张俊红, 孟峻巍, 李相东, et al. Prediction of Coating Thickness and Optimization of Processing Parameters for Hot-dip Galvanization Steel Pipes[J]. Mechanical Science and Technology for Aerospace Engineering, 2025, 44(9): 1491-1498.
张俊红, 孟峻巍, 李相东, et al. Prediction of Coating Thickness and Optimization of Processing Parameters for Hot-dip Galvanization Steel Pipes[J]. Mechanical Science and Technology for Aerospace Engineering, 2025, 44(9): 1491-1498. DOI: 10.13433/j.cnki.1003-8728.20230332.
The galvanized steel pipe is used as the research objective
and the thickness parameters of 167 steel pipes were used as the modeling data and validation data. The sensitivity evaluation factors included the lead-up speed
lead-out speed
draw time
discharge time
press-down time
zinc liquid temperature
zinc dipping time
external blowing pressure and wind ring position. A prediction model for galvanized coating thickness of steel pipes based on the SVM model was established
and a sensitivity analysis of the calculation model was carried out by using the Sobol method to determine the influence of the processing parameters on the galvanized coating thickness. Four swarm intelligence optimization algorithms were used to optimize the SVM model
the prediction accuracy was analyzed
and the optimal combination of zinc coating thickness parameters was given by searching the optimal model. The results show that wind ring position
zinc dipping time
zinc liquid temperature
press down time and extraction speed are important parameters that affect the prediction results of the model. The SVM model by using the Golden jackal optimization (GJO) has a fast convergence speed and good prediction ability
which is the best model among four models. The model of GJO-SVM is optimized by using the genetic algorithm to obtain the optimal processing parameters. For the practical production
under the requirement of the standard
zinc material can be saved and efficiency can be improved.