Neuro-fuzzy friction compensation to robotic actuators
Sebastião Cícero Pinheiro Gomes, Cláudio Diniz
- 发表年份
- 2005
- 引用次数
- 6
摘要
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.
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