Zhang Tianpeng, Zhao Yadong. GA-BP Neural Network Prediction of FSW Joint Properties Based on Dynamic Characteristics of Spindle[J]. Special Casting & Nonferrous Alloys, 2022,42(7):814-818.
Taking the dynamic characteristic(force and vibration acceleration) of the spindle during the friction stir welding process as input parameters
and tensile strength of the joint as output parameters
a genetic algorithm BP neural network model with 4×8×13×1 four-layer topology was established to predict the mechanical properties of 1060 Al/AZ31 B Mg dissimilar metals friction stir butt welding joints.37 and 8 groups of sample data were selected respectively to train and test the model. The results reveal that the average relative errors between the predicted values and the measured values of the training samples and the test samples are within the acceptable range
which are 4.1% and 5.4%
respectively
indicating the high prediction accuracy of the model.