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Adaptive residual filtering for safe human-robot collision detection under modeling uncertainties

Alex Caldas, Maria Makarov, Mathieu Grossard, Pedro Rodríguez-Ayerbe, Didier Dumur

Year
2013
Citations
22

Abstract

This paper presents an innovative collision detection strategy for robot manipulators in the context of the human-robot interaction. Classical approaches consisting of a comparison of the applied motor torques with those provided by a dynamic model can be sensitive to model uncertainties, leading to conservative detection thresholds. In this work, a “gray-box” model is designed based on a use-case study to shape the on-line evaluation of the residuals. This approach takes into account unstructured uncertainties relative to the speed-dependent non-linearities (e.g. friction phenomena) and the acceleration, both of particular interest when dealing with highly time-varying dynamics. Taking advantage of proprioceptive measurements of the robot state, the residual is adaptively filtered regarding these model uncertainties, and the evaluation step is improved by considering a dynamic threshold. The proposed multi-variable algorithm is implemented on the CEA robot arm ASSIST and the experimental results illustrate the enhancement of the detection sensitivity.

Keywords

ResidualRobotComputer scienceAccelerationControl theory (sociology)Context (archaeology)Sensitivity (control systems)TorqueCollisionSimulation

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