A Framework for Adapting Population-Based and Heuristic Algorithms for Dynamic Optimization Problems

Q3 Energy
S. M. Ejabati, S. Zahiri
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引用次数: 0

Abstract

In this paper, a general framework was presented to boost heuristic optimization algorithms based on swarm intelligence from static to dynamic environments. Regarding the problems of dynamic optimization as opposed to static environments, evaluation function or constraints change in the time and hence place of optimization. The subject matter of the framework is based on the variability of the number of algorithm individuals and the creation of feasible subspaces appropriate to environmental conditions. Accordingly, to prevent early convergence along with the increasing speed of local search, the search space is divided with respect to the conditions of each moment into subspaces labeled as focused search area, and focused individuals are recruited to make search for it. Moreover, the structure of the design is in such a way that it often adapts itself to environmental condition, and there is no need to identify any change in the environment. The framework proposed for particle swarm optimization algorithm has been implemented as one of the most notable static optimization and a new optimization method referred to as ant lion optimizer. The results from moving peak benchmarks (MPB) indicated the good performance of the proposed framework for dynamic optimization. Furthermore, the positive performance of practices was assessed with respect to real-world issues, including clustering for dynamic data.
一种用于动态优化问题的基于种群和启发式算法的自适应框架
本文提出了一个通用框架,将基于群体智能的启发式优化算法从静态环境提升到动态环境。关于与静态环境相对的动态优化问题,评估函数或约束条件会随着优化的时间和地点而变化。该框架的主题是基于算法个体数量的可变性和适合环境条件的可行子空间的创建。因此,为了防止随着局部搜索速度的提高而出现早期收敛,将搜索空间根据每个时刻的条件划分为标记为聚焦搜索区域的子空间,并招募聚焦个体进行搜索。此外,设计的结构往往会适应环境条件,并且不需要识别环境中的任何变化。粒子群优化算法的框架已被实现为最显著的静态优化之一,也是一种新的优化方法,称为蚂蚁优化算法。移动峰值基准测试(MPB)的结果表明,所提出的动态优化框架具有良好的性能。此外,还评估了实践在现实世界问题方面的积极表现,包括动态数据的聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Iranian Journal of Electrical and Electronic Engineering
Iranian Journal of Electrical and Electronic Engineering Engineering-Electrical and Electronic Engineering
CiteScore
1.70
自引率
0.00%
发文量
13
审稿时长
12 weeks
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