Bayesian optimization with Gaussian-process-based active machine learning for improvement of geometric accuracy in projection multi-photon 3D printing

IF 20.6 Q1 OPTICS
Jason E. Johnson, Ishat Raihan Jamil, Liang Pan, Guang Lin, Xianfan Xu
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Abstract

Multi-photon polymerization is a well-established, yet actively developing, additive manufacturing technique for 3D printing on the micro/nanoscale. Like all additive manufacturing techniques, determining the process parameters necessary to achieve dimensional accuracy for a structure 3D printed using this method is not always straightforward and can require time-consuming experimentation. In this work, an active machine learning based framework is presented for determining optimal process parameters for the recently developed, high-speed, layer-by-layer continuous projection 3D printing process. The proposed active learning framework uses Bayesian optimization to inform optimal experimentation in order to adaptively collect the most informative data for effective training of a Gaussian-process-regression-based machine learning model. This model then serves as a surrogate for the manufacturing process: predicting optimal process parameters for achieving a target geometry, e.g., the 2D geometry of each printed layer. Three representative 2D shapes at three different scales are used as test cases. In each case, the active learning framework improves the geometric accuracy, with drastic reductions of the errors to within the measurement accuracy in just four iterations of the Bayesian optimization using only a few hundred of total training data. The case studies indicate that the active learning framework developed in this work can be broadly applied to other additive manufacturing processes to increase accuracy with significantly reduced experimental data collection effort for optimization.

Abstract Image

基于高斯过程主动机器学习的贝叶斯优化提高投影多光子3D打印的几何精度
多光子聚合是一种成熟的、正在积极发展的用于微/纳米级3D打印的增材制造技术。与所有增材制造技术一样,确定使用这种方法实现结构3D打印尺寸精度所需的工艺参数并不总是直截了当的,并且可能需要耗时的实验。在这项工作中,提出了一种基于主动机器学习的框架,用于确定最近开发的高速逐层连续投影3D打印工艺的最佳工艺参数。提出的主动学习框架使用贝叶斯优化来告知最佳实验,以便自适应地收集最具信息量的数据,以有效训练基于高斯过程回归的机器学习模型。然后,该模型作为制造过程的替代品:预测实现目标几何形状的最佳工艺参数,例如,每个打印层的二维几何形状。使用三个不同尺度的三个代表性2D形状作为测试用例。在每种情况下,主动学习框架都提高了几何精度,在仅使用几百个总训练数据的贝叶斯优化的四次迭代中将误差大幅降低到测量精度之内。案例研究表明,在这项工作中开发的主动学习框架可以广泛应用于其他增材制造工艺,以提高准确性,同时显着减少实验数据收集以进行优化。
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来源期刊
Light-Science & Applications
Light-Science & Applications 数理科学, 物理学I, 光学, 凝聚态物性 II :电子结构、电学、磁学和光学性质, 无机非金属材料, 无机非金属类光电信息与功能材料, 工程与材料, 信息科学, 光学和光电子学, 光学和光电子材料, 非线性光学与量子光学
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803
审稿时长
2.1 months
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