generation cost and environmental cost of the system by 96.76 ¥ to 428.19 ¥, and keeps the load loss rate stable between 0.34% and 4.56%. The utilization rate of renewable energy has been raised to about 95%.
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References
30
[1]
Ribeiro, P.J.G., Dias, G., and Mendes, J.F.G. (2024). Decarbonizing Urban Mobility: A Methodology for Shifting Modal Shares to Achieve CO2 Reduction Targets. Sustainability, 16. 10.3390/su16167049
[2]
Mohan, H.M., and Dash, S.K. (2023). Renewable Energy-Based DC Microgrid with Hybrid Energy Management System Supporting Electric Vehicle Charging System. Systems, 11. 10.3390/systems11060273
[3]
He, J.J., Van Bossuyt, D.L., and Pollman, A. (2022). Experimental Validation of Systems Engineering Resilience Models for Islanded Microgrids. Systems, 10. 10.3390/systems10060245
[4]
Kartal "A comprehensive review of progress in sustainable development goals from energy and environment perspectives" Energy Strategy Rev. (2024) 10.1016/j.esr.2024.101550
[5]
Kim, B., and Park, H.-P. (2023). Non-Isolated Current-Fed Series Resonant Converter with Hybrid Control Algorithms for DC Microgrid. Energies, 16. 10.3390/en16166029
[6]
Khubrani, M.M., and Alam, S. (2023). Blockchain-Based Microgrid for Safe and Reliable Power Generation and Distribution: A Case Study of Saudi Arabia. Energies, 16. 10.3390/en16165963
[7]
Patsidis, A., Dyśko, A., Booth, C., Rousis, A.O., Kalliga, P., and Tzelepis, D. (2023). Digital Architecture for Monitoring and Operational Analytics of Multi-Vector Microgrids Utilizing Cloud Computing, Advanced Virtualization Techniques, and Data Analytics Methods. Energies, 16. 10.3390/en16165908
[8]
Optimization of Microgrid Dispatching by Integrating Photovoltaic Power Generation Forecast

Tianrui Zhang, Weibo Zhao, Quanfeng He et al.

Sustainability 10.3390/su17020648
[9]
Lee, J., Jung, S., Lee, Y., and Jang, G. (2023). Energy Storage Mix Optimization Based on Time Sequence Analysis Methodology for Surplus Renewable Energy Utilization. Energies, 16. 10.3390/en16166031
[10]
Dong, A., and Lee, S.-K. (2024). The Study of an Improved Particle Swarm Optimization Algorithm Applied to Economic Dispatch in Microgrids. Electronics, 13. 10.3390/electronics13204086
[11]
Ali, Z.M., Calasan, M., Aleem, S.H.E.A., Jurado, F., and Gandoman, F.H. (2023). Applications of Energy Storage Systems in Enhancing Energy Management and Access in Microgrids: A Review. Energies, 16. 10.3390/en16165930
[12]
[13]
Yu, C.K., Chen, C.Y., He, L., Tan, Z.G., and Zhong, B. (2023, January 24–26). Economic Optimal Scheduling of Microgrid Based on Improved Genetic Algorithm. Proceedings of the 2023 42nd Chinese Control Conference (CCC), Tianjin, China. 10.23919/ccc58697.2023.10240477
[14]
Huynh, D.C., Pham, H.M., Ho, L.D., Nguyen, H.V., Dunnigan, M.W., and Barbalata, C. (2024, January 25–26). Optimal Configuration of a DC Microgrid Using a Grey Wolf Optimization Algorithm. Proceedings of the 2024 7th International Conference on Green Technology and Sustainable Development (GTSD), Ho Chi Minh City, Vietnam. 10.1109/gtsd62346.2024.10674805
[15]
Luo "Optimal scheduling of a renewable based microgrid considering photovoltaic system and battery energy storage under uncertainty" J. Energy Storage (2020) 10.1016/j.est.2020.101306
[16]
Abdulmohsen "Active/reactive power management in islanded microgrids via multi-agent systems" Int. J. Electr. Power Energy Syst. (2022) 10.1016/j.ijepes.2021.107551
[17]
Imani "Demand Response Modeling in Microgrid Operation: A Review and Application for Incentive-Based and Time-Based Programs" Renew. Sustain. Energy Rev. (2018) 10.1016/j.rser.2018.06.017
[18]
Tang, G., Wu, H., Xu, Z., and Li, Z. (2023, January 12–14). Two-Stage Robust Optimization for Microgrid Dispatch with Uncertainties. Proceedings of the 2023 6th International Conference on Energy. Electrical and Power Engineering (CEEPE), Guangzhou, China. 10.1109/ceepe58418.2023.10166607
[19]
Andebili, M.R. (2022, January 10–11). Grid-Connected and Off-Grid Operation of a Microgrid Applying Fuzzy Mixed-Integer Linear Programming. Proceedings of the 2022 IEEE Power and Energy Conference at Illinois (PECI), Champaign, IL, USA.
[20]
Hojjat, M., and Ghasemi, A.A. (2024, January 25–27). Chance-Constrained Programming (CCP) Approach to Solve the Energy Management Problem in Microgrids Considering Uncertainties of Renewable Energy Resources. Proceedings of the 2024 International Conference on Electrical, Computer and Energy Technologies (ICECET), Sydney, Australia. 10.1109/icecet61485.2024.10698265
[21]
Liu, Y., and He, J. (2024, January 26–28). Research on Multi-objective Collaborative Optimization Strategies for Multi microgrid Systems Based on Data Feature Analysis. Proceedings of the 2024 7th International Conference on Energy, Electrical and Power Engineering (CEEPE), Yangzhou, China. 10.1109/ceepe62022.2024.10586421
[22]
Ding "Typical sequential scenario analysis method for economic operation of microgrid" Electr. Power Autom. Equip. (2017)
[23]
Shao "Source Side and Load Side Coordinated Configuration Optimization for Stand-alone Micro-grid" Power Syst. Technol. (2021)
[24]
Li "Short-term PV power prediction based on meteorological similarity days and SSA-BiLSTM" Syst. Soft Comput. (2024) 10.1016/j.sasc.2024.200084
[25]
Xiao "Multilevel Energy Management System for Hybridization of Energy Storages in DC Microgrids" IEEE Trans. Smart Grid (2016)
[26]
Ma "Random fuzzy uncertain model for daily wind speed" Proceeding CSEE (2015)
[27]
Xu "Methods for solving two-parameter wind velocity weibull distribution" Trans. CSAE (2007)
[28]
Wang "Natural ventilation under wind speed condition based on weibull statistic characteristics" Acta Energiae Solaris Sin. (2014)
[29]
McKay "A Comparison of Three Methods for Selecting Values of Input Variables in the Analysis of Output from a Computer Code" Technometrics (1979)
[30]
Alanazi, M., Alanazi, A., Memon, Z.A., Awan, A.B., and Deriche, M. (2024). Multi-Objective Energy Management in Microgrids: Improved Honey Badger Algorithm with Fuzzy Decision-Making and Battery Aging Considerations. Energies, 17. 10.3390/en17174373
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Published
Feb 10, 2025
Vol/Issue
13(2)
Pages
109
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Cite This Article
Xiaoqin Ye, Peng Yang (2025). Economic Optimal Dispatch of Networked Hybrid Renewable Energy Microgrid. Systems, 13(2), 109. https://doi.org/10.3390/systems13020109