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Neuro-fuzzy friction compensation to robotic actuators

Sebastião Cícero Pinheiro Gomes, Cláudio Diniz

Year
2005
Citations
6

Abstract

The main objective of this paper is to propose a new friction compensation mechanism applied to robotic actuators. Friction is a phenomenon that changes with time and with actuator's operational conditions. To deal with these parameters variations, it is proposed a neuro-fuzzy algorithm for friction identification and compensation. A neural network (NN) was trained off line. The NN output (compensation friction torque) is multiplied by a gain, obtained with a fuzzy inference algorithm, to deal with friction parameters variations and to adjust the compensation torque. Experimental results showed good performance, indicating that the actuator becomes approximately linear.

Keywords

Compensation (psychology)Control theory (sociology)ActuatorTorqueFriction torqueFuzzy control systemFuzzy logicArtificial neural networkComputer scienceControl engineering

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