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Approches generales de resolution pour les problemes multi-attributs de tournees de vehicules et confection d'horaires.

机译:解决车辆路线和调度的多属性问题的一般方法。

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摘要

The Vehicle Routing Problem (VRP) involves designing least cost delivery routes to service a geographically-dispersed set of customers while taking into account vehicle-capacity constraints. This NP-hard combinatorial optimization problem is linked with multiple applications in logistics, telecommunications, robotics, crisis management in military and humanitarian frameworks, among others. Practical routing applications are usually quite distinct from the academic cases, encompassing additional sets of specific constraints, objectives and decisions which breed further new problem variants. The resulting “Multi-Attribute” Vehicle Routing Problems (MAVRP) are the support of a vast literature which, however, lacks unified methods capable of addressing multiple MAVRP. In addition, some rich VRPs, i.e. those that involve several attributes, may be difficult to address because of the wide array of combined and possibly antagonistic decisions they require.;This thesis contributes to address these challenges by means of problem structure analysis, new metaheuristics and unified method developments. The “winning strategies” of 64 state-of-the-art algorithms for 15 different MAVRP are scrutinized in a unifying review. Another analysis is targeted on “timing” problems and algorithms for adjusting the execution dates of a given sequence of tasks. Such methods, independently studied in different research domains related to routing, scheduling, resource allocation, and even isotonic regression are here surveyed in a multidisciplinary review.;A Hybrid Genetic Search with Advanced Diversity Control (HGSADC) is then introduced, which combines the exploration breadth of population-based evolutionary search, the aggressive-improvement capabilities of neighborhood-based metaheuristics, and a bi-criteria evaluation of solutions based on cost and diversity measures. Results of remarkable quality are achieved on classic benchmark instances of the capacitated VRP, the multi-depot VRP, and the periodic VRP. Further extensions of the method to VRP variants with constraints on time windows, limited route duration, and truck drivers’ statutory pauses are also proposed. New route and neighborhood evaluation procedures are introduced to manage penalized infeasible solutions w.r.t. to time-window and duration constraints. Tree-search procedures are used for drivers’ rest scheduling, as well as advanced search limitation strategies, memories and decomposition phases. A dynamic programming-based neighborhood search is introduced to optimally select the depot, vehicle type, and first customer visited in the route during local searches. The notable contribution of these new methodological elements is assessed within two different metaheuristic frameworks.;To further advance general-purpose MAVRP methods, we introduce a new component-based heuristic resolution framework and a Unified Hybrid Genetic Search (UHGS), which relies on modular self-adaptive components for addressing problem specifics. Computational experiments demonstrate the groundbreaking performance of UHGS. With a single implementation, unique parameter setting and termination criterion, this algorithm matches or outperforms all current problem-tailored methods from more than 180 articles, on 26 vehicle routing variants and 39 benchmark sets. To address rich problems, UHGS was included in a new parallel cooperative solution framework called “Integrative Cooperative Search (ICS)”, based on problem decompositions, partial solutions integration, and global search guidance.;This compendium of results provides a novel view on a wide range of MAVRP and timing problems, on efficient heuristic searches, and on general-purpose solution methods for combinatorial optimization problems.;Keywords : Operations Research, Combinatorial Optimization, Logistics, Transportation, Vehicle Routing Problem, Scheduling, Heuristic, Metaheuristic, Genetic Algorithms, Parallel Algorithms.
机译:车辆路线问题(VRP)涉及设计成本最低的送货路线,以服务于地理位置分散的一组客户,同时考虑到车辆容量的限制。这个NP难题的组合优化问题与后勤,电信,机器人技术,军事和人道主义框架中的危机管理等多种应用相关联。实际的路由选择应用程序通常与学术案例截然不同,包含其他特定的约束条件,目标和决策集,这些条件会催生更多的新问题。由此产生的“多属性”车辆路径问题(MAVRP)得到了大量文献的支持,然而,该文献缺乏能够解决多个MAVRP的统一方法。此外,一些丰富的VRP,即涉及多个属性的VRP,可能由于其所需的组合决策和对抗决策的范围广泛而难以解决。本论文通过问题结构分析,新的元启发法来应对这些挑战。和统一的方法开发。在统一的审查中,对用于15种不同MAVRP的64种最新算法的“获胜策略”进行了详细审查。另一种分析针对“时序”问题和用于调整给定任务序列的执行日期的算法。本文在多学科综述中对与路由,调度,资源分配甚至等张回归相关的不同研究领域中独立研究的这些方法进行了研究。;然后介绍了具有高级多样性控制的混合遗传搜索(HGSADC),该方法结合了探索基于人口的进化搜索的广度,基于邻域的元启发法的进取改进能力以及基于成本和多样性测度的解决方案的双标准评估。在电容式VRP,多仓库VRP和定期VRP的经典基准实例上,可实现卓越的质量结果。还提出了将该方法进一步扩展到VRP变体的形式,该变体具有时间窗口,有限的路线持续时间以及卡车司机的法定停顿限制。引入了新的路线和邻域评估程序来管理无法解决的惩罚性解决方案受时间窗口和持续时间的限制。树形搜索程序用于驾驶员的休息时间安排,以及高级搜索限制策略,记忆和分解阶段。引入了基于动态编程的邻域搜索,以在本地搜索过程中最佳地选择仓库,车辆类型和路线中的第一位顾客。在两个不同的元启发式框架内评估了这些新方法论要素的显着贡献。为了进一步推进通用MAVRP方法,我们引入了一个新的基于组件的启发式解析框架和一个基于模块的统一混合遗传搜索(UHGS)。用于解决问题细节的自适应组件。计算实验证明了UHGS的突破性性能。该算法具有单一实现,独特的参数设置和终止标准,在26种车辆路径变体和39种基准测试集上,可以匹配或超过180篇文章中所有当前针对问题量身定制的方法。为了解决丰富的问题​​,基于问题分解,部分解决方案集成和全局搜索指导,UHGS被包含在一个新的并行合作解决方案框架中,称为“集成合作搜索(ICS)”。关键词:运筹学,组合优化,物流,运输,车辆路径问题,调度,启发式,元启发式,遗传算法;广泛的MAVRP和时序问题,有效的启发式搜索以及组合优化问题的通用解决方法。 ,并行算法。

著录项

  • 作者

    Vidal, Thibaut.;

  • 作者单位

    Universite de Montreal (Canada).;

  • 授予单位 Universite de Montreal (Canada).;
  • 学科 Transportation.;Operations Research.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 355 p.
  • 总页数 355
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 肿瘤学 ;
  • 关键词

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