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Renewable Energy Based Economic Emission Load Dispatch Using Grasshopper Optimization Algorithm

机译:基于蚱hopper优化算法的可再生能源经济排放负荷分配

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This article presents an integrated approach towards the economical operation of a hybrid system which consists of conventional thermal generators and renewable energy sources like windmills using a grasshopper optimization algorithm (GOA). This is based on the social interaction nature of the grasshopper, considering a carbon tax on the emissions from the thermal unit and uncertainty in wind power availability. The Weibull distribution is used for nonlinearity of wind power availability. A standard system, containing six thermal units and two wind farms, is used for testing the dispatch model of three different loads. The GOA results are compared with those obtained using a recently developed quantum-inspired particle swarm optimization (QPSO) optimization technique available in the literature. The simulation results demonstrate the efficacy and ability of GOA over the QPSO algorithm in terms of convergence rate and minimum fitness value. Performance analysis under wind power integration and emission minimization further confirms the supremacy of the GOA algorithm.
机译:本文提出了一种混合动力系统经济运行的综合方法,该系统由传统的热力发电机和可再生能源(如风车)组成,采用蚱hopper优化算法(GOA)。这是基于蚱hopper的社会互动性质,考虑了对热单元排放物征收的碳税和风能可用性的不确定性。威布尔分布用于风电可用性的非线性。一个包含六个热力单元和两个风电场的标准系统用于测试三种不同负荷的调度模型。将GOA结果与使用文献中提供的最新开发的量子启发粒子群优化(QPSO)优化技术获得的结果进行比较。仿真结果证明了在收敛速度和最小适应度方面,GOA优于QPSO算法的能力。风电集成和排放最小化下的性能分析进一步证实了GOA算法的优越性。

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