Combining Traveling Salesman and Traveling Repairman Problems: A multi-objective approach based on multiple scenarios

•Multi-objective Traveling Salesman or Repairman Problem with different scenarios.•Handling of uncertainty in travel data by generating alternative tour schedules.•Analysis of the Pareto set complexity for different networks.•Dynamic Programming procedures are introduced that generate the Pareto set...

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Veröffentlicht in:Computers & operations research 2019-12, Vol.112, p.104766, Article 104766
Hauptverfasser: Bock, Stefan, Klamroth, Kathrin
Format: Artikel
Sprache:eng
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Zusammenfassung:•Multi-objective Traveling Salesman or Repairman Problem with different scenarios.•Handling of uncertainty in travel data by generating alternative tour schedules.•Analysis of the Pareto set complexity for different networks.•Dynamic Programming procedures are introduced that generate the Pareto sets.•A computational study evaluates the Pareto sets for worst and average cases. This paper analyzes a multi-objective variant of the well-known Traveling Salesman Problem (TSP) and the Traveling Repairman Problem (TRP) in order to address the classical conflict between cost minimization (represented by the TSP) and customer waiting time minimization (represented by the TRP). By simultaneously considering different scenarios with individual travel times, uncertainty in travel data is handled. We interpret each travel time scenario as an individual objective function and introduce deterministic multi-objective counterpart models denoted as the Multi-Objective TSP (MOTSP), Multi-Objective TRP (MOTRP), and the combined Multi-Objective TSP and TRP models (MOTSRP), respectively. Problems with and without additional deadline restrictions are considered, and the complexity status of computing the Pareto fronts of various problem variants for different underlying networks is resolved. As a particularly interesting case, we consider the MOTSRP with deadlines on a line and show that the problem is intractable even in this simple setting. Nevertheless, we propose a Dynamic Programming approach that solves random instances to optimality in reasonable time. Moreover, the computational study additionally evaluates the average complexity of the Line-MOTSRP with deadlines for different numbers of scenarios. The computational study also analyzes the Pareto fronts that are generated for specifically designed extremal instances.
ISSN:0305-0548
1873-765X
0305-0548
DOI:10.1016/j.cor.2019.104766