School of Engineering, King Mongkut's Institute of Technology Ladkrabang, Bangkok 10520, Thailand.
Sensors (Basel). 2021 Jan 3;21(1):272. doi: 10.3390/s21010272.
This research proposes a nondestructive single-sensor acoustic emission (AE) scheme for the detection and localization of cracks in steel rail under loads. In the operation, AE signals were captured by the AE sensor and converted into digital signal data by AE data acquisition module. The digital data were denoised to remove ambient and wheel/rail contact noises, and the denoised data were processed and classified to localize cracks in the steel rail using a deep learning algorithmic model. The AE signals of pencil lead break at the head, web, and foot of steel rail were used to train and test the algorithmic model. In training and testing the algorithm, the AE signals were divided into two groupings (150 and 300 AE signals) and the classification accuracy compared. The deep learning-based AE scheme was also implemented onsite to detect cracks in the steel rail. The total accuracy (average F1 score) under the first and second groupings were 86.6% and 96.6%, and that of the onsite experiment was 77.33%. The novelty of this research lies in the use of a single AE sensor and AE signal-based deep learning algorithm to efficiently detect and localize cracks in the steel rail, unlike existing AE crack-localization technology that relies on two or more sensors and human interpretation.
本研究提出了一种用于在负载下检测和定位钢轨裂纹的无损单传感器声发射(AE)方案。在操作中,AE 传感器采集 AE 信号,并通过 AE 数据采集模块将其转换为数字信号数据。对数字数据进行去噪以去除环境和轮/轨接触噪声,并使用深度学习算法模型对去噪后的数据进行处理和分类,以定位钢轨中的裂纹。使用铅笔芯折断在钢轨头部、腹板和底部的 AE 信号来训练和测试算法模型。在训练和测试算法时,将 AE 信号分为两组(150 和 300 个 AE 信号)并比较分类准确性。还在现场实施了基于深度学习的 AE 方案来检测钢轨中的裂纹。第一组和第二组的总准确率(平均 F1 得分)分别为 86.6%和 96.6%,现场实验的准确率为 77.33%。本研究的新颖之处在于使用单个 AE 传感器和基于 AE 信号的深度学习算法来高效地检测和定位钢轨中的裂纹,而不同于现有的 AE 裂纹定位技术,后者依赖于两个或更多传感器和人工解释。