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A unified solution framework for multi-attribute vehicle routing problems
Authors:Thibaut Vidal  Teodor Gabriel Crainic  Michel Gendreau  Christian Prins
Institution:1. CIRRELT, Département d’informatique et de recherche opérationnelle, Université de Montréal, Canada;2. CIRRELT, Département de management et technologie, École des Sciences de la Gestion, UQAM, Canada;3. CIRRELT, Département de mathématiques et de génie industriel, École Polytechnique, Montréal, Canada;4. ICD-LOSI, Université de Technologie de Troyes, France
Abstract:Vehicle routing attributes are extra characteristics and decisions that complement the academic problem formulations and aim to properly account for real-life application needs. Hundreds of methods have been introduced in recent years for specific attributes, but the development of a single, general-purpose algorithm, which is both efficient and applicable to a wide family of variants remains a considerable challenge. Yet, such a development is critical for understanding the proper impact of attributes on resolution approaches, and to answer the needs of actual applications. This paper contributes towards addressing these challenges with a component-based design for heuristics, targeting multi-attribute vehicle routing problems, and an efficient general-purpose solver. The proposed Unified Hybrid Genetic Search metaheuristic relies on problem-independent unified local search, genetic operators, and advanced diversity management methods. Problem specifics are confined to a limited part of the method and are addressed by means of assignment, sequencing, and route-evaluation components, which are automatically selected and adapted and provide the fundamental operators to manage attribute specificities. Extensive computational experiments on 29 prominent vehicle routing variants, 42 benchmark instance sets and overall 1099 instances, demonstrate the remarkable performance of the method which matches or outperforms the current state-of-the-art problem-tailored algorithms. Thus, generality does not necessarily go against efficiency for these problem classes.
Keywords:Vehicle routing  Multiple attributes  General-purpose solver
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