Litcius/Paper detail

Machine learning methods to predict the fatigue life of selectively laser melted Ti6Al4V components

Alessio Centola, Alberto Ciampaglia, Andrea Tridello, Davide Salvatore Paolino

2023Fatigue & Fracture of Engineering Materials & Structures22 citationsDOIOpen Access PDF

Abstract

Abstract The aim of the present paper is to predict the fatigue life of Selectively Laser Melted (SLMed) Ti6Al4V components via the process parameters, the thermal treatments, the surface treatments and the stress amplitude, adopting machine learning techniques to reduce the cost of further fatigue testing, and to deliver better predictive fatigue designs. The studies resulted in reliable algorithms capable of predicting trustful fatigue curves. The methods have been trained with experimental data available in the literature and validated on testing sets to assess the extrapolation limits and to compare the different methods. The behavior of the networks has also been mapped by varying one SLM process parameter at the time, highlighting how each one affects the life.

Topics & Concepts

ExtrapolationMaterials scienceProcess (computing)LaserTitanium alloyAmplitudeMachine learningComputer scienceArtificial intelligenceComposite materialMathematicsOpticsOperating systemAlloyPhysicsMathematical analysisAdditive Manufacturing Materials and ProcessesAdvanced machining processes and optimizationWelding Techniques and Residual Stresses