Bridging the Sim-to-Real Gap with Dynamic Compliance Tuning for Industrial Insertion

Zhang, Xiang, Tomizuka, Masayoshi, Li, Hui
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Abstract

Contact-rich manipulation tasks often exhibit a large sim-to-real gap. For instance, industrial assembly tasks frequently involve tight insertions where the clearance is less than \(0.1\) mm and can even be negative when dealing with a deformable receptacle. This narrow clearance leads to complex contact dynamics that are difficult to model accurately in simulation, making it challenging to transfer simulation-learned policies to real-world robots. In this paper, we propose a novel framework for robustly learning manipulation skills for real-world tasks using only the simulated data. Our framework consists of two main components: the ``Force Planner'' and the ``Gain Tuner''. The Force Planner is responsible for planning both the robot motion and desired contact forces, while the Gain Tuner dynamically adjusts the compliance control gains to accurately track the desired contact forces during task execution. The key insight of this work is that by adaptively adjusting the robot's compliance control gains during task execution, we can modulate contact forces in the new environment, thereby generating trajectories similar to those trained in simulation and narrows the sim-to-real gap. Experimental results show that our method, trained in simulation on a generic square peg-and-hole task, can generalize to a variety of real-world insertion tasks involving narrow or even negative clearances, all without requiring any fine-tuning.
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用工业插入的动态顺应调整弥合模拟与真实的差距
富接触操作任务通常表现出很大的模拟与真实差距。例如,工业装配任务经常涉及紧密插入,其中间隙小于\(0.1\) mm,并且在处理可变形的插座时甚至可能是负的。这种狭窄的间隙导致复杂的接触动力学,难以在仿真中精确建模,这使得将仿真学习的策略转移到现实世界的机器人中具有挑战性。在本文中,我们提出了一种新的框架,用于仅使用模拟数据来鲁棒学习现实世界任务的操作技能。我们的框架由两个主要部分组成:“力规划器”和“增益调谐器”。力规划器负责规划机器人运动和期望的接触力,而增益调谐器动态调整顺应性控制增益,以在任务执行过程中准确跟踪期望的接触力。这项工作的关键观点是,通过在任务执行过程中自适应调整机器人的顺应性控制增益,我们可以在新环境中调节接触力,从而产生与模拟中训练的轨迹相似的轨迹,并缩小模拟与真实的差距。实验结果表明,我们的方法在一个通用的方形钉孔任务的模拟训练中,可以推广到各种现实世界的插入任务,包括窄间隙甚至负间隙,所有这些都不需要任何微调。
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