The generalized consistent vehicle routing problem

Attila Kovacs, Bruce L. Golden, Richard F. Hartl, Sophie Parragh

Research output: Contribution to journalArticlepeer-review

Abstract

The consistent vehicle routing problem (ConVRP) takes customer satisfaction into account by assigning one driver to a customer and by bounding the variation in the arrival times over a given planning horizon. These requirements may be too restrictive in some applications. In the generalized ConVRP (GenConVRP), each customer is visited by a limited number of drivers and the variation in the arrival times is penalized in the objective function. The vehicle departure times may be adjusted to obtain stable arrival times. Additionally, customers are associated with AM/PM time windows. In contrast to previous work on the ConVRP, we do not use the template concept to generate routing plans. Our approach is based on a flexible large neighborhood search that is applied to the entire solution. Several destroy and repair heuristics have been designed to remove customers from the routes and to reinsert them at better positions. Arrival time consistency is improved by a simple 2-opt operator that reverses parts of particular routes. A computational study is performed on ConVRP benchmark instances and on new instances generated for the generalized problem. The proposed algorithm performs well on different variants of the ConVRP. It outperforms template-based approaches in terms of travel cost and time consistency. For the GenConVRP, we experiment with different input parameters and examine the trade-off between travel cost and customer satisfaction. Remarkable cost savings can be obtained by allowing more than one driver per customer.
Original languageEnglish
Pages (from-to)796 - 816
Number of pages21
JournalTransportation Science
Volume49
Issue number4
DOIs
Publication statusPublished - Nov 2015

Fields of science

  • 101015 Operations research
  • 101016 Optimisation
  • 502 Economics
  • 502028 Production management
  • 502017 Logistics
  • 502037 Location planning
  • 502050 Business informatics

JKU Focus areas

  • Social and Economic Sciences (in general)

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