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Biased random-key genetic algorithm for cobot assignment in an assembly/disassembly job shop scheduling problem

机译:在装配/拆卸作业商店调度问题中的Cobot分配偏置随机关键遗传算法

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Nowadays many manufacturing companies try to improve the performance of their processes by including innovative available technologies such as collaborative robots. Collaborative robots are robots where no safety distance is necessary, through cooperation with human workers they can increase production speed. In this paper we consider the collaborative robot assignment combined with the job shop scheduling problem. To solve this problem, we propose a genetic algorithm with a biased random-key encoding. The objective function for the optimization is a weighted function that factors in production cost and makespan that should be minimized. We propose a special encoding of the solution: the assignment of cobots to workstations, the assignment of tasks to different workstations and the priority of tasks. The results show how much the weighted objective function can be decreased by the deployment of additional collaborative robots in a real-world production line. Additionally, the biased random-key encoded results are compared to typical integer encoded solution. With the biased random-key encoding, we were able to find better results than with the standard integer encoding.
机译:如今,许多制造公司试图通过包括合作机器人等创新的可用技术,提高他们的流程的表现。协作机器人是无需安全距离的机器人,通过与人类工人的合作,他们可以提高生产速度。在本文中,我们将协作机器人分配与作业商店调度问题相结合。为了解决这个问题,我们提出了一种具有偏置随机密钥编码的遗传算法。优化的目标函数是一种加权函数,即生产成本和应该最小化的生产成本和Makespan的因素。我们提出了解决方案的特殊编码:将Cobots分配给工作站,将任务分配给不同的工作站和任务的优先级。结果表明,通过在真实的世界生产线中部署额外的协作机器人可以减少加权目标函数。另外,将偏置的随机密钥编码结果与典型的整数编码解决方案进行比较。通过偏置随机密钥编码,我们能够找到比标准整数编码更好的结果。

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