Munir Nauman, Kim Hak-Joon, Park Jinhyun, Song Sung-Jin, Kang Sung-Sik
Department of Mechanical Engineering, Sungkyunkwan University, Suwon 16419, Republic of Korea.
Department of Mechanical Engineering, Sungkyunkwan University, Suwon 16419, Republic of Korea.
Ultrasonics. 2019 Apr;94:74-81. doi: 10.1016/j.ultras.2018.12.001. Epub 2018 Dec 1.
Ultrasonic flaw classification in weldment is an active area of research and many artificial intelligence approaches have been applied to automate this process. However, in the industrial applications, the ultrasonic flaw signals are not noise free and automatic intelligent defect classification algorithms show relatively low classification performance. In addition, most of the algorithms require some statistical or signal processing techniques to extract some features from signals in order to make classification easier. In this article, the convolutional neural network (CNN) is applied to noisy ultrasonic signatures to improve classification performance of weldment defects and applicability. The result shows that CNN is robust, does not require specific feature extraction methods and give considerable high defect classification accuracies even for noisy signals.
焊件中的超声缺陷分类是一个活跃的研究领域,许多人工智能方法已被应用于使这一过程自动化。然而,在工业应用中,超声缺陷信号并非无噪声,自动智能缺陷分类算法的分类性能相对较低。此外,大多数算法需要一些统计或信号处理技术从信号中提取一些特征,以便于进行分类。在本文中,卷积神经网络(CNN)被应用于有噪声的超声信号特征,以提高焊件缺陷的分类性能和适用性。结果表明,CNN具有鲁棒性,不需要特定的特征提取方法,即使对于有噪声的信号也能给出相当高的缺陷分类准确率。