Yang Zhengyan, Yang Hongjuan, Tian Tong, Deng Deshuang, Hu Mutian, Ma Jitong, Gao Dongyue, Zhang Jiaqi, Ma Shuyi, Yang Lei, Xu Hao, Wu Zhanjun
College of Transportation Engineering, Dalian Maritime University, Dalian 116026, China.
State Key Laboratory of Structural Analysis for Industrial Equipment, Dalian University of Technology, Dalian 116024, China.
Ultrasonics. 2023 Aug;133:107014. doi: 10.1016/j.ultras.2023.107014. Epub 2023 Apr 25.
The development of structural health monitoring (SHM) techniques is of great importance to improve the structural efficiency and safety. With advantages of long propagation distances, high damage sensitivity, and economic feasibility, guided-ultrasonic-wave-based SHM is recognized as one of the most promising technologies for large-scale engineering structures. However, the propagation characteristics of guided ultrasonic waves in in-service engineering structures are highly complex, which results in difficulties in developing precise and efficient signal feature mining methods. The damage identification efficiency and reliability of existing guided ultrasonic wave methods cannot meet engineering requirements. With the development of machine learning (ML), numerous researchers have proposed improved ML methods that can be incorporated into guided ultrasonic wave diagnostic techniques for SHM of actual engineering structures. To highlight their contributions, this paper provides a state-of-the-art overview of the guided-wave-based SHM techniques enabled by ML methods. Accordingly, multiple stages required for ML-based guided ultrasonic wave techniques are discussed, including guided ultrasonic wave propagation modeling, guided ultrasonic wave data acquisition, wave signal pre-processing, guided wave data-based ML modeling, and physics-based ML modeling. By placing ML methods in the context of the guided-wave-based SHM for actual engineering structures, this paper also provides insights into future prospects and research strategies.
结构健康监测(SHM)技术的发展对于提高结构效率和安全性至关重要。基于导波的结构健康监测具有传播距离长、损伤敏感性高和经济可行性强等优点,被认为是大型工程结构中最具前景的技术之一。然而,导波在服役工程结构中的传播特性极为复杂,这给开发精确高效的信号特征挖掘方法带来了困难。现有导波方法的损伤识别效率和可靠性无法满足工程需求。随着机器学习(ML)的发展,众多研究人员提出了改进的机器学习方法,这些方法可融入导波诊断技术,用于实际工程结构的结构健康监测。为突出他们的贡献,本文对基于机器学习方法的导波结构健康监测技术进行了最新综述。相应地,讨论了基于机器学习的导波技术所需的多个阶段,包括导波传播建模、导波数据采集、波信号预处理、基于导波数据的机器学习建模以及基于物理的机器学习建模。通过将机器学习方法置于实际工程结构的导波结构健康监测背景下,本文还对未来前景和研究策略提供了见解。