刘霞,金忠庆 . 基于改进卷积神经网络的飞机桁架焊缝缺陷识别与测试[J]. 航空制造技术, 2021, 64(23/24): 34-38. LIU Xia, JIN Zhongqing. Weld Defect Identification and Testing of Aircraft Truss Based on Improved Convolutional Neural Network. Aeronautical Manufacturing Technology, 2021, 64(23/24): 34-38.
LIU Xia, JIN Zhongqing. Weld Defect Identification and Testing of Aircraft Truss Based on Improved Convolutional Neural Network[J]. Aeronautical Manufacturing Technology, 2021, 64(23/24).
刘霞,金忠庆 . 基于改进卷积神经网络的飞机桁架焊缝缺陷识别与测试[J]. 航空制造技术, 2021, 64(23/24): 34-38. LIU Xia, JIN Zhongqing. Weld Defect Identification and Testing of Aircraft Truss Based on Improved Convolutional Neural Network. Aeronautical Manufacturing Technology, 2021, 64(23/24): 34-38. DOI: 10.16080/j.issn1671-833x.2021.23/24.034.
LIU Xia, JIN Zhongqing. Weld Defect Identification and Testing of Aircraft Truss Based on Improved Convolutional Neural Network[J]. Aeronautical Manufacturing Technology, 2021, 64(23/24). DOI: 10.16080/j.issn1671-833x.2021.23/24.034.
Weld Defect Identification and Testing of Aircraft Truss Based on Improved Convolutional Neural Network
The welding quality of aircraft truss is an important guarantee of its working strength
so the effective detection and identification of truss weld defects is the focus of current aviation manufacturing industry. Aiming at the problems of complex calculation and low recognition accuracy existing in traditional target recognition methods
in order to detect the internal defects of weld quickly and effectively
a weld defect recognition method based on improved convolutional neural network (CNN) is proposed. Firstly
the threshold value of weld image is divided to make the feature information easier to extract. Then
an improved adaptive pooling method is designed
and a new model structure of weld image defect recognition is proposed
and the corresponding model parameters and calculation method are formulated. Finally
the recognition model is used to train and test the weld image. The results show that the network model can effectively realize the recognition and classification of weld defects
and the average correct recognition rate is 98.25%
which shows that the proposed method has the advantages of fast recognition speed
high accuracy and good robustness
and provides theoretical reference for the process of weld defect recognition.