solving single machine sequencing to minimize maximum lateness problem using mixed integer programming
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abstract
despite existing various integer programming for sequencing problems, there is not enoughinformation about practical values of the models. this paper considers the problem of minimizing maximumlateness with release dates and presents four different mixed integer programming (mip) models to solve thisproblem. these models have been formulated for the classical single machine problem, namely sequenceposition(sp), disjunctive (dj), linear ordering (lo) and hybrid (hy). the main focus of this research is onstudying the structural properties of minimizing maximum lateness in a single machine using mipformulations. this comparison helps us know the characteristics and priority of different models inminimizing maximum lateness. regarding to these characteristics and priorities, while solving the latenessproblem in the procedure of solving a real-world problem, we apply the lateness model which yields insolution in shortest period of time and try not to use formulations which never lead to solution for large-scaleproblems. beside single machine, these characteristics are applicable to more complicated machineenvironment. we generate a set of test problems in an attempt to solve the formulations, using cplexsoftware. according to the computational results, a detailed comparison between proposed mip formulationsis reported and discussed in order to determine the best formulation which is computationally efficient andstructurally parsimonious to solve the considering problem. among the four presented formulations,sequence-position (sp) has the most efficient computational time to find the optimal solution.
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Journal title:
journal of quality engineering and production optimizationISSN
volume 1
issue 1 2015
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