论文标题
具有随机变量的优化模型,用于灵活生产物流计划
An optimization model with stochastic variables for flexible production logistics planning
论文作者
论文摘要
生产物流作为连接生产系统组成部分的链的重要作用。生产物流计划的最重要目标是保持生产系统的流动良好。但是,与生产系统相比,生产物流系统的计划,管理和数字化水平不够高,因此在生产物流系统中出现意外情况时,很难灵活地响应。已经提出了优化和启发式算法来解决这个问题,但是由于其僵化的性质,它们只能在有限的环境中实现所需的解决方案。在本文中,分析了生产和生产物流系统之间的关系,并通过使用时间窗口(PDPTW)优化模型来修改拾取和交付问题来介绍随机变量,以建立灵活的生产物流计划。考虑到随机变量,该模型为调度程序提供了新的视角,从而使他们可以基于数学模型具有新的见解。但是,由于优化模型仍然不足以响应动态环境,因此即使在机器学习模型等动态环境中,未来的研究也将涵盖如何获得有意义的结果。
Production logistics has an important role as a chain that connects the components of the production system. The most important goal of production logistics plans is to keep the flow of the production system well. However, compared to the production system, the level of planning, management, and digitalization of the production logistics system is not high enough, so it is difficult to respond flexibly when unexpected situations occur in the production logistics system. Optimization and heuristic algorithms have been proposed to solve this problem, but due to their inflexible nature, they can only achieve the desired solution in a limited environment. In this paper, the relationship between the production and production logistics system is analyzed and stochastic variables are introduced by modifying the pickup and delivery problem with time windows (PDPTW) optimization model to establish a flexible production logistics plan. This model, taking into account stochastic variables, gives the scheduler a new perspective, allowing them to have new insights based on the mathematical model. However, since the optimization model is still insufficient to respond to the dynamic environment, future research will cover how to derive meaningful results even in a dynamic environment such as a machine learning model.