Litcius/Paper detail

Mechanistic data-driven prediction of as-built mechanical properties in metal additive manufacturing

Xiaoyu Xie, Jennifer Bennett, Sourav Saha, Ye Lu, Jian Cao, Wing Kam Liu, Zhengtao Gan

2021npj Computational Materials138 citationsDOIOpen Access PDF

Abstract

Abstract Metal additive manufacturing provides remarkable flexibility in geometry and component design, but localized heating/cooling heterogeneity leads to spatial variations of as-built mechanical properties, significantly complicating the materials design process. To this end, we develop a mechanistic data-driven framework integrating wavelet transforms and convolutional neural networks to predict location-dependent mechanical properties over fabricated parts based on process-induced temperature sequences, i.e., thermal histories. The framework enables multiresolution analysis and importance analysis to reveal dominant mechanistic features underlying the additive manufacturing process, such as critical temperature ranges and fundamental thermal frequencies. We systematically compare the developed approach with other machine learning methods. The results demonstrate that the developed approach achieves reasonably good predictive capability using a small amount of noisy experimental data. It provides a concrete foundation for a revolutionary methodology that predicts spatial and temporal evolution of mechanical properties leveraging domain-specific knowledge and cutting-edge machine and deep learning technologies.

Topics & Concepts

Flexibility (engineering)Process (computing)Convolutional neural networkComponent (thermodynamics)Computer scienceEnhanced Data Rates for GSM EvolutionThermalDomain (mathematical analysis)Artificial intelligenceMechanical engineeringMaterials scienceEngineeringMathematicsMathematical analysisPhysicsOperating systemThermodynamicsMeteorologyStatisticsAdditive Manufacturing Materials and ProcessesMachine Learning in Materials ScienceAdditive Manufacturing and 3D Printing Technologies