Elsevier

Applied Mathematical Modelling

Volume 74, October 2019, Pages 512-527
Applied Mathematical Modelling

Minimizing the number of machines with limited workload capacity for scheduling jobs with interval constraints

https://doi.org/10.1016/j.apm.2019.05.007Get rights and content
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Highlights

  • We consider a parallel machine scheduling problem.

  • The problem is motivated by the operation under emergency conditions of storage systems.

  • The relationship of the problem with other packing problems is considered.

  • Different heuristics and exact solution techniques are proposed.

  • The proposed method is able to solve large (250 jobs) instances within reduced running times.

Abstract

In this paper, we consider a parallel machine scheduling problem in which machines have a limited workload capacity and jobs have deadlines and release dates. The problem is motivated by the operation of energy storage management systems for microgrids under emergency conditions and generalizes some problems that have already been studied in the literature for their theoretical value. In this work, we propose heuristic and exact algorithms to solve the problem. The heuristics are adaptations of classical bin packing heuristics in which additional conditions on the feasibility of a solution are imposed, whereas the exact method is a branch-and-price approach. The results show that the branch-and-price approach is able to optimally solve random instances with up to 250 jobs within a time limit of one hour, while the heuristic procedures provide near optimal solution within reduced running times. Finally, we also provide additional complexity results for a special case of the problem.

Keywords

Scheduling
Parallel machines
Interval and workload constraints
Branch-and-price

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