Bolt Installation Defect Detection Based on a Multi-Sensor Method
Author:
An Shizhao1, Xiao Muzheng1ORCID, Wang Da1, Qin Yan2, Fu Bo3
Affiliation:
1. School of Mechanical Engineering, Beijing Institute of Technology, Beijing 100081, China 2. Beijing Institute of Remote Sensing Equipment, Beijing 100081, China 3. Huaihai Industries Group Co., Ltd., Changzhi 046000, China
Abstract
With the development of industrial automation, articulated robots have gradually replaced labor in the field of bolt installation. Although the installation efficiency has been improved, installation defects may still occur. Bolt installation defects can considerably affect the mechanical properties of structures and even lead to safety accidents. Therefore, in order to ensure the success rate of bolt assembly, an efficient and timely detection method of incorrect or missing assembly is needed. At present, the automatic detection of bolt installation defects mainly depends on a single type of sensor, which is prone to mis-inspection. Visual sensors can identify the incorrect or missing installation of bolts, but it cannot detect torque defects. Torque sensors can only be judged according to the torque and angel information, but cannot accurately identify the incorrect or missing installation of bolts. To solve this problem, a detection method of bolt installation defects based on multiple sensors is proposed. The trained YOLO (You Only Look Once) v3 network is used to judge the images collected by the visual sensor, and the recognition rate of visual detection is up to 99.75%, and the average confidence of the output is 0.947. The detection speed is 48 FPS, which meets the real-time requirement. At the same time, torque and angle sensors are used to judge the torque defects and whether bolts have slipped. Combined with the multi-sensor judgment results, this method can effectively identify defects such as missing bolts and sliding teeth. Finally, this paper carried out experiments to identify bolt installation defects such as incorrect, missing torque defects, and bolt slips. At this time, the traditional detection method based on a single type of sensor cannot be effectively identified, and the detection method based on multiple sensors can be accurately identified.
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference43 articles.
1. Detection Method Based on Automatic Visual Shape Clustering for Pin- Missing Defect in Transmission Lines;Zhao;IEEE Trans. Instrum. Meas.,2020 2. Han, Y., Han, J., Ni, Z., Wang, W., and Jiang, H. (2021, January 26). Instance Segmentation of Transmission Line Images Based on an Improved D-SOLO Network. Proceedings of the 2021 IEEE 3rd International Conference on Power Data Science, Harbin, China. 3. Tan, L., Tang, T., and Yuan, D. (2022). An Ensemble Learning Aided Computer Vision Method with Advanced Color Enhancement for Corroded Bolt Detection in Tunnels. Sensors, 22. 4. Tang, M., Meng, C., Wu, H., Zhu, H., Yi, J., Tang, J., and Wang, Y. (2022). Fault Detection for Wind Turbine Blade Bolts Based on GSG Combined with CS-Light GBM. Sensors, 22. 5. Girshick, R., Donahue, J., Darrell, T., and Malik, J. (2014, January 23–28). Rich feature hierarchies for accurate object detection and semantic segmentation. Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, Columbus, OH, USA.
|
|