Author:
Ahmed Deyaa,Ebeed Mohamed,Kamel Salah,Nasrat Loai,Ali Abdelfatah,Shaaban Mostafa F.,Hussien Abdelazim G.
Abstract
AbstractThe energy management (EM) solution of the multi-microgrids (MMGs) is a crucial task to provide more flexibility, reliability, and economic benefits. However, the energy management (EM) of the MMGs became a complex and strenuous task with high penetration of renewable energy resources due to the stochastic nature of these resources along with the load fluctuations. In this regard, this paper aims to solve the EM problem of the MMGs with the optimal inclusion of photovoltaic (PV) systems, wind turbines (WTs), and biomass systems. In this regard, this paper proposed an enhanced Jellyfish Search Optimizer (EJSO) for solving the EM of MMGs for the 85-bus MMGS system to minimize the total cost, and the system performance improvement concurrently. The proposed algorithm is based on the Weibull Flight Motion (WFM) and the Fitness Distance Balance (FDB) mechanisms to tackle the stagnation problem of the conventional JSO technique. The performance of the EJSO is tested on standard and CEC 2019 benchmark functions and the obtained results are compared to optimization techniques. As per the obtained results, EJSO is a powerful method for solving the EM compared to other optimization method like Sand Cat Swarm Optimization (SCSO), Dandelion Optimizer (DO), Grey Wolf Optimizer (GWO), Whale Optimization Algorithm (WOA), and the standard Jellyfish Search Optimizer (JSO). The obtained results reveal that the EM solution by the suggested EJSO can reduce the cost by 44.75% while the system voltage profile and stability are enhanced by 40.8% and 10.56%, respectively.
Publisher
Springer Science and Business Media LLC
Reference70 articles.
1. Ton, D. T. & Smith, M. A. The US department of energy’s microgrid initiative. Electr. J. 25(8), 84–94 (2012).
2. Cagnano, A., De Tuglie, E. & Mancarella, P. Microgrids: Overview and guidelines for practical implementations and operation. Appl. Energy 258, 114039 (2020).
3. Shahgholian, G. & Azimi, Z. Analysis and design of a DSTATCOM based on sliding mode control strategy for improvement of voltage sag in distribution systems. Electronics 5(3), 41 (2016).
4. Natesan, C., Ajithan, S. K., Chozhavendhan, S. & Devendiran, A. Power management strategies in microgrid: A survey. Int. J. Renew. Energy Res. 5(2), 334–340 (2015).
5. Bhuyan, S. K., Hota, P. K. & Panda, B. Power quality analysis of a grid-connected solar/wind/hydrogen energy hybrid generation system. Int. J. Power Electron. Drive Syst. 9(1), 377 (2018).
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