研究目的
To model the complex relationship between CO2 laser–MIG hybrid welding parameters and tensile strength of the joint using artificial neural networks (ANN) and to determine the best ANN architecture for prediction.
研究成果
The 3-11-1 ANN architecture trained using BPNN with Bayesian regularization showed the best prediction capability for estimating the tensile strength of hybrid CO2 laser-MIG welded aluminium alloy plates. Sensitivity analysis indicated that maximum welding strength is obtained with high laser power, low welding speed, and low wire feed rate. The developed program for continuous performance evaluation of ANN architectures can be useful for online process monitoring and control.
研究不足
The study is limited to the specific range of input parameters (laser power, welding speed, and wire feed rate) and the material (AA8011 aluminium alloy) used in the experiments. The applicability of the developed ANN model to other materials or parameter ranges is not verified.