Ameliorated Ensemble Strategy-Based Evolutionary Algorithm with Dynamic Resources Allocations

W. K. Mashwani, Syed Ali Raza Shah, S. Belhaouari, A. Hamdi
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引用次数: 14

Abstract

In the last two decades, evolutionary computing has become the mainstream to attract the attention of the experts in both academia and industrial applications due to the advent of the fast computerwithmulti-coreGHzprocessors have had a capacity of processing over 100 billion instructions per second. Today’s different evolutionary algorithms are found in the existing literature of evolutionary computing that is mainly belong to swarm intelligence and nature-inspired algorithms. In general, it is quite realistic that not always each developed evolutionary algorithms can perform all kinds of optimization and search problems. Recently, ensemble-based techniques are considered to be a good alternative for dealing with various benchmark functions and real-world problems. In this paper, an ameliorated ensemble strategy-based evolutionary algorithm is developed for solving largescale global optimization problems. The suggested algorithm employs the particle swam optimization, teaching learning-based optimization, differential evolution, and bat algorithm with a self-adaptive procedure to evolve their randomly generated set of solutions. The performance of the proposed ensemble strategy-based evolutionary algorithm evaluated over thirty benchmark functions that are recently designed for the special session of the 2017 IEEE congress of evolutionary computation (CEC’17). The experimental results provided by the suggested algorithm over most CEC’17 benchmark functions are much promising in terms of proximity and diversity.
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基于改进集成策略的动态资源分配进化算法
在过去的二十年里,进化计算已经成为主流,吸引了学术界和工业应用专家的注意,由于多核处理器的快速计算机的出现,每秒处理超过1000亿个指令的能力。在现有的进化计算文献中发现了当今不同的进化算法,主要属于群体智能和自然启发算法。一般来说,并不是每一种进化算法都能执行所有类型的优化和搜索问题,这是很现实的。最近,基于集成的技术被认为是处理各种基准函数和实际问题的一个很好的替代方案。提出了一种改进的基于集成策略的进化算法,用于求解大规模全局优化问题。该算法采用粒子游优化、基于教学学习的优化、差分进化和蝙蝠算法,并采用自适应过程对随机生成的解集进行进化。提出的基于集成策略的进化算法的性能评估了最近为2017年IEEE进化计算大会(CEC ' 17)特别会议设计的30多个基准函数。该算法在大多数CEC ' 17基准函数上的实验结果在接近性和多样性方面都很有希望。
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