Batu Temesgen, Lemu Hirpa G, Shimels Hailu
Department of Aerospace Engineering, Ethiopian Space Science and Geospatial Institute, Addis Ababa P.O. Box 33679, Ethiopia.
Center of Armament and High Energy Materials, Institute of Research and Development, Ethiopian Defence University, Bishoftu P.O. Box 1041, Ethiopia.
Materials (Basel). 2023 Sep 18;16(18):6266. doi: 10.3390/ma16186266.
Additive manufacturing has gained significant popularity from a manufacturing perspective due to its potential for improving production efficiency. However, ensuring consistent product quality within predetermined equipment, cost, and time constraints remains a persistent challenge. Surface roughness, a crucial quality parameter, presents difficulties in meeting the required standards, posing significant challenges in industries such as automotive, aerospace, medical devices, energy, optics, and electronics manufacturing, where surface quality directly impacts performance and functionality. As a result, researchers have given great attention to improving the quality of manufactured parts, particularly by predicting surface roughness using different parameters related to the manufactured parts. Artificial intelligence (AI) is one of the methods used by researchers to predict the surface quality of additively fabricated parts. Numerous research studies have developed models utilizing AI methods, including recent deep learning and machine learning approaches, which are effective in cost reduction and saving time, and are emerging as a promising technique. This paper presents the recent advancements in machine learning and AI deep learning techniques employed by researchers. Additionally, the paper discusses the limitations, challenges, and future directions for applying AI in surface roughness prediction for additively manufactured components. Through this review paper, it becomes evident that integrating AI methodologies holds great potential to improve the productivity and competitiveness of the additive manufacturing process. This integration minimizes the need for re-processing machined components and ensures compliance with technical specifications. By leveraging AI, the industry can enhance efficiency and overcome the challenges associated with achieving consistent product quality in additive manufacturing.
从制造角度来看,增材制造因其提高生产效率的潜力而大受欢迎。然而,在预定的设备、成本和时间限制内确保产品质量的一致性仍然是一个长期存在的挑战。表面粗糙度作为一个关键的质量参数,在满足所需标准方面存在困难,给汽车、航空航天、医疗设备、能源、光学和电子制造等行业带来了重大挑战,因为在这些行业中表面质量直接影响性能和功能。因此,研究人员高度关注提高制造零件的质量,特别是通过使用与制造零件相关的不同参数来预测表面粗糙度。人工智能(AI)是研究人员用于预测增材制造零件表面质量的方法之一。许多研究利用人工智能方法开发了模型,包括最近的深度学习和机器学习方法,这些方法在降低成本和节省时间方面很有效,并且正在成为一种有前途的技术。本文介绍了研究人员采用的机器学习和人工智能深度学习技术的最新进展。此外,本文还讨论了在增材制造部件表面粗糙度预测中应用人工智能的局限性、挑战和未来方向。通过这篇综述论文可以明显看出,整合人工智能方法具有提高增材制造过程的生产率和竞争力的巨大潜力。这种整合最大限度地减少了对加工后零件进行再加工的需求,并确保符合技术规范。通过利用人工智能,该行业可以提高效率,并克服增材制造中实现产品质量一致性所面临的挑战。