Cost optimization in microgrids: A scenario-based analysis by using polar the fox optimization algorithm
Abstract
Microgrids have come up as a promising solution for ensuring efficient, reliable, and sustainable energy management through the distributed energy resources integration. However, some challenges such as integration of distributed generators, economic efficacy and operational constraints cause the management and operation of microgrids remain as a complex problem. In this work, a comprehensive analysis is realized by using the Polar Fox Optimization algorithm to find solutions to these problems. Four different scenarios are analyzed to examine the effects of operational constraints on system performance and economic costs. In the first case, all distributed energy resources are operated within the specified limits and all power from renewable sources is injected into the microgrid. This scenario results in an operating cost of 269.76 €/day. In the second case, the output power of the renewable distributed energy sources is optimized. This case, a cost reduction of 42.5% is obtained when compared to the first scenario. In the third case, the energy exchange constraint between the grid and the microgrid is removed. Thus, a cost reduction of 74.7% is obtained when compared to the first case. In the fourth case, a detailed battery energy storage system model is added by considering technical parameters such as battery efficiency, state-of-charge limits, and charge/discharge rates. This case an operating cost of €107.08/day is obtained. Thus, a cost reduction of 60.3% is obtained when compared to the first case. The results show that changing the operational constraints significantly affects both system performance and economic efficiency. The proposed approach presents valuable perception for microgrid operators and planners. It points out the importance of the optimization algorithm in achieving economically efficient and reliable energy management.
Keywords
Project Number
Tubitak 124E002
References
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Details
Primary Language
English
Subjects
Electrical Energy Transmission, Networks and Systems, Electrical Engineering (Other)
Journal Section
Research Article
Authors
Publication Date
June 30, 2025
Submission Date
December 24, 2024
Acceptance Date
March 21, 2025
Published in Issue
Year 2025 Number: 061
APA
Nacar Çıkan, N. (2025). Cost optimization in microgrids: A scenario-based analysis by using polar the fox optimization algorithm. Journal of Scientific Reports-A, 061, 34-59. https://doi.org/10.59313/jsr-a.1606950
AMA
1.Nacar Çıkan N. Cost optimization in microgrids: A scenario-based analysis by using polar the fox optimization algorithm. JSR-A. 2025;(061):34-59. doi:10.59313/jsr-a.1606950
Chicago
Nacar Çıkan, Nisa. 2025. “Cost Optimization in Microgrids: A Scenario-Based Analysis by Using Polar the Fox Optimization Algorithm”. Journal of Scientific Reports-A, nos. 061: 34-59. https://doi.org/10.59313/jsr-a.1606950.
EndNote
Nacar Çıkan N (June 1, 2025) Cost optimization in microgrids: A scenario-based analysis by using polar the fox optimization algorithm. Journal of Scientific Reports-A 061 34–59.
IEEE
[1]N. Nacar Çıkan, “Cost optimization in microgrids: A scenario-based analysis by using polar the fox optimization algorithm”, JSR-A, no. 061, pp. 34–59, June 2025, doi: 10.59313/jsr-a.1606950.
ISNAD
Nacar Çıkan, Nisa. “Cost Optimization in Microgrids: A Scenario-Based Analysis by Using Polar the Fox Optimization Algorithm”. Journal of Scientific Reports-A. 061 (June 1, 2025): 34-59. https://doi.org/10.59313/jsr-a.1606950.
JAMA
1.Nacar Çıkan N. Cost optimization in microgrids: A scenario-based analysis by using polar the fox optimization algorithm. JSR-A. 2025;:34–59.
MLA
Nacar Çıkan, Nisa. “Cost Optimization in Microgrids: A Scenario-Based Analysis by Using Polar the Fox Optimization Algorithm”. Journal of Scientific Reports-A, no. 061, June 2025, pp. 34-59, doi:10.59313/jsr-a.1606950.
Vancouver
1.Nisa Nacar Çıkan. Cost optimization in microgrids: A scenario-based analysis by using polar the fox optimization algorithm. JSR-A. 2025 Jun. 1;(061):34-59. doi:10.59313/jsr-a.1606950