一种求解固定电荷运输问题的新方法及混合并行算法

Q3 Computer Science
Ahmed Lahjouji El Idrissi, Ismail Ezzerrifi Amrani, Adil Ben-Hdech, Ahmad El Allaoui
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引用次数: 0

摘要

本文致力于有效解决固定电荷传输问题(FCTP),目标是在缩短的时间框架内确定最佳解决方案。FCTP是一个组合和np完全问题,以其相对于问题大小的指数时间复杂度而闻名。包括遗传算法在内的元启发式方法是获得高质量FCTP解的有效技术。因此,并行算法的集成成为加速解决问题的一种策略。所提出的方法被称为并行遗传算法(PGA),需要在多个并行架构中应用遗传算法来解决FCTP问题。主要目的是利用遗传算法探索固定电荷运输问题的新解,同时通过并行性优化实现这些解所需的时间。FCTP问题本质上是一个线性规划挑战,围绕着确定从多个源地点到多个目的地的最佳运输数量,其总体目标是使总运输成本最小化。这就需要考虑与来源的产品可用性和目的地的需求动态相关的约束。在这项研究中,一个开创性的方法来解决固定收费运输问题(FCTP)使用并行遗传算法(PGA)揭示。本文介绍了两种不同的并行算法:主从并行算法(MS-GA)和粗粒度并行算法(CG-GA)。此外,对这些方法的杂交研究导致了NMS-CG-GA方法的发展。数值结果表明,基于并行的方法显著提高了遗传算法的性能。具体来说,主-从(MS-GA)方法在解决较小的FCTP问题实例时显示了它的优势,而粗粒度(CG-GA)方法在解决较大的问题实例时显示出更大的有效性。得出的结论是,新型混合并行遗传算法方法(NMS-CG-GA)优于其前身,产生了出色的结果,特别是在不同的FCTP问题实例中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel approach and hybrid parallel algorithms for solving the fixed charge transportation problem
This article is dedicated to the efficient resolution of the fixed charge transport problem (FCTP) with the goal of identifying optimal solutions within reduced timeframes. FCTP is a combinatorial and NP-complete problem known for its exponential time complexity relative to problem size. Metaheuristic methods, including genetic algorithms, represent effective techniques for obtaining high-quality FCTP solutions. Consequently, the integration of parallel algorithms emerges as a strategy for expediting problem-solving. The proposed approach, referred to as the parallel genetic algorithm (PGA), entails the application of a genetic algorithm across multiple parallel architectures to tackle the FCTP problem. The primary aim is to explore fresh solutions for the fixed charge transportation problem using genetic algorithms while concurrently optimizing the time required to achieve these solutions through parallelism. The FCTP problem is fundamentally a linear programming challenge, revolving around the determination of optimal shipment quantities from numerous source locations to multiple destinations with the overarching objective of minimizing overall transportation costs. This necessitates consideration of constraints tied to product availability at the sources and demand dynamics at the destinations. In this study, a pioneering approach to addressing the Fixed Charge Transportation Problem (FCTP) using parallel genetic algorithms (PGA) is unveiled. The research introduces two distinct parallel algorithms: The Master-Slave Approach (MS-GA) and the Coarse-Grained Approach (CG-GA). Additionally, investigation into the hybridization of these approaches has led to the development of the NMS-CG-GA approach. The numerical results reveal that our parallelism-based approaches significantly improve the performance of genetic algorithms. Specifically, the Master-Slave (MS-GA) approach demonstrates its advantages in solving smaller instances of the FCTP problem, while the Coarse-Grained (CG-GA) approach exhibits greater effectiveness for larger problem instances. The conclusion reached is that the novel hybrid parallel genetic algorithm approach (NMS-CG-GA) outperforms its predecessors, yielding outstanding results, particularly across diverse FCTP problem instances.
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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