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Data-driven surrogate modelling of residual stresses in Laser Powder-Bed Fusion

Lucas Lestandi, James C. Wong, Ge Dong, Shemuel Joash Kuehsamy, Jakub Mikula, Guglielmo Vastola, Umesh Kizhakkinan, Clive Stanley Ford, David W. Rosen, Mai Hoang Dao, Mark Hyunpong Jhon

2023International Journal of Computer Integrated Manufacturing10 citationsDOIOpen Access PDF

Abstract

In order to enable the industrialization of additive manufacturing, it is necessary to develop process simulation models that can rapidly predict part quality. Although multi-physics simulations have shown success at predicting residual stress, distortion, microstructure and mechanical properties of additively manufactured parts, they are generally too computationally expensive to be directly used in applications, such as optimization, controls, or digital twinning. In this study, a critical evaluation is made of how data-driven surrogate models can be used to model the residual stress of parts fabricated by Laser Powder-Bed Fusion. Residual stress data is generated by using an inherent-strain based process simulation for two families of part geometries. Three different models using varying levels of sophistication are compared: a multilayer perceptron (MLP), a convolutional neural network (CNN) based on the U-Net architecture, and an interpolation-based method based on mapping geometries onto a reference. All three methods were found to be sufficient for part design, providing mechanical predictions for a CPU time below 0.2 s, representing a runtime speed-up of at least 3900 × . Neural network-based models are significantly more expensive to train compared to using interpolation. However, the generality of models based on the U-Net architecture is attractive for applications in optimization.

Topics & Concepts

Residual stressResidualSurrogate modelInterpolation (computer graphics)Artificial neural networkComputer scienceKrigingProcess (computing)Artificial intelligenceAlgorithmConvolutional neural networkMachine learningMaterials scienceOperating systemComposite materialMotion (physics)Additive Manufacturing Materials and ProcessesAdditive Manufacturing and 3D Printing TechnologiesManufacturing Process and Optimization
Data-driven surrogate modelling of residual stresses in Laser Powder-Bed Fusion | Litcius