Title :
Machine assisted manual torch operation in gas tungsten arc welding process
Author :
Ning Huang ; ShuJun Chen ; YuMing Zhang
Author_Institution :
Welding Res. Inst., Beijing Univ. of Technol., Beijing, China
Abstract :
Skills possessed by human welders typically require a long time to develop. Especially, maintaining the torch to travel in desired speed is challenging. In this paper, a feedback control system is designed and implemented to assist the welder to adjust the torch movement for the desired speed in manual gas tungsten arc welding (GTAW) process. To this end, an innovative helmet based manual welding platform is proposed and developed. In this system, vibrators are installed on the helmet to generate vibration sounds to instruct the welder to speed or slow down the torch movement. The torch movement is monitored by a leap motion sensor. The torch speed is used as the feedback for the control algorithm to determine how to change the vibrations. To design the control algorithm, dynamic experiments are conducted to correlate the arm movement (torch speed) to the vibration control signal. Linear model is firstly identified using standard least squares method, and the model is analyzed. A nonlinear Adaptive Neuro-Fuzzy Inference System (ANFIS) model is then proposed to improve the modeling performance. The resultant nonlinear ANFIS model can estimate the welder´s response on the welding speed with acceptable accuracy. Based on the response model, a PID control algorithm has been designed and implemented to control the welder arm movement for desired torch speed. Experiments verified the effectiveness of the system for the desired speed with acceptable accuracy.
Keywords :
adaptive control; arc welding; control system synthesis; feedback; fuzzy reasoning; least squares approximations; motion control; nonlinear control systems; vibration control; GTAW process; PID control algorithm; dynamic experiment; feedback control system design; gas tungsten arc welding process; helmet based manual welding platform; human welder; leap motion sensor; least squares method; linear model; machine assisted manual torch operation; nonlinear ANFIS model; nonlinear adaptive neuro-fuzzy inference system model; torch movement; torch speed; vibration control signal; vibration sound; welder arm movement; welder response; welding speed; Adaptation models; Data models; Manuals; Mathematical model; Monitoring; Vibrations; Welding;
Conference_Titel :
Advanced Intelligent Mechatronics (AIM), 2015 IEEE International Conference on
DOI :
10.1109/AIM.2015.7222750