Optimal sizing and placement of ESS in distribution system with renewable energy integration using multi-objective hybrid optimization technique

Mr.P MuniSekhar, G. Jayakrishna, N. Visali
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引用次数: 1

Abstract

In this paper presents a methodology for optimal placement and sizing of Energy Storage ESS in distribution system with renewable energy integration using Multi-objective Hybrid optimization technique (ESS-MHO). It combines improved ant colony optimization (IACO) and chaotic cuckoo search (CCS) algorithm. It will provide an optimal ESS placement, sizing, and operation. The optimal planning determines where ESS will be located and sized by renewable and schedules the battery charging and discharging, while reducing total energy losses that are subject to technical constraint. The deployment of ESSs is a large avenue for maximize the efficiency of energy in distribution system, The optimum operation, particular placement, and size of the overall systems performance can be enhanced. It can facilitate peak energy demand fulfillment, enhancing the benefits for integration of renewable and Distributed energy sources, it aid management of energy quality, and to reduce the expansion costs of the distribution network.The multi-objective will be considered for appropriate selection of ESS, smart charge and discharging of ESS, selection, placement and operation as well as problems of power quality.
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基于多目标混合优化技术的可再生能源集成配电网ESS的优化配置
提出了一种利用多目标混合优化技术(ESS- mho)求解可再生能源集成配电系统中储能ESS的最优配置和规模的方法。该算法结合了改进蚁群算法(IACO)和混沌杜鹃搜索算法(CCS)。它将提供最佳的ESS放置,尺寸和操作。最优规划确定了ESS的位置和可再生能源的大小,并安排了电池的充电和放电,同时减少了受技术限制的总能量损失。储能系统的部署是实现配电系统能源效率最大化的一条重要途径,可以提高配电系统的最佳运行、特定位置和整体性能的大小。它可以促进高峰能源需求的实现,提高可再生能源和分布式能源的整合效益,有助于能源质量的管理,并降低配电网的扩展成本。对ESS的合理选择、ESS的智能充放电、ESS的选择、放置和运行以及电能质量问题进行多目标考虑。
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