Prediction of the surface roughness of Ti-6Al-4 V alloy during surface grinding using machine learning models.
Journal:
Scientific reports
Published Date:
Jun 1, 2026
Abstract
This study presents a machine learning (ML)-based approach to predict surface roughness, Ra during dry grinding of Ti-6Al-4 V alloy using Decision Tree, Random Forest, Gradient Boosting, Extreme Gradient Boosting (XGBoost), Linear Regression, and Polynomial Regression models. Experiments were conducted with Aluminium Oxide (Al₂O₃) and Silicon Carbide (SiC) wheels at varying feed rates (0.2-0.9 mm/rev) and depths of cut (0.02-0.08 mm). Results showed that Al₂O₃ consistently produced lower Ra values.Increased feed and depth of cut led to rougher surfaces. XGBoost algorithm achieved the highest prediction accuracy (R² = 0.90), effectively capturing nonlinear dependencies. Feature importance analysis identified feed rate as the most influential factor (Importance Score > 0.85), followed by depth of cut and wheel type. These findings demonstrate the potential of ML, particularly XGBoost, for optimizing grinding parameters and enhancing surface quality in Ti-6Al-4 V machining.
Authors
Keywords
No keywords available for this article.