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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Explicit memory based ABC with a clustering strategy for updating and retrieval of memory in dynamic environments
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Explicit memory based ABC with a clustering strategy for updating and retrieval of memory in dynamic environments

机译:基于显式存储器的ABC具有群集策略,用于在动态环境中更新和检索内存

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摘要

The Artificial Bee Colony (ABC) algorithm is considered as one of the swarm intelligence optimization algorithms. It has been extensively used for the applications of static type. Many practical and real-world applications, nevertheless, are of dynamic type. Thus, it is needed to employ some optimization algorithms that could solve this group of the problems that are of dynamic type. Dynamic optimization problems in which change(s) may occur through the time are tougher to face than static optimization problems. In this paper, an approach based on the ABC algorithm enriched with explicit memory and population clustering scheme, for solving dynamic optimization problems is proposed. The proposed algorithm uses the explicit memory to store the aging best solutions and employs clustering for preserving diversity in the population. Using the aging best solutions and keeping the diversity in population of the candidate solutions in the environment help speed-up the convergence of the algorithm. The proposed approach has been tested on Moving Peaks Benchmark. The Moving Peaks Benchmark is a suitable function for testing optimization algorithms and it is considered as one of the best representative of dynamic environments. The experimental study on the Moving Peaks Benchmark shows that the proposed approach is superior to several other well-known and state-of-the-art algorithms in dynamic environments.
机译:人造蜂殖民地(ABC)算法被认为是群体智能优化算法之一。它已广泛用于静态类型的应用。然而,许多实际和现实世界的应用是动态类型。因此,需要采用一些可以解决动态类型的问题的一些优化算法。通过时间发生变化的动态优化问题比静态优化问题更难以面对面。本文提出了一种基于富含显式存储器和群体聚类方案的ABC算法的方法,用于解决动态优化问题。该算法使用明确的内存来存储老化最佳解决方案,并采用聚类以保留人口中的多样性。使用老化最佳解决方案并保持环境中候选解决方案人口的多样性有助于加速算法的收敛。拟议的方法已经在移动峰值基准测试中进行了测试。移动的峰值基准是一种适用于测试优化算法的合适功能,并且被认为是动态环境的最佳代表之一。移动峰值基准测试的实验研究表明,所提出的方法优于动态环境中的其他几种其他众所周知的和最先进的算法。

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