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Day‐ahead optimal scheduling of microgrid with adaptive grasshopper optimization algorithm

机译:基于自适应蝗虫优化算法的微电网的前方最佳调度

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摘要

Recently, the microgrid (MG) structure day-ahead scheduling is an important aspect and achieved an optimal operation by maximizing the utility function. In this paper, a day-ahead scheduling of MG and their optimal operation are analyzed with the help of the proposed adaptive algorithm. For the optimal analysis of MG, adaptive grasshopper algorithm (AGOA) with cuckoo search (CS) is proposed. The CS algorithm is utilized to update the learning functions of the GOA, and the optimal performances are evaluated. Here, the photovoltaic (PV), wind turbine (WT), battery, and diesel generator (DG) are considered to analyze the optimal scheduling issues, and the main aim is to minimize their generating and operational cost functions. In addition, to maximize the profit of operations in MG, the load demand must be satisfied according to their constraints and objectives. The multiobjective function is defined as the cost functions of MG such as the fuel cost, generation cost, state of charge (SOC), direct cost, reserve cost, and penalty cost, respectively. The proposed method is implemented in MATLAB/Simulink platform and tested with the IEEE 57-bus system and IEEE 118-bus system. In order to verify the effectiveness of the proposed method, this is compared with the existing methods such as whale optimization algorithm (WOA) and cuttlefish algorithm (CFA), respectively. Before the comparative study, the real-time data of PV and WT are analyzed for the 24 hours. The SOC of the proposed method is analyzed and is about 80%.
机译:最近,微电网(MG)结构日前调度是一个重要方面,并通过最大化实用程序功能来实现最佳操作。在本文中,借助于所提出的自适应算法,分析了MG的一天提前调度及其最佳操作。对于MG的最佳分析,提出了使用Cuckoo Search(CS)的自适应蚱蜢算法(APE)。 CS算法用于更新GOA的学习功能,并评估最佳性能。这里,光伏(PV),风力涡轮机(WT),电池和柴油发电机(DG)被认为分析最佳调度问题,并且主要目的是最小化其产生和操作成本函数。此外,为了最大限度地提高MG的运营利润,必须根据其约束和目标来满足负载需求。多目标功能被定义为MG的成本函数,例如燃料成本,生成成本,充电状态(SOC),直接成本,储备成本和罚金成本。该方法在Matlab / Simulink平台中实现,并用IEEE 57总线系统和IEEE 118总线系统进行测试。为了验证所提出的方法的有效性,将其与现有方法进行比较,例如鲸鱼优化算法(WOA)和墨鱼算法(CFA)。在比较研究之前,分析了24小时的PV和WT的实时数据。分析所提出的方法的SOC,约为80%。

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