首页> 外文期刊>International Journal of Simulation Modelling >ECONOMIC LOT-SIZE USING MACHINE LEARNING, PARALLELISM, METAHEURISTIC AND SIMULATION
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ECONOMIC LOT-SIZE USING MACHINE LEARNING, PARALLELISM, METAHEURISTIC AND SIMULATION

机译:经济批量使用机器学习,并行,沟展和模拟

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The use of discrete event simulation optimisation methods is a tool commonly used as a decision-making support system in industrial problems, concerning management and resource allocation in order to maximise a set of values regarding costs, revenues and other enterprise interests. The present study has proposed and tested an optimisation algorithm developed on Python, with different wall clock time reduction strategies including parallelism, the Greedy Randomized Adaptive Search Procedure (GRASP) population-based metaheuristic, and ten machine learning methods. With the selected best machine learning method (Decision Trees Regressor) 6 optimisation scenarios were generated and then applied to an economic lot-size problem for a theoretical shop floor. The results showed improvements in the reduction of the processing time of 95.0 % comparing the serial GRASP with the parallel machine learning GRASP, obtaining a solution of 94.0 % of the best local optimum. (Received in September 2018, accepted in March 2019. This paper was with the authors 2 months for 1 revision.)
机译:使用离散事件仿真优化方法是一种常用于工业问题的决策支持系统的工具,关于管理和资源分配,以最大化关于成本,收入和其他企业兴趣的一组价值。本研究提出并测试了在Python上开发的优化算法,具有不同的壁钟时间减少策略,包括并行性,贪婪随机自适应搜索程序(掌握)基于人口的成群质训练和十种机器学习方法。通过所选最佳机器学习方法(决策树回归),产生了6种优化场景,然后应用于理论车间的经济批量问题。结果表明,加工时间减少95.0%的加工时间,比较串行掌握与并联机器学习掌握,获得最佳局部最佳最佳溶液的94.0%。 (于2018年9月收到,于2019年3月接受。本文与作者为2个月进行了1次修订。)

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