Jiaqing Li, Fei Song, Zidong Xiao, Longji Zhu, Lan Chen, Zheliang Wei
Guangdong Shengxiang Traffic Engineering Testing Co. Ltd., Guangzhou, China.
The Fourth Company of China Construction Sixth Engineering Bureau Co. Ltd., Shenzhen, China.
PLoS One. 2025 Apr 29;20(4):e0317969. doi: 10.1371/journal.pone.0317969. eCollection 2025.
With increasing traffic loads and extended bridge service life, fatigue damage in steel bridge decks has become a significant concern. Traditional detection methods often lack the accuracy and responsiveness needed for practical engineering applications. To address the non-stationary nature of acoustic emission (AE) signals during crack initiation and propagation, this study combines the K-singular value decomposition (K-SVD) dictionary learning algorithm with convolutional neural networks (CNN) to enhance AE signal processing and fatigue crack detection. The K-SVD algorithm functions as an adaptive filter, learning from AE signals in various damage states to remove background noise and retain critical structural characteristics. This processed AE data is then input into a CNN, where the improved signal clarity enables higher classification accuracy. Specifically, the integration of K-SVD with CNN achieved recognition accuracies of 93.64% and 92.56% for AE signals from damaged areas, and 95.32% and 94.27% for undamaged signals, on training and test sets, respectively. This approach demonstrates strong engineering potential by providing a scalable solution for real-time, accurate crack detection in bridge inspections. Though computationally intensive, K-SVD's adaptive dictionary learning enhances CNN performance, making the combination viable with optimization strategies in practical settings. These results provide a theoretical foundation and practical guidance for improving fatigue crack detection in steel bridge decks, supporting future applications in automated bridge inspection.
随着交通荷载的增加和桥梁使用寿命的延长,钢桥面板的疲劳损伤已成为一个重大问题。传统的检测方法往往缺乏实际工程应用所需的准确性和响应性。为了解决裂纹萌生和扩展过程中声发射(AE)信号的非平稳特性,本研究将K奇异值分解(K-SVD)字典学习算法与卷积神经网络(CNN)相结合,以增强AE信号处理和疲劳裂纹检测。K-SVD算法作为一种自适应滤波器,从各种损伤状态下的AE信号中学习,去除背景噪声并保留关键结构特征。然后将处理后的AE数据输入到CNN中,提高后的信号清晰度使得分类准确率更高。具体而言,在训练集和测试集上,K-SVD与CNN的集成分别对来自损伤区域的AE信号实现了93.64%和92.56%的识别准确率,对未损伤信号实现了95.32%和94.27%的识别准确率。该方法通过为桥梁检测中的实时、准确裂纹检测提供可扩展的解决方案,展现出强大的工程潜力。尽管计算量较大,但K-SVD的自适应字典学习提高了CNN的性能,使得这种组合在实际应用中通过优化策略可行。这些结果为改进钢桥面板疲劳裂纹检测提供了理论基础和实践指导,支持了未来在桥梁自动检测中的应用。