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Multiobjective Sizing of an Autonomous Hybrid Microgrid Using a Multimodal Delayed PSO Algorithm: A Case Study of a Fishing Village

机译:基于多模态延迟PSO算法的自主混合微电网多目标选型——以渔村为例

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Renewable energy (RE) systems play a key role in producing electricity worldwide. The integration of RE systems is carried out in a distributed aspect via an autonomous hybrid microgrid (A-HMG) system. The A-HMG concept provides a series of technological solutions that must be managed optimally. As a solution, this paper focuses on the application of a recent nature-inspired metaheuristic optimization algorithm named a multimodal delayed particle swarm optimization (MDPSO). The proposed algorithm is applied to an A-HMG to find the minimum levelized cost of energy (LCOE), the lowest loss of power supply probability (LPSP), and the maximum renewable factor (REF). Firstly, a smart energy management scheme (SEMS) is proposed to coordinate the power flow among the various system components that formed the A-HMG. Then, the MDPSO is integrated with the SEMS to perform the optimal sizing for the A-HMG of a fishing village that is located in the coastal city of Essaouira, Morocco. The proposed A-HMG comprises photovoltaic panels (PV), wind turbines (WTs), battery storage systems, and diesel generators (DGs). The results of the optimization in this location show that A-HMG system can be applied for this location with a high renewable factor that is equal to 90. Moreover, the solution is very promising in terms of the LCOE and the LPSP indexes that are equal to 0.17$/kWh and 0.12, respectively. Therefore, using renewable energy can be considered as a good alternative to enhance energy access in remote areas as the fishing village in the city of Essaouira, Morocco. Furthermore, a sensitivity analysis is applied to highlight the impact of varying each energy source in terms of the LCOE index.
机译:可再生能源 (RE) 系统在全球发电方面发挥着关键作用。可再生能源系统的集成是通过自主混合微电网(A-HMG)系统在分布式方面进行的。A-HMG概念提供了一系列必须以最佳方式管理的技术解决方案。作为解决方案,本文重点介绍了最近一种名为多模态延迟粒子群优化(MDPSO)的自然启发式优化算法的应用。将所提算法应用于A-HMG,求出最小平准化度电成本(LCOE)、最低供电损失概率(LPSP)和最大可再生能源因子(REF)。首先,提出了一种智能能源管理方案(SEMS),以协调构成A-HMG的各个系统组件之间的潮流。然后,将MDPSO与SEMS集成,为位于摩洛哥沿海城市索维拉的渔村的A-HMG进行最佳尺寸调整。拟议的A-HMG包括光伏板(PV)、风力涡轮机(WT)、电池存储系统和柴油发电机(DG)。该位置的优化结果表明,A-HMG系统可以应用于该位置,再生系数高达90%。此外,该解决方案在LCOE和LPSP指数方面非常有前途,分别等于0.17美元/千瓦时和0.12%。因此,使用可再生能源可以被认为是改善偏远地区能源获取的良好替代方案,如摩洛哥索维拉市的渔村。此外,还应用了敏感性分析,以突出每种能源在度电成本指数方面的变化的影响。

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