Delicate snap-fit assemblies, such as inserting a lens into an eye-wear frame or during electronics assembly, demand timely engagement detection and rapid force attenuation to prevent overshoot-induced component damage or assembly failure. We address these challenges with two key contributions. First, we introduce SnapNet, a lightweight neural network that detects snap-fit engagement from joint-velocity transients in real-time, showing that reliable detection can be achieved using proprioceptive signals without external sensors. Second, we present a dynamical-systems-based dual-arm coordination framework that integrates SnapNet driven detection with an event-triggered impedance modulation, enabling accurate alignment and compliant insertion during delicate snap-fit assemblies. Experiments across diverse geometries on a heterogeneous bimanual platform demonstrate high detection accuracy (over 96% recall) and up to a 30% reduction in peak impact forces compared to standard impedance control.
翻译:精密卡扣装配,例如将镜片插入眼镜框或在电子设备组装过程中,需要及时检测卡扣啮合并快速衰减力,以防止因过冲导致的组件损坏或装配失败。我们通过两项关键贡献应对这些挑战。首先,我们提出了SnapNet,一种轻量级神经网络,可从关节速度瞬态实时检测卡扣啮合,表明仅使用本体感受信号而无需外部传感器即可实现可靠检测。其次,我们提出了一种基于动态系统的双臂协调框架,该框架将SnapNet驱动的检测与事件触发的阻抗调制相结合,在精密卡扣装配过程中实现精确对准与柔顺插入。在异构双手平台上对不同几何形状进行的实验表明,与标准阻抗控制相比,该方法实现了高检测准确率(召回率超过96%),并将峰值冲击力降低了高达30%。