Yadavalli Vamsi K
Department of Chemical and Life Science Engineering, Virginia Commonwealth University, 601 W Main Street, Richmond, VA 23284, United States of America.
Nanotechnology. 2025 May 12;36(22). doi: 10.1088/1361-6528/add304.
The integration of nanoscale production processes with Artificial intelligence (AI) algorithms has the potential to open new frontiers in nanomanufacturing by accelerating development timelines, optimizing production, reducing costs, enhancing quality control, and improving sustainability. Such changes are already underway with digital and cyber-physical technologies becoming increasingly intertwined with 'smart' manufacturing and industrial processes today. With the nanomanufacturing sector focused on the scalable production of complex (nano)materials, (nano)devices, and biologics, AI and its sub-fields, including machine learning (ML), are positioned to be key enablers of efficiency and innovation. In this topical review, we briefly explore the current state-of-the-art of how AI and ML techniques can be employed within nanomanufacturing. We discuss from a birds-eye perspective, the impact of AI/ML on various stages of the production lifecycle, and examine future opportunities and challenges. Key areas include computational design and discovery, process optimization, predictive maintenance, and quality assurance/defect detection. Further, challenges in implementation, process complexity, and ethical and regulatory considerations are explored in light of the increasing reliance on data-driven approaches for manufacturing.
纳米级生产工艺与人工智能(AI)算法的整合,有潜力通过加快开发时间表、优化生产、降低成本、加强质量控制和提高可持续性,在纳米制造领域开拓新的前沿。随着数字技术和网络物理技术如今越来越多地与“智能”制造和工业流程交织在一起,这样的变革已经在发生。由于纳米制造部门专注于复杂(纳米)材料、(纳米)器件和生物制品的可扩展生产,人工智能及其子领域,包括机器学习(ML),有望成为提高效率和推动创新的关键因素。在这篇专题综述中,我们简要探讨了人工智能和机器学习技术在纳米制造中的应用现状。我们从宏观角度讨论了人工智能/机器学习对生产生命周期各个阶段的影响,并审视了未来的机遇和挑战。关键领域包括计算设计与发现、工艺优化、预测性维护以及质量保证/缺陷检测。此外,鉴于制造业对数据驱动方法的依赖日益增加,我们还探讨了实施过程中的挑战、工艺复杂性以及伦理和监管方面的考量。