Zhang Haining, Moon Seung Ki
Faculty of Mechanical and Electrical Engineering, Kunming University of Science and Technology, Kunming 650500, China.
School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore 639798, Singapore.
ACS Appl Mater Interfaces. 2021 Nov 17;13(45):53323-53345. doi: 10.1021/acsami.1c04544. Epub 2021 May 27.
Recently, machine learning has gained considerable attention in noncontact direct ink writing because of its novel process modeling and optimization techniques. Unlike conventional fabrication approaches, noncontact direct ink writing is an emerging 3D printing technology for directly fabricating low-cost and customized device applications. Despite possessing many advantages, the achieved electrical performance of produced microelectronics is still limited by the printing quality of the noncontact ink writing process. Therefore, there has been increasing interest in the machine learning for process optimization in the noncontact direct ink writing. Compared with traditional approaches, despite machine learning-based strategies having great potential for efficient process optimization, they are still limited to optimize a specific aspect of the printing process in the noncontact direct ink writing. Therefore, a systematic process optimization approach that integrates the advantages of state-of-the-art machine learning techniques is in demand to fully optimize the overall printing quality. In this paper, we systematically discuss the printing principles, key influencing factors, and main limitations of the noncontact direct ink writing technologies based on inkjet printing (IJP) and aerosol jet printing (AJP). The requirements for process optimization of the noncontact direct ink writing are classified into four main aspects. Then, traditional methods and the state-of-the-art machine learning-based strategies adopted in IJP and AJP for process optimization are reviewed and compared with pros and cons. Finally, to further develop a systematic machine learning approach for the process optimization, we highlight the major limitations, challenges, and future directions of the current machine learning applications.
近年来,机器学习因其新颖的工艺建模和优化技术在非接触式直接墨水书写领域受到了广泛关注。与传统制造方法不同,非接触式直接墨水书写是一种新兴的3D打印技术,用于直接制造低成本和定制化的设备应用。尽管具有许多优点,但所生产的微电子器件的电学性能仍受非接触式墨水书写工艺打印质量的限制。因此,人们对机器学习在非接触式直接墨水书写工艺优化方面的兴趣与日俱增。与传统方法相比,基于机器学习的策略虽在高效工艺优化方面具有巨大潜力,但在非接触式直接墨水书写中仍局限于优化打印过程的特定方面。因此,需要一种集成了先进机器学习技术优势的系统工艺优化方法,以全面优化整体打印质量。在本文中,我们系统地讨论了基于喷墨打印(IJP)和气溶胶喷射打印(AJP)的非接触式直接墨水书写技术的打印原理、关键影响因素和主要局限性。非接触式直接墨水书写工艺优化的要求主要分为四个方面。然后,回顾并比较了IJP和AJP中用于工艺优化的传统方法和基于机器学习的先进策略的优缺点。最后,为进一步开发用于工艺优化的系统机器学习方法,我们强调了当前机器学习应用的主要局限性、挑战和未来方向。