2017
DOI: 10.1002/nav.21744
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Parallel machine scheduling with eligibility constraints: A composite dispatching rule to minimize total weighted tardiness

Abstract: We study a parallel machine scheduling problem, where a job j can only be processed on a specific subset of machines Mj, and the Mj subsets of the n jobs are nested. We develop a two‐phase heuristic for minimizing the total weighted tardiness subject to the machine eligibility constraints. In the first phase, we compute the factors and statistics that characterize a problem instance. In the second phase, we propose a new composite dispatching rule, the Apparent Tardiness Cost with Flexibility considerations (A… Show more

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Cited by 18 publications
(2 citation statements)
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“…Şen and Bülbül (2015) formulated the weighted tardiness and earliness/tardiness problem on unrelated parallel machines as a mixed-integer linear program and devised a computationally effective Benders decomposition algorithm to solve the proposed model with strong preemptive relaxation after providing a tight lower bound. Su et al (2017) developed a two-phase heuristic for minimizing the total weighted tardiness subject to the machine eligibility constraints in the PMS problem and performed tests using a real dataset from a large hospital in China. Kramer and Subramanian (2019) designed a unified heuristic algorithm for a large class of earliness-tardiness scheduling problems in the single/parallel machine, and tested in thousands of instances of several earliness-tardiness scheduling problems and particular cases to show the good performance of proposed algorithm.…”
Section: Introductionmentioning
confidence: 99%
“…Şen and Bülbül (2015) formulated the weighted tardiness and earliness/tardiness problem on unrelated parallel machines as a mixed-integer linear program and devised a computationally effective Benders decomposition algorithm to solve the proposed model with strong preemptive relaxation after providing a tight lower bound. Su et al (2017) developed a two-phase heuristic for minimizing the total weighted tardiness subject to the machine eligibility constraints in the PMS problem and performed tests using a real dataset from a large hospital in China. Kramer and Subramanian (2019) designed a unified heuristic algorithm for a large class of earliness-tardiness scheduling problems in the single/parallel machine, and tested in thousands of instances of several earliness-tardiness scheduling problems and particular cases to show the good performance of proposed algorithm.…”
Section: Introductionmentioning
confidence: 99%
“…Similarly, Jain and Foley (2016) conclude that under high load levels and long interruptions, the rules work better than adapting a complete schedule. Effective DRs have been developed for different problems, such as the classical job shops (Chen and Matis, 2013), shops with batch release (Xiong et al, 2017) and parallel machines (Su et al, 2017). The applications are not limited to manufacturing.…”
Section: Introductionmentioning
confidence: 99%