Ghandehari Anita, Tavares-Negrete Jorge A, Rajendran Jerome, Yi Qian, Esfandyarpour Rahim
Department of Electrical Engineering and Computer Science, University of California, Irvine, CA, 92697, USA.
Henry Samueli School of Engineering, University of California, Irvine, CA, 92697, USA.
Discov Nano. 2024 Dec 16;19(1):204. doi: 10.1186/s11671-024-04155-w.
Pneumatic 3D-nanomaterial printing, a prominent additive manufacturing technique, excels in processing advanced materials like MXene, crucial for applications in nano-energy, flexible electronics, and sensors. A key challenge in this domain is optimizing process parameters-applied pressure, ink concentration, nozzle diameter, and printing velocity-to achieve uniform, high-quality prints with the desired filament diameter. Traditional trial-and-error methods often result in significant material waste and time consumption. To address this, our study introduces a comprehensive pipeline that initially assesses whether the selected process parameters yield uniform, high-quality MXene prints. Subsequently, it employs a Physics-Guided Artificial Neural Network (PGANN) to predict the filament diameter based on these parameters, integrating fundamental physical principles of the printing process with experimental data. Our findings demonstrate that using an XGBoost classifier, we can classify printed filament quality with an accuracy of 90.44%. Furthermore, the PGANN model shows exceptional performance in predicting the filament diameter, achieving a Pearson Correlation Coefficient (PCC) of 0.9488, a Mean Squared Error (MSE) of 0.000092 mm, and a Mean Absolute Error (MAE) of 0.00711 mm. This pipeline significantly streamlines the process for researchers, facilitating the selection of optimal printing parameters to consistently achieve high-quality prints and accurately produce the desired filament diameter tailored to specific applications.
气动3D纳米材料打印是一种卓越的增材制造技术,在处理诸如MXene等先进材料方面表现出色,这些材料对于纳米能源、柔性电子和传感器应用至关重要。该领域的一个关键挑战是优化工艺参数——施加压力、油墨浓度、喷嘴直径和打印速度,以实现具有所需细丝直径的均匀、高质量打印。传统的试错方法往往会导致大量材料浪费和时间消耗。为了解决这个问题,我们的研究引入了一个综合流程,该流程首先评估所选工艺参数是否能产生均匀、高质量的MXene打印。随后,它采用物理引导人工神经网络(PGANN)根据这些参数预测细丝直径,将打印过程的基本物理原理与实验数据相结合。我们的研究结果表明,使用XGBoost分类器,我们可以以90.44%的准确率对打印细丝质量进行分类。此外,PGANN模型在预测细丝直径方面表现出卓越性能,皮尔逊相关系数(PCC)为0.9488,均方误差(MSE)为0.000092毫米,平均绝对误差(MAE)为0.00711毫米。这个流程显著简化了研究人员的流程,有助于选择最佳打印参数,以始终实现高质量打印,并准确生产出适合特定应用的所需细丝直径。