Purpose – Top‐face control of weld penetration in TIG welding is required for fully automated systems to overcome variations in the welding process and fixturing systems.Design/methodology/approach – This paper presents a system based upon based on the real‐time vision measurement and control of the upper surface or “topface” weld pool size. The primary objective has been to demonstrate the feasibility of using vision‐based image processing to provide measurements and the subsequent control of upper bead weld geometrical properties during the weld formation or molten phase and correlate this to the backface weld bead size.Findings – Vision based measurement of the upper surface of the weld pool can be used, in real‐time, to control the weld pool size. This allows more uniform weld penetration to be achieved in the presence of disturbances.Research limitations/implications – The system requires that the pool edges can be accurately identified using a correlation method. This requires images with good contr...
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