首页> 外文会议>IEEE Congress on Evolutionary Computation >Towards realistic mimicking of grey wolves hunting process for bounded single objective optimization
【24h】

Towards realistic mimicking of grey wolves hunting process for bounded single objective optimization

机译:逼真的模仿灰狼狩猎过程,以实现有界的单目标优化

获取原文

摘要

Canis lupus (grey) wolves hunt for their prey in a pack. There exist evolutionary algorithms based on the hunting pattern of Canis lupus wolves known as Grey wolf optimizer (GWO). It is a powerful optimizer and had produced competitive results for many difficult problems. There already exist several variants of GWO because of its simplicity and exploitative qualities. GWO has been proved to be a very good exploiter. However, the modeling of grey wolves concentrates more on exploitation rather than exploration and thus results in the problem of local stagnation. To enhance the exploration capabilities, dynamic behavior is added to prey. It was assumed that the prey was static in the original GWO wherein the prey always tries to run away from the predator. The proposed algorithm enhances diversity by varying the position of prey with the help of Levy distribution rather than considering it to be static. This paper aims at introducing a novel, realistic version of GWO wherein the new population is generated with the help of Levy flight distribution of prey as well as with the different class of wolves by a suitable modification in the hierarchy of wolves. Also, the three primary strides of chasing, looking, circling, and assaulting of prey, are executed. However, the new population which is created has a better exploration because of levy flight distribution of prey position. The algorithm is tested on a well-known suite of 23 benchmark problems. The outcomes show that the proposed algorithm, GWOLF can give either better or competitive results as contrasted with the original GWO and PSO metaheuristics.
机译:天狼犬(灰狼)成群捕猎猎物。存在基于灰狼狼的狩猎模式的进化算法,称为灰狼优化器(GWO)。它是功能强大的优化程序,在许多困难的问题上都产生了竞争优势。由于GWO的简单性和开发特性,已经存在几种GWO。 GWO已被证明是一个非常好的开发者。然而,灰狼的建模更多地集中在开发而不是探索上,因此导致了局部停滞的问题。为了增强探索能力,将动态行为添加到猎物中。假定猎物在原始GWO中是静态的,其中猎物总是试图逃避捕食者。所提出的算法通过在征费分布的帮助下改变猎物的位置而不是将其视为静态来增强多样性。本文旨在介绍一种新颖,现实的GWO版本,其中新的种群是在Levy飞行的猎物分布以及不同类别的狼的帮助下,通过对狼等级进行适当的修改而产生的。同样,追逐,寻找,盘旋和攻击猎物的三个主要步骤得以执行。但是,由于猎物位置的征税飞行分配,所产生的新种群具有更好的探索性。该算法在23个基准问题的著名套件上进行了测试。结果表明,与原始的GWO和PSO元启发式算法相比,所提出的算法GWOLF可以提供更好或更具竞争性的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号