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首页> 外文期刊>Journal of Management in Engineering >Integrating Chaotic Initialized Opposition Multiple-Objective Differential Evolution and Stochastic Simulation to Optimize Ready-Mixed Concrete Truck Dispatch Schedule
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Integrating Chaotic Initialized Opposition Multiple-Objective Differential Evolution and Stochastic Simulation to Optimize Ready-Mixed Concrete Truck Dispatch Schedule

机译:融合混沌初始对立多目标差分演化和随机模拟,以优化现成的混凝土卡车调度时间表

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Delivering ready-mixed concrete (RMC) efficiently to construction sites is a practical concern and one of the most challenging tasks for RMC batch managers. Batch plant managers must consider both time and order factors in order to set an RMC truck dispatch schedule that successfully balances batch plant (supplier) and construction site (customer) priorities. This paper develops an optimization framework that integrates discrete event simulation (DES) and multiobjective differential evolution (MODE) to determine the solutions for RMC truck dispatch scheduling. The model takes into consideration uncertainties as well as unexpected situations such as truck breakdowns during delivery. In addition, the chaotic initialized opposition multiobjective differential evolution (COMODE) algorithm is used to optimize the dispatching schedule, which minimizes the total waiting duration both of RMC trucks at construction sites and of construction sites for trucks. A batch plant case study is used to illustrate the capability of the new DES-COMODE algorithm, with results showing that DES-COMODE-generated nondominated solutions can assist batch plant managers to set efficient truck dispatch schedules in a timely manner, a task both difficult and time-consuming using current methods. Results demonstrate that DES-COMODE is superior to four currently used algorithms, including the nondominated sorting genetic algorithm (NSGA-II), the multiple objective particle swarm optimization (MOPSO), the multiple objective differential evolution (MODE), and the multiple objective artificial bee colony (MOABC) in terms of efficiency and effectiveness. (C) 2015 American Society of Civil Engineers.
机译:有效地将预拌混凝土(RMC)交付到建筑工地是一个实际问题,也是RMC批次管理者最具挑战性的任务之一。批处理工厂经理必须同时考虑时间和订单因素,以设置RMC卡车调度计划,以成功平衡批处理工厂(供应商)和施工现场(客户)的优先级。本文开发了一个优化框架,该框架集成了离散事件模拟(DES)和多目标差分进化(MODE)来确定RMC卡车调度计划的解决方案。该模型考虑了不确定性以及意外情况,例如运输过程中卡车故障。此外,使用混沌初始化的对立多目标差分进化算法(COMODE)来优化调度计划,从而使RMC卡车在建筑工地和卡车建筑工地的总等待时间最小化。批处理工厂案例研究用于说明新型DES-COMODE算法的功能,结果表明DES-COMODE生成的非支配解决方案可以帮助批处理工厂管理人员及时设置有效的卡车调度时间表,这既困难又困难和使用当前方法耗时。结果表明,DES-COMODE优于目前使用的四种算法,包括非支配排序遗传算法(NSGA-II),多目标粒子群优化(MOPSO),多目标差分进化(MODE)和多目标人工蜂群(MOABC)。 (C)2015年美国土木工程师学会。

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