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MANIPULATION

Fault detection for robot manipulators with parametric uncertainty: a prediction-error-based approach

Warren E. Dixon, Ian D. Walker, D.M. Dawson, J.P. Hartranft

Year
2000
Citations
158

Abstract

In this paper, we introduce a new approach to fault detection for robot manipulators. The technique, which is based on the isolation of fault signatures via filtered torque prediction error estimates, does not require measurements or estimates of manipulator acceleration as is the case with some previously suggested methods. The method is formally demonstrated to be robust under uncertainty in the robot parameters. Furthermore, an adaptive version of the algorithm is introduced, and shown to both improve coverage and significantly reduce detection times. The effectiveness of the approach is demonstrated by experiments with a two-joint manipulator system.

Keywords

Fault detection and isolationRobot manipulatorParametric statisticsComputer scienceRobotControl theory (sociology)AccelerationTorqueArtificial intelligenceControl engineering

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