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首页> 外文期刊>IEEE Transactions on Robotics and Automation >Optimizing robot motion strategies for assembly with stochastic models of the assembly process
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Optimizing robot motion strategies for assembly with stochastic models of the assembly process

机译:使用装配过程的随机模型优化装配的机器人运动策略

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摘要

Gross-motion planning for assembly is commonly considered as a distinct, isolated step between task sequencing/scheduling and fine-motion planning. In this paper the authors formulate a problem of delivering parts for assembly in a manner that integrates it with both the manufacturing process and the fine motions involved in the final assembly stages. One distinct characteristic of gross-motion planning for assembly is the prevalence of uncertainty involving time-in parts arrival, in request arrival, etc. The authors propose a stochastic representation of the assembly process, and design a state-feedback controller that optimizes the expected time that parts wait to be delivered. This leads to increased performance and a greater likelihood of stability in a manufacturing process. Six specific instances of the general framework are modeled and solved to yield optimal motion strategies for different robots operating under different assembly situations. Several extensions are also discussed.
机译:组装的总动作计划通常被认为是任务排序/计划与良好动作计划之间一个明显的隔离步骤。在本文中,作者提出了一个问题,即以与制造过程和最终组装阶段涉及的精细运动相结合的方式来交付要组装的零件。总装配运动计划的一个明显特征是不确定性的普遍性,涉及到零件到达时间,请求到达时间等。作者提出了装配过程的随机表示,并设计了状态反馈控制器来优化预期的状态零件等待交付的时间。这导致性能提高,并且在制造过程中具有更大的稳定性可能性。对通用框架的六个特定实例进行建模和求解,以针对在不同组装情况下运行的不同机器人产生最佳运动策略。还讨论了几个扩展。

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