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An experimental analysis of evolutionary heuristics for the biobjective traveling purchaser problem

机译:双目标旅行购买者问题的进化启发式实验分析

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摘要

Given a set of markets and a set of products to be purchased on those markets, the Biobjective Traveling Purchaser Problem (2TPP) consists in determining a route through a subset of markets to collect all products, minimizing the travel distance and the purchasing cost simultaneously. As its single objective version, the 2TPP is an NP-hard Combinatorial Optimization problem. Only one exact algorithm exists that can solve instances up to 100 markets and 200 products and one heuristic approach that can solve instances up to 500 markets and 200 products. Since the Transgenetic Algorithms (TAs) approach has shown to be very effective for the single objective version of the investigated problem, this paper examines the application of these algorithms to the 2TPP. TAs are evolutionary algorithms based on the endosymbiotic evolution and other interactions of the intracellular flow interactions. This paper has three main purposes: the first is the investigation of the viability of Multiob-jective TAs to deal with the 2TPP, the second is to determine which characteristics are important for the hybridization between TAs and multiobjective evolutionary frameworks and the last is to compare the ability of multiobjective algorithms based only on Pareto dominance with those based on both decomposition and Pareto dominance to deal with the 2TPP. Two novel Transgenetic Multiobjective Algorithms are proposed. One is derived from the NSGA-Ⅱ framework, named NSTA, and the other is derived from the MOEA/D framework, named MOTA/D. To analyze the performance of the proposed algorithms, they are compared with their classical counterparts. It is also the first time that NSGA-II and MOEA/D are applied to solve the 2TPP. The methods are validated in 365 uncapacitated instances of the TPPLib benchmark. The results demonstrate the superiority of MOTA/D and encourage further researches in the hybridization of Transgenetic Algorithms and Multiobjective Evolutionary Algorithms specially the ones based on decomposition.
机译:给定一组市场和在这些市场上要购买的一组产品,双目标旅行购买者问题(2TPP)在于确定通过市场的一个子集来收集所有产品的路线,同时最小化旅行距离和购买成本。作为2TPP的单一目标版本,它是一个NP难题的组合优化问题。只有一种精确的算法可以解决多达100个市场和200个产品的实例,而一种启发式方法则可以解决多达500个市场和200个产品的实例。由于转基因算法(TAs)方法已显示出对所研究问题的单一目标版本非常有效,因此本文研究了这些算法在2TPP中的应用。 TA是基于内共生进化和细胞内流相互作用的其他相互作用的进化算法。本文具有三个主要目的:第一个是研究多目标TA处理2TPP的可行性,第二个是确定哪些特征对于TA和多目标进化框架之间的杂交很重要,最后一个是比较仅基于帕累托优势的多目标算法与同时基于分解和帕累托优势的多目标算法处理2TPP的能力。提出了两种新颖的转基因多目标算法。一个是从NSGA-Ⅱ框架(称为NSTA)派生的,另一个是从MOEA / D框架(称为MOTA / D)派生的。为了分析所提出算法的性能,将它们与经典算法进行了比较。这也是NSGA-II和MOEA / D首次用于解决2TPP问题。该方法在365个TPPLib基准测试的无能力失效实例中得到了验证。结果证明了MOTA / D的优越性,并鼓励进一步研究转基因算法和多目标进化算法的混合,特别是基于分解的算法。

著录项

  • 来源
    《Annals of Operations Research》 |2012年第10期|p.305-341|共37页
  • 作者单位

    Graduate Program of Electrical Engineering and Computer Science, Federal University of Technology of Parana—UTFPR, Curitiba, PR, 80230-901, Brazil,Computer Science Department, Midwest State University of Parana—UNICENTRO, Guarapuava, PR,Brazil;

    Graduate Program of Electrical Engineering and Computer Science, Federal University of Technology of Parana—UTFPR, Curitiba, PR, 80230-901, Brazil,Computer Science Department, Midwest State University of Parana—UNICENTRO, Guarapuava, PR,Brazil;

    Graduate Program on Systems and Computing, Universidade Federal do Rio Grande do None,Campus Universitario, Lagoa Nova, Natal, RN, 59072-970 Brazil;

    Graduate Program on Systems and Computing, Universidade Federal do Rio Grande do None,Campus Universitario, Lagoa Nova, Natal, RN, 59072-970 Brazil;

    Graduate Program of Electrical Engineering and Computer Science, Federal University of Technology of Parana—UTFPR, Curitiba, PR, 80230-901, Brazil;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    biobjective traveling purchaser problem; transgenetic algorithms; multiobjective optimization; MOEA/D; NSGA-Ⅱ;

    机译:双目标旅行购买者问题;转基因算法;多目标优化;MOEA / D;NSGA-Ⅱ;

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