2023
DOI: 10.3390/robotics12050124
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A Comprehensive Pattern Recognition Neural Network for Collision Classification Using Force Sensor Signals

Abdel-Nasser Sharkawy,
Alfian Ma’arif,
Furizal
et al.

Abstract: In this paper, force sensor signals are classified using a pattern recognition neural network (PRNN). The signals are classified to show if there is a collision or not. In our previous work, the joints positions of a 2-DOF robot were used to estimate the external force sensor signal, which was attached at the robot end-effector, and the external joint torques of this robot based on a multilayer feedforward NN (MLFFNN). In the current work, the estimated force sensor signal and the external joints' torques from… Show more

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