Luleci Furkan, Catbas F Necati
Department of Civil, Environmental, and Construction Engineering, University of Central Florida, Orlando, FL 32816 USA.
AI Civil Eng. 2023;2(1):9. doi: 10.1007/s43503-023-00017-z. Epub 2023 Aug 23.
The use of deep generative models (DGMs) such as variational autoencoders, autoregressive models, flow-based models, energy-based models, generative adversarial networks, and diffusion models has been advantageous in various disciplines due to their high data generative skills. Using DGMs has become one of the most trending research topics in Artificial Intelligence in recent years. On the other hand, the research and development endeavors in the civil structural health monitoring (SHM) area have also been very progressive owing to the increasing use of Machine Learning techniques. As such, some of the DGMs have also been used in the civil SHM field lately. This short review communication paper aims to assist researchers in the civil SHM field in understanding the fundamentals of DGMs and, consequently, to help initiate their use for current and possible future engineering applications. On this basis, this study briefly introduces the concept and mechanism of different DGMs in a comparative fashion. While preparing this short review communication, it was observed that some DGMs had not been utilized or exploited fully in the SHM area. Accordingly, some representative studies presented in the civil SHM field that use DGMs are briefly overviewed. The study also presents a short comparative discussion on DGMs, their link to the SHM, and research directions.
诸如变分自编码器、自回归模型、基于流的模型、基于能量的模型、生成对抗网络和扩散模型等深度生成模型(DGM),由于其强大的数据生成能力,在各个学科中都具有优势。近年来,使用DGM已成为人工智能领域最热门的研究课题之一。另一方面,由于机器学习技术的使用日益增加,土木结构健康监测(SHM)领域的研发工作也取得了很大进展。因此,一些DGM最近也被应用于土木SHM领域。这篇简短的综述通讯文章旨在帮助土木SHM领域的研究人员理解DGM的基本原理,从而帮助他们将其应用于当前和未来可能的工程应用中。在此基础上,本研究以比较的方式简要介绍了不同DGM的概念和机制。在撰写这篇简短的综述通讯时,发现一些DGM在SHM领域尚未得到充分利用或开发。因此,本文简要概述了土木SHM领域中一些使用DGM的代表性研究。该研究还对DGM及其与SHM的联系和研究方向进行了简短的比较讨论。