论文标题
物理知识的贝叶斯学习电水动力学聚合物喷气打印动力学
Physics-Informed Bayesian Learning of Electrohydrodynamic Polymer Jet Printing Dynamics
论文作者
论文摘要
劳动密集型的反复试验仍在执行高度动态的多物理制造过程(例如基于电动力学的添加剂制造(AM)技术(E-JET打印))的校准。这些做法阻碍了这些技术的广泛采用,要求新的自我校准的电子杰特印刷机范式。为了满足这一需求,我们开发了GPJET,这是一种端到端物理学的贝叶斯学习框架,并在具有过程中的喷气机中监测功能的虚拟电子喷射机上对其进行了测试。 GPJET由三个模块组成:a)机器视觉模块,b)基于物理的建模模块,c)机器学习(ML)模块。我们证明,机器视觉模块可以使用自动化的并行计算机视觉工作流来实时从视频数据中实时提取高保真喷气机。此外,我们表明机器视觉模块与基于物理的建模模块相结合,可以充当对高保真数据的机器学习模块的闭环感觉反馈。以我们以数据为中心的方法提供支持,我们证明了在线ML计划者可以使用视频和物理学以最低的实验成本来积极学习喷气过程动态。 GPJET使我们更接近实现智能AM机器的愿景,这些机器可以有效地搜索复杂的过程结构 - 培训景观,并以成本和速度的一小部分为广泛的应用创建优化的材料解决方案。
Calibration of highly dynamic multi-physics manufacturing processes such as electro-hydrodynamics-based additive manufacturing (AM) technologies (E-jet printing) is still performed by labor-intensive trial-and-error practices. These practices have hindered the broad adoption of these technologies, demanding a new paradigm of self-calibrating E-jet printing machines. To address this need, we developed GPJet, an end-to-end physics-informed Bayesian learning framework, and tested it on a virtual E-jet printing machine with in-process jet monitoring capabilities. GPJet consists of three modules: a) the Machine Vision module, b) the Physics-Based Modeling Module, and c) the Machine Learning (ML) module. We demonstrate that the Machine Vision module can extract high-fidelity jet features in real-time from video data using an automated parallelized computer vision workflow. In addition, we show that the Machine Vision module, combined with the Physics-based modeling module, can act as closed-loop sensory feedback to the Machine Learning module of high- and low-fidelity data. Powered by our data-centric approach, we demonstrate that the online ML planner can actively learn the jet process dynamics using video and physics with minimum experimental cost. GPJet brings us one step closer to realizing the vision of intelligent AM machines that can efficiently search complex process-structure-property landscapes and create optimized material solutions for a wide range of applications at a fraction of the cost and speed.