A Hybrid Ant Colony Optimization Algorithm for Topology Optimization of Local Area Networks

S. Khan, M. Abd-El-Barr
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引用次数: 2

Abstract

Ant colony optimization (ACO) is a well-known optimization technique and has been extensively used to a solve a variety of computationally hard problems. One such hard problem is found in the domain of local area network (LAN) topological optimization. The problem, due to its various design objectives and technical constraints, is considered a complex optimization problem. Due to this complexity, use of an intelligent design algorithm is inevitable in order to obtain a quality solution in a reasonable time. This paper proposes a new intelligent optimization algorithm that integrates features of the ACO algorithm and the simulated evolution (SE) algorithm. The performance of the proposed hybrid algorithm, termed as ACOSE, is empirically evaluated and compared with the ACO and SE algorithms. Preliminary results indicate that ACOSE is able to produce better results on the LAN design problem considered herein in terms of quality of solution compared to either ACO or SE.
局部网络拓扑优化的混合蚁群算法
蚁群优化是一种众所周知的优化技术,已被广泛用于解决各种计算难题。局域网(LAN)拓扑优化领域就是这样一个难题。该问题由于其不同的设计目标和技术限制,被认为是一个复杂的优化问题。由于这种复杂性,为了在合理的时间内获得高质量的解,使用智能设计算法是不可避免的。本文提出了一种结合蚁群算法和模拟进化算法特点的智能优化算法。提出的混合算法,称为ACOSE,性能进行了经验评估,并与蚁群算法和SE算法进行了比较。初步结果表明,就解决方案的质量而言,ACOSE能够在本文所考虑的局域网设计问题上产生比ACO或SE更好的结果。
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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