Robust schedules for tardiness optimization in job shop with interval uncertainty

Author:

Díaz Hernán1,Palacios Juan José1,Díaz Irene1,Vela Camino R1,González-Rodríguez Inés2

Affiliation:

1. Department of Computing, University of Oviedo , 33204, Gijón, Spain

2. Department of Maths, Stats and Computing , University of Cantabria, 39005, Santander, Spain

Abstract

Abstract This paper addresses a variant of the job shop scheduling problem with total tardiness minimization where task durations and due dates are uncertain. This uncertainty is modelled with intervals. Different ranking methods for intervals are considered and embedded into a genetic algorithm. A new robustness measure is proposed to compare the different ranking methods and assess their capacity to predict ‘expected delays’ of jobs. Experimental results show that dealing with uncertainty during the optimization process yields more robust solutions. A sensitivity analysis also shows that the robustness of the solutions given by the solving method increases when the uncertainty grows.

Funder

Spanish Government

Publisher

Oxford University Press (OUP)

Subject

Logic

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