Litcius/Paper detail

Mitigating Scattering Effects in Light-Based Three-Dimensional Printing Using Machine Learning

Shangting You, Jiaao Guan, Jeffrey Alido, Henry H. Hwang, Ronald Yu, Leilani Kwe, Hao Su, Shaochen Chen

2020Journal of Manufacturing Science and Engineering61 citationsDOIOpen Access PDF

Abstract

Abstract When using light-based three-dimensional (3D) printing methods to fabricate functional micro-devices, unwanted light scattering during the printing process is a significant challenge to achieve high-resolution fabrication. We report the use of a deep neural network (NN)-based machine learning (ML) technique to mitigate the scattering effect, where our NN was employed to study the highly sophisticated relationship between the input digital masks and their corresponding output 3D printed structures. Furthermore, the NN was used to model an inverse 3D printing process, where it took desired printed structures as inputs and subsequently generated grayscale digital masks that optimized the light exposure dose according to the desired structures’ local features. Verification results showed that using NN-generated digital masks yielded significant improvements in printing fidelity when compared with using masks identical to the desired structures.

Topics & Concepts

3D printingComputer scienceProcess (computing)GrayscaleLight scatteringDigital printingArtificial intelligenceDigital Light ProcessingThree dimensional printingScatteringArtificial neural networkDigital manufacturingMaterials scienceEngineering drawingOpticsEngineeringImage (mathematics)PhysicsComposite materialManufacturing engineeringOperating systemProjectorAdditive Manufacturing and 3D Printing TechnologiesIndustrial Vision Systems and Defect DetectionVisual Attention and Saliency Detection