Joint Optimization of Operating Mode and Part Sequence for Robot Loading Process Considering Real-time Health Condition

Yunyi Kang, Feng Ju
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Abstract

In this paper, we develop a decision-making framework for real-time production control considering the condition variation of robotic arms. Specifically, the temperature dynamics of robotic arms under different operation conditions is analyzed to assess the robotic arm’s health status. Statistical models based on the observation of real-time information is firstly built to characterize the relationship between the robot temperature and time, considering various operation modes (i.e., capacity, working mode, speed). Then a loading process using the robotic arm is investigated and a continuous space Markov decision model is formulated to minimize the total processing time for a limited batch of products with different types. Numerical studies suggest that the performance of the proposed method is significantly better than the benchmark plans. Such a study reflects the necessity of joint consideration on the health condition of production assets together with production control, to maintain high productivity and utilization of the assets in production systems.
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考虑实时健康状况的机器人装载过程操作模式和零件顺序联合优化
在本文中,我们开发了一个考虑机械臂状态变化的实时生产控制决策框架。具体而言,分析了不同操作条件下机械臂的温度动力学,以评估机械臂的健康状态。首先建立基于实时信息观测的统计模型,在考虑各种运行模式(即容量、工作模式、速度)的情况下,表征机器人温度与时间的关系。在此基础上,对机械臂装载过程进行了研究,并建立了一个连续空间马尔可夫决策模型,以最小化有限批次不同类型产品的总加工时间。数值研究表明,该方法的性能明显优于基准方案。这样的研究反映了在生产控制的同时,必须共同考虑生产资产的健康状况,以保持生产系统中资产的高生产率和利用率。
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