Insertion operations are a critical element of most robotic assembly operation, and peg-in-hole (PiH) insertion is one of the most widely studied tasks in the industrial and academic manipulation communities. PiH insertion is in fact an entire class of problems, where the complexity of the problem can depend on the type of misalignment and contact formation during an insertion attempt. In this paper, we present the design and analysis of adaptive compliance controllers which can be used in insertion-type assembly tasks, including learning-based compliance controllers which can be used for insertion problems in the presence of uncertainty in the goal location during robotic assembly. We first present the design of compliance controllers which can ensure safe operation of the robot by limiting experienced contact forces during contact formation. Consequently, we present analysis of the force signature obtained during the contact formation to learn the corrective action needed to perform insertion. Finally, we use the proposed compliance controllers and learned models to design a policy that can successfully perform insertion in novel test conditions with almost perfect success rate. We validate the proposed approach on a physical robotic test-bed using a 6-DoF manipulator arm.
翻译:插入操作是大多数机器人组装操作的一个关键要素,插入嵌入孔(PiH)是工业和学术操作圈中研究最广泛的任务之一。插入PiH实际上是整个一类问题,问题的复杂性取决于插入尝试中的错配和接触形成的类型。在本文件中,我们介绍可用于插入型组装任务的适应性合规控制器的设计和分析,包括学习性合规控制器,可用于在机器人组装过程中目标位置存在不确定性的情况下插入问题。我们首先介绍合规控制器的设计,通过限制接触形成过程中有经验的接触力量,确保机器人的安全运行。因此,我们介绍对在接触形成过程中获得的威力信号的分析,以了解进行插入所需的纠正行动。最后,我们使用拟议的合规控制器和学习模型来设计一项政策,能够成功地在新型测试条件下以几乎完美的成功率进行插入。我们验证了使用6-DoF操纵器的物理机器人测试床的拟议方法。