Ym. Zhang et R. Kovacevic, NEUROFUZZY MODEL-BASED PREDICTIVE CONTROL OF WELD FUSION ZONE GEOMETRY, IEEE transactions on fuzzy systems, 6(3), 1998, pp. 389-401
A closed-loop system is developed to control the weld fusion, which is
specified by the top-side and back-side bead widths of the weld pool.
Because in many applications only a top-side sensor is allowed, which
is attached to and moves with the welding torch, an image processing
algorithm and neurofuzzy model have been incorporated to measure and e
stimate the topside and back-side bead widths based on an advanced top
-side vision sensor. The welding current and speed are selected as the
control variables. It is found that the correlation between any outpu
t and input depends on the value of another input. This cross coupling
implies that a nonlinearity exists in the process being controlled. A
neurofuzzy model is used to model this nonlinear dynamic process. Bas
ed on the dynamic fuzzy model, a predictive control system has been de
veloped to control the welding process. Experiments confirmed that the
developed control system is effective in achieving the desired fusion
state despite the different disturbances.