Multi‐objective optimal power flow using grasshopper optimization algorithm

Barun Mandal, Provas Kumar Roy
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Abstract

Summary This paper introduces grasshopper optimization algorithm to efficiently prove its superiority in the optimal power flow problem. To demonstrate the efficiency of the proposed algorithm, it is implemented on the standard IEEE 30‐bus, IEEE 57‐bus, and IEEE 118‐bus test systems with different objectives that reveal presentation indices of the power system. Twelve different cases, in single and multi‐objective optimization space, are considered on different curves of fuel cost, environmental pollution emission, voltage profile, and active power loss. The simulation results obtained from grasshopper optimization algorithm techniques are compared to other new evolutionary optimization methods surfaced in the current state‐of‐the‐art literature. It is revealed that the proposed approach secures better consequence over the other newly originated popular optimization techniques and reflects its improved quality solutions and faster convergence speed. The results obtained in this work demonstrate that the grasshopper optimization algorithm method can successfully be applied to solve the non‐linear problems connected to power systems.

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基于蚱蜢优化算法的多目标优化潮流
为了有效地证明其在最优潮流问题中的优越性,本文引入了蚱蜢优化算法。为了验证该算法的有效性,在标准的IEEE 30总线、IEEE 57总线和IEEE 118总线测试系统上实现了该算法,并对不同的目标进行了测试,揭示了电力系统的呈现指标。在单目标和多目标优化空间中,考虑了燃料成本、环境污染排放、电压分布和有功损耗等不同曲线的12种不同情况。从蚱蜢优化算法技术中获得的模拟结果与当前最新文献中出现的其他新的进化优化方法进行了比较。结果表明,该方法比其他新提出的流行优化技术具有更好的结果,并且反映了其改进的解质量和更快的收敛速度。研究结果表明,蚱蜢优化算法可以成功地应用于解决与电力系统相关的非线性问题。
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