An improved quantum evolutionary algorithm for large-scale manufacturing workshop scheduling problem

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Zhou, Fen [1 ]
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[1] Huanggang Normal University, Department of Computer Science, Huanggang,438000, China
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In the production process; there is a common problem with the sequencing of production plan and job control; namely the workshop scheduling problem; which has a nonnegligible impact on the production efficiency; economic efficiency and long-term development of the enterprise. In order to improve the production efficiency of large-scale manufacturing workshops and reduce invalid processing procedures; this paper proposed an improved Quantum Evolutionary Algorithm (QEA) based on quantum algorithms and workshop scheduling related theories; and constructed graphical user interface (GUI) based on the proposed algorithm. The study found that quantum algorithms have higher accuracy and convergence speed in solving complex problems; and are more suitable for solving scheduling problems in large-scale manufacturing workshops; the improved QEA has the advantages of good global search ability; fast convergence speed; and can be combined with other algorithms more easily; in actual production scheduling; dynamic scheduling should be taken into consideration; and the proposed algorithm must be adjusted in time according to sudden situations. This study provided a theoretical basis for the scheduling and procedure adjustment and optimization of large-scale production workshops. © 2020 Editura Politechnica. All rights reserved;
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页码:28 / 34
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