Litcius/Paper detail

Heuristic approaches for the family traveling salesman problem

Raquel Bernardino, Ana Paias

2020International Transactions in Operational Research21 citationsDOI

Abstract

Abstract In this article, we address the family traveling salesman problem (FTSP), an NP‐hard problem that may be seen as a generalization of the traveling salesman problem. In the FTSP, the set of cities is partitioned into several families and one wants to find the minimum cost route that visits a given number of cities in each family. We propose two metaheuristics, a population‐based method and a local search method, and a hybrid algorithm, which combines a branch‐and‐cut algorithm with a local search procedure. All the proposed methods improve the best known upper bounds from the literature. The local search method and the hybrid algorithm improve the best known upper bounds for all the benchmark instances with unknown optimal value, while the population‐based method improves the best known upper bounds for all instances, except two. Furthermore, we developed an instance generator to create additional test instances with different visit patterns. These newly generated instances were considered in the computational experiment and, thus, we provide optimal values or upper bounds for each instance. Additionally, we created a website dedicated to the FTSP, where this information is made available to the scientific community ( http://familytsp.rd.ciencias.ulisboa.pt/ ).

Topics & Concepts

Travelling salesman problemMathematical optimizationGeneralizationBenchmark (surveying)Local search (optimization)HeuristicPopulationComputer science2-optMetaheuristicUpper and lower boundsTraveling purchaser problemMathematicsBottleneck traveling salesman problemGeographyGeodesySociologyDemographyMathematical analysisVehicle Routing Optimization MethodsFacility Location and Emergency ManagementMetaheuristic Optimization Algorithms Research