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An Evaluation on Wind Energy Potential Using Multi-Objective Optimization Based Non-Dominated Sorting Genetic Algorithm III

机译:基于多目标优化的非主导分类遗传算法III的风能电位评估

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摘要

Wind energy is an abundant renewable energy resource that has been extensively used worldwide in recent years. The present work proposes a new Multi-Objective Optimization (MOO) based genetic algorithm (GA) model for a wind energy system. The proposed algorithm consists of non-dominated sorting which focuses to maximize the power extraction of the wind turbine, minimize the cost of generating energy, and the lifetime of the battery. Additionally, the performance characteristics of the wind turbine and battery energy storage system (BESS) are analyzed specifically torque, current, voltage, state of charge (SOC), and internal resistance. The complete analysis is carried out in the MATLAB/Simulink platform. The simulated results are compared with existing optimization techniques such as single-objective, multi-objective, and non-dominating sorting GA II (Genetic Algorithm-II). From the observed results, the non-dominated sorting genetic algorithm (NSGA III) optimization algorithm offers superior performance notably higher turbine power output with higher torque rate, lower speed variation, reduced energy cost, and lesser degradation rate of the battery. This result attested to the fact that the proposed optimization tool can extract a higher rate of power from a self-excited induction generator (SEIG) when compared with a conventional optimization tool.
机译:风能是近年来广泛使用的丰富可再生能源资源。本工作提出了一种新的用于风能系统的基于多目标优化(MOO)遗传算法(GA)模型。所提出的算法包括非主导的分类,其专注于最大化风力涡轮机的功率提取,最小化产生能量的成本以及电池的寿命。另外,通过扭矩,电流,电压,充电状态(SOC)和内阻分析风力涡轮机和电池储能系统(BESS)的性能特性。完全分析在Matlab / Simulink平台中执行。将模拟结果与现有的优化技术进行比较,例如单目标,多目标和非主导分类Ga II(遗传算法-II)。从观察结果中,非主导的分类遗传算法(NSGA III)优化算法提供了卓越的性能,特别是扭矩速率,较低的速度变化,降低能量成本和电池较小的降低速率。与传统优化工具相比,该结果证明了所提出的优化工具可以从自我激发的感应发生器(SEIG)中提取更高的电力速率。

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