首页> 外文会议>ASME annual dynamic systems and control conference >TRUST-BASED OPTIMAL SUBTASK ALLOCATION AND MODEL PREDICTIVE CONTROL FOR HUMAN-ROBOT COLLABORATIVE ASSEMBLY IN MANUFACTURING
【24h】

TRUST-BASED OPTIMAL SUBTASK ALLOCATION AND MODEL PREDICTIVE CONTROL FOR HUMAN-ROBOT COLLABORATIVE ASSEMBLY IN MANUFACTURING

机译:制造中基于信任的人机协作装配最优子任务分配和模型预测控制

获取原文

摘要

We develop a one human-one robot hybrid cell for collaborative assembly in manufacturing. The selected task is to assemble a few LEGO parts into a final assembled product following specified instructions and sequence in collaboration between the human and the robot. We develop a two-level feedforward optimization strategy that determines the optimal subtask allocation between the human and the robot for the selected assembly before the assembly starts. We derive dynamics models for human's trust in the robot and the robot's trust in the human for the assembly and estimate the trusts. The aim is to maintain satisfactory trust levels between the human and the robot through the application of the optimal subtask allocation. Again, subtask re-allocation is proposed to regain trusts if the trusts reduce to below the specified levels. Furthermore, it is hypothesized that fluctuations in human's trust in the robot may cause fluctuations in human's speeds and the human may appreciate if the robot adjusts its speeds with changes in human speeds. Hence, trust-based Model Predictive Control (MPC) is proposed to minimize the variations between human and robot speeds and to maximize the trusts. Experiment results prove the effectiveness of the hybrid cell, the feedforward optimal subtask allocation and of the trust-based MPC. The results also show that the overall assembly performance can be enhanced and the performance status can be monitored through a single dynamic parameter, i.e. the trust.
机译:我们开发了一个人对机器人混合单元,用于制造中的协作组装。选定的任务是按照指定的说明和人与机器人之间的协作顺序,将几个乐高零件组装成最终的组装产品。我们开发了两级前馈优化策略,该策略可以在装配开始之前确定所选装配的人与机器人之间的最佳子任务分配。我们推导了人类对机器人的信任以及组装机器人对人类的信任的动力学模型,并估算了信任。目的是通过应用最佳子任务分配来维持人与机器人之间令人满意的信任级别。同样,建议将子任务重新分配以在信任降低到指定级别以下时重新获得信任。此外,假设人类对机器人的信任度的波动可能会导致人类速度的波动,并且如果机器人根据人类速度的变化来调整其速度,那么人类可能会感激不已。因此,提出了基于信任的模型预测控制(MPC),以最大程度地减少人与机器人速度之间的差异并最大化信任。实验结果证明了混合单元,前馈最优子任务分配和基于信任的MPC的有效性。结果还表明,可以提高整体装配性能,并且可以通过单个动态参数即信任来监视性能状态。

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