Grey Wolf Optimizer for solving economic dispatch problems

L. I. Wong, M. Sulaiman, M. R. Mohamed, M. S. Hong
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引用次数: 61

Abstract

This work proposes a new meta-heuristic called Grey Wolf Optimizer (GWO) which inspired by grey wolves (Canis lupus). The GWO algorithm mimics the leadership hierarchy and hunting mechanism of grey wolves in nature. Four types of grey wolves such as alpha, beta, delta, and omega are employed for simulating the leadership hierarchy. In addition, the three main steps of hunting, searching for prey, encircling prey, and attacking prey, are implemented. The algorithm is then benchmarked on 20 generating units in economic dispatch, and the results are verified by a comparative study with Biogeography-based optimization (BBO), Lambda Iteration method (LI), Hopfield model based approach (HM), Cuckoo Search (CS), Firefly, Artificial Bee Colony (ABC), Neural Networks training by Artificial Bee Colony (ABCNN), Quadratic Programming (QP) and General Algebraic Modeling System (GAMS). The results show that the GWO algorithm is able to provide very competitive results compared to these well-known meta-heuristics.
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求解经济调度问题的灰狼优化器
本文提出了一种新的元启发式算法,称为灰狼优化器(GWO),它的灵感来自灰狼(Canis lupus)。GWO算法模拟了自然界中灰狼的领导层级和捕猎机制。采用alpha、beta、delta、omega四种灰狼来模拟领导层级。此外,还实现了狩猎的三个主要步骤,即寻找猎物、包围猎物和攻击猎物。将该算法应用于20台发电机组经济调度,并与基于生物地理的优化(BBO)、Lambda迭代法(LI)、基于Hopfield模型的方法(HM)、布谷鸟搜索(CS)、萤火虫、人工蜂群(ABC)、人工蜂群神经网络训练(ABCNN)、二次规划(QP)和通用代数建模系统(GAMS)进行对比研究。结果表明,与这些著名的元启发式算法相比,GWO算法能够提供非常有竞争力的结果。
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