计算机科学
调度(生产过程)
遗传算法
预制混凝土
遗传算法调度
地铁列车时刻表
组分(热力学)
生产(经济)
数学优化
分布式计算
公平份额计划
两级调度
工程类
机器学习
数学
操作系统
物理
宏观经济学
土木工程
经济
热力学
作者
Shuqiang Wang,Xi Zhang
标识
DOI:10.1038/s41598-023-42374-w
摘要
To address the processing scheduling problem involving multiple molds, components, and floors, we propose the Genetic Grey Wolf Optimizer (GGA) as a means to optimize the production scheduling of components in a production line. This approach combines the Grey Wolf algorithm with the genetic algorithm. Previous methods have overlooked the storage requirements arising from the delivery characteristics of prefabricated components, often resulting in unnecessary storage costs. Intelligent algorithms have been demonstrated to be effective in production scheduling, and thus, to enhance the efficiency of prefabricated component production scheduling, our study presents a model incorporating a production objective function. This model takes into account production resources and delivery characteristics constraints. Subsequently, we develop a hybrid algorithm, combining the grey wolf algorithm with the genetic algorithm, to search for the optimal solution with a minimal storage cost. We validate the model using a case study, and the experimental results demonstrate that GAGWO successfully identifies the best precast production schedule. Furthermore, the precast production plan, considering the delivery method, is found to be reasonable.
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