基于改进并行聚类和精英蚁群算法的TSP/mTSP求解方法

IF 1.2 4区 计算机科学 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Computer Science and Information Systems Pub Date : 2023-01-01 DOI:10.2298/csis220820053b
G. Baydogmus
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引用次数: 2

摘要

许多被认为是复杂和无法解决的问题已经开始解决,通过GPU技术的发展,新技术已经出现。随着人工智能领域研究的加速,已经建立了np完全和np困难问题的解决方案,这对数学家和计算机科学家来说都是非常有趣的。在这些问题中,最引人注目的是近年来出现的旅行商问题。这个问题已经被人工智能解决了?遗传算法、蚁群优化等元启发式算法。然而,研究人员一直在寻找更好的解决方案。本研究旨在利用GPU并行化、机器学习和人工智能方法,设计一种低成本且优化的旅行商问题算法。这样,本文提出的算法包括三个阶段;用K-means聚类对给定数据集中的点进行聚类,在每个聚类中用蚁群找到最短路径,并在最接近的点将每个聚类连接起来。这三个阶段通过并行编程实现。该研究与文献中发现的最明显的区别是,它通过使用精英蚁群优化在GPU上执行所有计算。对于实验结果,在TSPLIB中对各种数据集进行了测试,发现所提出的并行KMeans-Elitist蚁群方法比同类方法的性能提高了30%。
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Solution for TSP/mTSP with an improved parallel clustering and elitist ACO
Many problems that were considered complex and unsolvable have started to solve and new technologies have emerged through to the development of GPU technology. Solutions have established for NP-Complete and NP-Hard problems with the acceleration of studies in the field of artificial intelligence, which are very interesting for both mathematicians and computer scientists. The most striking one among such problems is the Traveling Salesman Problem in recent years. This problem has solved by artificial intelligence?s metaheuristic algorithms such as Genetic algorithm and Ant Colony optimization. However, researchers are always looking for a better solution. In this study, it is aimed to design a low-cost and optimized algorithm for Traveling Salesman Problem by using GPU parallelization, Machine Learning, and Artificial Intelligence approaches. In this manner, the proposed algorithm consists of three stages; Cluster the points in the given dataset with K-means clustering, find the shortest path with Ant Colony in each of the clusters, and connect each cluster at the closest point to the other. These three stages were carried out by parallel programming. The most obvious difference of the study from those found in the literature is that it performs all calculations on the GPU by using Elitist Ant Colony Optimization. For the experimental results, examinations were carried out on a wide variety of datasets in TSPLIB and it was seen that the proposed parallel KMeans-Elitist Ant Colony approach increased the performance by 30% compared to its counterparts.
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来源期刊
Computer Science and Information Systems
Computer Science and Information Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
2.30
自引率
21.40%
发文量
76
审稿时长
7.5 months
期刊介绍: About the journal Home page Contact information Aims and scope Indexing information Editorial policies ComSIS consortium Journal boards Managing board For authors Information for contributors Paper submission Article submission through OJS Copyright transfer form Download section For readers Forthcoming articles Current issue Archive Subscription For reviewers View and review submissions News Journal''s Facebook page Call for special issue New issue notification Aims and scope Computer Science and Information Systems (ComSIS) is an international refereed journal, published in Serbia. The objective of ComSIS is to communicate important research and development results in the areas of computer science, software engineering, and information systems.
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