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Hybrid metaheuristics for solving multi-depot pickup and delivery problems
File | Description | Size | Format | |
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Chaichiratikul-P-2014-PhD-Thesis.pdf | Thesis | 6.89 MB | Adobe PDF | View/Open |
Title: | Hybrid metaheuristics for solving multi-depot pickup and delivery problems |
Authors: | Chaichiratikul, Pairoj |
Item Type: | Thesis or dissertation |
Abstract: | In today's logistics businesses, increasing petrol prices, fierce competition, dynamic business environments and volume volatility put pressure on logistics service providers (LSPs) or third party logistics providers (3PLs) to be efficient, differentiated, adaptive, and horizontally collaborative in order to survive and remain competitive. In this climate, efficient computerised-decision support tools play an essential role. Especially, for freight transportation, e efficiently solving a Pickup and Delivery Problem (PDP) and its variants by an optimisation engine is the core capability required in making operational planning and decisions. For PDPs, it is required to determine minimum-cost routes to serve a number of requests, each associated with paired pickup and delivery points. A robust solution method for solving PDPs is crucial to the success of implementing decision support tools, which are integrated with Geographic Information System (GIS) and Fleet Telematics so that the flexibility, agility, visibility and transparency are fulfilled. If these tools are effectively implemented, competitive advantage can be gained in the area of cost leadership and service differentiation. In this research, variants of PDPs, which multiple depots or providers are considered, are investigated. These are so called Multi-depot Pickup and Delivery Problems (MDPDPs). To increase geographical coverage, continue growth and encourage horizontal collaboration, efficiently solving the MDPDPs is vital to operational planning and its total costs. This research deals with designing optimisation algorithms for solving a variety of real-world applications. Mixed Integer Linear Programming (MILP) formulations of the MDPDPs are presented. Due to being NP-hard, the computational time for solving by exact methods becomes prohibitive. Several metaheuristics and hybrid metaheuristics are investigated in this thesis. The extensive computational experiments are carried out to demonstrate their speed, preciseness and robustness. |
Content Version: | Open Access |
Issue Date: | Sep-2013 |
Date Awarded: | Mar-2014 |
URI: | http://hdl.handle.net/10044/1/30647 |
DOI: | https://doi.org/10.25560/30647 |
Supervisor: | Hadjiconstantinou, Eleni |
Department: | Imperial College Business School |
Publisher: | Imperial College London |
Qualification Level: | Doctoral |
Qualification Name: | Doctor of Philosophy (PhD) |
Appears in Collections: | Imperial College Business School PhD theses |