ROLGJan 31, 2023

Fine Robotic Manipulation without Force/Torque Sensor

arXiv:2301.13413v212 citationsh-index: 10
Originality Highly original
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This enables equipping millions of existing industrial robots with force sensing and control capabilities without hardware upgrades, addressing a cost and reliability issue in robotics.

The paper tackles the problem of estimating external forces and torques on robots without using expensive or vulnerable external sensors, by proposing a neural network method that relies solely on internal signals, and demonstrates its effectiveness in high-precision tasks like pin insertion with 100-micron clearance.

Force Sensing and Force Control are essential to many industrial applications. Typically, a 6-axis Force/Torque (F/T) sensor is mounted between the robot's wrist and the end-effector in order to measure the forces and torques exerted by the environment onto the robot (the external wrench). Although a typical 6-axis F/T sensor can provide highly accurate measurements, it is expensive and vulnerable to drift and external impacts. Existing methods aiming at estimating the external wrench using only the robot's internal signals are limited in scope: for example, wrench estimation accuracy was mostly validated in free-space motions and simple contacts as opposed to tasks like assembly that require high-precision force control. Here we present a Neural Network based method and argue that by devoting particular attention to the training data structure, it is possible to accurately estimate the external wrench in a wide range of scenarios based solely on internal signals. As an illustration, we demonstrate a pin insertion experiment with 100-micron clearance and a hand-guiding experiment, both performed without external F/T sensors or joint torque sensors. Our result opens the possibility of equipping the existing 2.7 million industrial robots with Force Sensing and Force Control capabilities without any additional hardware.

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