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Tactical Vehicle Routing Planning with Application to Milk Collection and Distribution

Posted on:2015-03-29Degree:Ph.DType:Thesis
University:Universite de Montreal (Canada)Candidate:Dayarian, ImanFull Text:PDF
GTID:2479390020452094Subject:Operations Research
Abstract/Summary:PDF Full Text Request
Many practical problems arising in real-world applications in the field of logistics can be modeled as vehicle routing problems (VRP). In broad terms, VRPs deal with designing optimal routes for delivering goods or services to a number of geographically scattered customers in a context in which, routing costs are minimized. Depending on the type of problem, one or several depots may be present. Routing problems are among the most difficult combinatorial optimization problems.;In this dissertation we study a special combinatorial optimization problem, belonging to the class of the vehicle routing problem that is strongly linked to the context of the transportation networks. We introduce a new problem setting, which is mainly inspired by the activities of collecting milk from production farms and distributing the collected product to processing plants in Quebec. Two di.erent variants of this problem setting are considered. The first variant seeks a tactical routing plan for the milk collection-distribution problem over a given planning horizon assuming that the production level over the considered horizon is fixed. The second variant aims to provide a more accurate plan by taking into account potential variations in terms of production level, which may occur during the course of a horizon. This thesis is cast into three main parts, as follows:;In the first part, we describe an exact algorithm for the first variant of the problem, which is characterized by the presence of time windows, multiple depots, and a heterogeneous fleet of vehicles, where the objective is to minimize the routing cost.;To this end, the problem is modeled as a multi-attribute vehicle routing problem. The exact algorithm proposed is based on the column generation approach, coupled with an elementary shortest path algorithm with resource constraints.;In the second part, we design an exact framework to address the second variant of the problem. To this end, the problem is modeled as a multi-period vehicle routing problem, which explicitly takes into account potential production level variations over a horizon. New strategies are proposed to tackle the particular structure of the multiperiod elementary shortest path algorithm with resource constraints.;To solve realistic instances of the second variant of the problem in reasonable computation times, a heuristic approach is required. In the third part of this thesis, we propose an adaptive large neighbourhood search, where various new exploration and exploitation strategies are proposed to improve the performance of the algorithm in terms of solution quality and computational efficiency.
Keywords/Search Tags:Vehicle routing, Problem, Algorithm, Milk
PDF Full Text Request
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