Scheduling jobs with truncated exponential learning functions

Scheduling jobs with truncated exponential learning functions

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Article ID: iaor2014266
Volume: 7
Issue: 8
Start Page Number: 1857
End Page Number: 1873
Publication Date: Dec 2013
Journal: Optimization Letters
Authors: , , ,
Keywords: learning, heuristics
Abstract:

In this paper we consider the single machine scheduling problem with truncated exponential learning functions. By the truncated exponential learning functions, we mean that the actual job processing time is a function which depends not only on the total normal processing times of the jobs already processed but also on a control parameter. The use of the truncated function is to model the phenomenon that the learning of a human activity is limited. We show that even with the introduction of the proposed model to job processing times, several single machine problems remain polynomially solvable. For the following three objective functions, the total weighted completion time, the discounted total weighted completion time, the maximum lateness, we present heuristic algorithms according to the corresponding problems without truncated exponential learning functions. We also analyse the worst‐case bound of our heuristic algorithms.

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