对立GOA在可再生能源多目标经济排放调度中的应用

Pub Date : 2022-01-01 DOI:10.4018/ijeoe.295983
S. Hazra
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引用次数: 1

摘要

可再生能源经济排放传输是现代电力系统中一项重要的新任务。本文提出了一种基于蚱蜢社会交易性质的对立蚱蜢优化算法(OGOA),用于解决考虑风电可用性不确定性和热电机组碳排放税的基于可再生能源的经济排放调度问题。在OGOA算法中,为了加快收敛速度和提高仿真效果,将基于对抗的学习(OBL)与基本目标算法相结合。为了表示风电可用性的非线性,采用了威布尔分布。一个包含两个风电场和六个热电机组的标准系统用于测试三种不同负荷的调度模型。将应用粒子群优化技术的统计结果与基本粒子群优化和量子启发粒子群优化(QPSO)优化进行了比较。结果表明,与基本GOA技术相比,OGOA技术在显著减少计算时间和获得预期结果方面更为熟练。
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Oppositional GOA applied on Renewable Energy based multi-objective Economic Emission Dispatch
The renewable economic emission transmit is a significant and new assignment in the modern power system. This article develops oppositional grasshopper optimization algorithm (OGOA) which depends on the social dealings of the grasshopper in nature, to solve renewable energy based economic emission dispatch (EED) considering uncertainty in wind power availability and a carbon tax on emission from the thermal unit. To speed up the convergence speed and advance the simulation results, opposition based learning (OBL) is integrated with the fundamental GOA in OGOA algorithm. To show the nonlinearity of wind power availability the Weibull distribution is used. A standard system, containing of two wind farms and six thermal units is used for testing the dispatch model for three different loads. The statistical outcomes of the applied OGOA technique are compared with basic GOA and quantum-inspired particle swarm optimization (QPSO) optimization. It is observed OGOA is more skillful than basic GOA technique for significantly reducing the computation time and developing hopeful outcomes.
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