Optimization method to integrate driver consistency and route balancing in a heterogeneous multi-period dial-a-ride problem
Hubert, Margot
Promotor(s) : Paquay, Célia
Date of defense : 21-Jun-2023/28-Jun-2023 • Permalink : http://hdl.handle.net/2268.2/17204
Details
Title : | Optimization method to integrate driver consistency and route balancing in a heterogeneous multi-period dial-a-ride problem |
Author : | Hubert, Margot |
Date of defense : | 21-Jun-2023/28-Jun-2023 |
Advisor(s) : | Paquay, Célia |
Committee's member(s) : | Baratto, Marie |
Language : | English |
Keywords : | [en] dial-a-ride problem [en] driver consistency [en] route balancing [en] simulated annealing [en] meta-heuristic |
Discipline(s) : | Business & economic sciences > Production, distribution & supply chain management |
Institution(s) : | Université de Liège, Liège, Belgique |
Degree: | Master en ingénieur de gestion, à finalité spécialisée en Supply Chain Management and Business Analytics |
Faculty: | Master thesis of the HEC-Ecole de gestion de l'Université de Liège |
Abstract
[en] The classic Dial-A-Ride Problem (DARP) is commonly encountered in door-to-door transportation
services catering to elderly or disabled individuals (Cordeau and Laporte (2003)). In the DARP,
the goal is to plan a set of routes and associated schedules for a fleet of vehicles in order to fulfill
outbound and inbound requests from patients while adhering to various constraints. The objective function of the DARP can vary depending on the specific application, encompassing economic and service-level considerations.
The DARP has been extensively studied in the research community for several decades; some
notable recent comprehensive surveys on the topic can be found in Ho et al. (2018) and Molenbruch et al. (2017b).
The primary objective of the Dial-A-Ride Problem (DARP) is to fulfill the transportation requirements of patients while ensuring their comfort and satisfaction. However, it is equally important to consider the well-being of the drivers who provide these services. To date, no research has focused on investigating the satisfaction of both patients and drivers within the context of the DARP. Specifically, only a few studies have explored the preference of patients to be served by a consistent set of drivers over multiple time periods, known as driver consistency (Braekers and Kovacs (2016)). Additionally, the concept of route balancing, which ensures an equitable distribution of workload among drivers, has not been extensively studied in the existing literature, except in the context of Vehicle Routing Problems (VRPs) (Matl et al. (2018)).
This thesis is dedicated to the development and implementation of a Simulated Annealing (SA)
algorithm specifically tailored for the Multi-Period Dial-A-Ride Problem (MP-DARP). The primary
focus is on minimizing the number of distinct drivers encountered by each patient. As a secondary objective, the algorithm aims to achieve a balanced distribution of workload among drivers. The main goal of this research is to demonstrate the feasibility of simultaneously optimizing patient satisfaction and ensuring fairness among drivers within a unified problem formulation for the MPDARP. The dataset used in this study was initially created by Braekers and Kovacs (2016) and serves as the foundation for the testing and evaluation of the algorithm.
The results obtained from this study shed light on the potential advantages of integrating both
patient satisfaction and driver fairness in transportation systems. These findings contribute to
improving the overall quality of service in the context of DARPs. While further research is needed
to explore the potential limitations of the proposed system, this pioneering work reveals new avenues for investigation in the field of DARPs.
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Size: 1.65 MB
Format: Microsoft Excel XML
Description:
Size: 1.65 MB
Format: Microsoft Excel XML
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