Litcius/Paper detail

Predictive Modelling of Weld Bead Geometry in Wire Arc Additive Manufacturing

Kristijan Šket, M. Brezočnik, Timi Karner, Rok Belšak, Mirko Ficko, Tomaž Vuherer, Janez Gotlih

2025Journal of Manufacturing and Materials Processing15 citationsDOIOpen Access PDF

Abstract

This study investigates the predictive modelling of weld bead geometry in wire arc additive manufacturing (WAAM) through advanced machine learning methods. While WAAM is valued for its ability to produce large, complex metal parts with high deposition rates, precise control of the weld bead remains a critical challenge due to its influence on mechanical properties and dimensional accuracy. To address this problem, this study utilized machine learning approaches—Ridge regression, Lasso regression and Bayesian ridge regression, Random Forest and XGBoost—to predict the key weld bead characteristics, namely height, width and cross-sectional area. A Design of experiments (DOE) was used to systematically vary the welding current and travelling speed, with 3D weld bead geometries captured by laser scanning. Robust data pre-processing, including outlier detection and feature engineering, improved modelling accuracy. Among the models tested, XGBoost provided the highest prediction accuracy, emphasizing its potential for real-time control of WAAM processes. Overall, this study presents a comprehensive framework for predictive modelling and provides valuable insights for process optimization and the further development of intelligent manufacturing systems.

Topics & Concepts

BeadArc (geometry)Materials scienceWeldingGeometryMetallurgyComposite materialMathematicsAdditive Manufacturing Materials and ProcessesManufacturing Process and OptimizationWelding Techniques and Residual Stresses