Solving the mask data preparation scheduling problem using meta-heuristics

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Abstract

Mask data preparation (MDP) is a part of the mask data process for fabricating semiconductors, and its importance has commonly been neglected. This paper proposes an integer linear programming model and two meta-heuristics, a genetic algorithm (GA) and simulated annealing (SA), for solving the MDP scheduling problem (MDPSP). The proposed meta-heuristics are empirically evaluated using 768 simulation instances of MDPSP based on the characteristics of a real technology company and compared with the most commonly used first-come, first-served method. The experimental results reveal that the proposed GA and SA algorithms can critically improve the manufacturing schedule for semiconductor factories.

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Ying, K. C., Lin, S. W., Huang, C. Y., Liu, M., & Lin, C. T. (2019). Solving the mask data preparation scheduling problem using meta-heuristics. IEEE Access, 7, 24192–24203. https://doi.org/10.1109/ACCESS.2019.2899601

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