首页> 外文期刊>Theory and Practice of Logic Programming >Routing Driverless Transport Vehicles in Car Assembly with Answer Set Programming
【24h】

Routing Driverless Transport Vehicles in Car Assembly with Answer Set Programming

机译:使用答案集编程在汽车装配中路由无人驾驶运输车辆

获取原文
获取原文并翻译 | 示例

摘要

Automated storage and retrieval systems are principal components of modern production and warehouse facilities. In particular, automated guided vehicles nowadays substitute human-operated pallet trucks in transporting production materials between storage locations and assembly stations. While low-level control systems take care of navigating such driverless vehicles along programmed routes and avoid collisions even under unforeseen circumstances, in the common case of multiple vehicles sharing the same operation area, the problem remains how to set up routes such that a collection of transport tasks is accomplished most effectively. We address this prevalent problem in the context of car assembly at Mercedes-Benz Ludwigsfelde GmbH, a large-scale producer of commercial vehicles, where routes for automated guided vehicles used in the production process have traditionally been hand-coded by human engineers. Such adhoc methods may suffice as long as a running production process remains in place, while any change in the factory layout or production targets necessitates tedious manual reconfiguration, not to mention the missing portability between different production plants. Unlike this, we propose a declarative approach based on Answer Set Programming to optimize the routes taken by automated guided vehicles for accomplishing transport tasks. The advantages include a transparent and executable problem formalization, provable optimality of routes relative to objective criteria, as well as elaboration tolerance towards particular factory layouts and production targets. Moreover, we demonstrate that our approach is efficient enough to deal with the transport tasks evolving in realistic production processes at the car factory of Mercedes-Benz Ludwigsfelde GmbH.
机译:自动化的存储和检索系统是现代生产和仓库设施的主要组成部分。尤其是,如今,自动导引车取代了人力搬运车来在存储位置和装配站之间运输生产材料。尽管低级控制系统负责沿编程路线导航此类无人驾驶车辆,即使在不可预见的情况下也避免了碰撞,但在多辆车辆共享同一操作区域的常见情况下,问题仍然在于如何设置路线以收集运输任务最有效地完成。我们在大型商用车生产商Mercedes-Benz Ludwigsfelde GmbH的汽车装配中解决了这个普遍存在的问题,在生产过程中,传统上由人工工程师手动编码生产过程中使用的自动引导车的路线。只要生产过程保持原样,这种特殊方法就足够了,而工厂布局或生产目标的任何变化都需要繁琐的手动重新配置,更不用说在不同生产工厂之间缺少可移植性。与此不同的是,我们提出了一种基于“答案集编程”的声明性方法,以优化自动引导车辆完成运输任务的路线。优点包括透明和可执行的问题形式化,相对于客观标准可证明的最佳路线,以及对特定工厂布局和生产目标的精细加工公差。此外,我们证明了我们的方法足以应付梅赛德斯-奔驰路德维希斯菲尔德汽车公司在现实生产过程中不断发展的运输任务。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号