International Journal of Frontiers in Engineering Technology, 2025, 7(2); doi: 10.25236/IJFET.2025.070206.
Yushu Chen
Wuhan University of Technology, Wuhan, China
In the current era of rapid technological development, modern mechanical equipment systems continue to move towards automation and intelligence, which puts higher demands on the technical performance of various aspects of the system. Structured light 3D intelligent cameras have been widely used in many fields such as artificial intelligence (AI) and industrial inspection due to their significant advantages of fast imaging speed and high accuracy. Structured light measurement is the process of measuring from multiple angles using a structured light measurement system to achieve a complete representation of the object being measured. However, the stitching of measurement data from multiple perspectives can have an impact on the completeness of the expression of the measured object. This article innovatively proposes an intelligent fault diagnosis algorithm for mechanical and electronic systems that combines deep learning (DL) technology. The algorithm deeply explores the feature information in structured light data and utilizes the powerful pattern recognition ability of DL to achieve accurate diagnosis of mechanical and electronic system faults. The results show that the algorithm proposed in this paper can effectively improve the efficiency and accuracy of fault diagnosis, providing strong support for ensuring the stable operation of mechanical and electronic systems.
Structured light data, Mechanical and electronic systems, Intelligent fault diagnosis algorithms
Yushu Chen. Intelligent Fault Diagnosis Algorithm for Mechanical and Electronic Systems Based on Structured Light Data. International Journal of Frontiers in Engineering Technology(2025), Vol. 7, Issue 2: 40-45. https://doi.org/10.25236/IJFET.2025.070206.
[1] Li Y, Qu W, Zhang Z. Intelligent Algorithm Operation and Data Management of Electromechanical Engineering Power Communication Network based on the Internet of Things[J]. Scalable Computing: Practice and Experience, 2024, 25(5): 3330-3341.
[2] Kong Y, Qin Z, Wang T, et al. Data-driven dictionary design–based sparse classification method for intelligent fault diagnosis of planet bearings[J]. Structural Health Monitoring, 2022, 21(4): 1313-1328.
[3] Ding P, Xu Y, Qin P, et al. A novel deep learning approach for intelligent bearing fault diagnosis under extremely small samples[J]. Applied Intelligence, 2024, 54(7): 5306-5316.
[4] Wei Z, He D, Jin Z, et al. Intelligent fault diagnosis and health stage division of bearing based on tensor clustering and feature space denoising [J]. Applied Intelligence, 2023, 53(21): 24671-24688.
[5] Aljemely A H, Xuan J, Al-Azzawi O, et al. Intelligent fault diagnosis of rolling bearings based on LSTM with large margin nearest neighbor algorithm[J]. Neural Computing and Applications, 2022, 34(22): 19401-19421.
[6] Zhang Y, Wang J, Zhang F, et al. Intelligent fault diagnosis of rolling bearing using the ensemble self‐taught learning convolutional auto‐encoders[J]. IET Science, Measurement & Technology, 2022, 16(2): 130-147.
[7] Santamato G, Garavagno A M, Solazzi M, et al. Leveraging systems’ non-linearity to tackle the scarcity of data in the design of intelligent fault diagnosis systems[J]. Nonlinear Dynamics, 2024, 112(18): 16153-16166.
[8] Wu K, Li Z, Chen C, et al. Multi-branch convolutional attention network for multi-sensor feature fusion in intelligent fault diagnosis of rotating machinery[J]. Quality Engineering, 2024, 36(3): 609-623.
[9] Tian Y, Xiang X, Peng X, et al. Fault diagnosis strategy for few shot industrial process based on data augmentation and depth information extraction[J]. The Canadian Journal of Chemical Engineering, 2023, 101(8): 4620-4639.
[10] Lan G, Shi H. Convolutional neural network intelligent fault diagnosis method for rotating machinery based on discriminant correlation analysis multi-domain feature fusion strategy[J]. Journal of Vibroengineering, 2024, 26(3): 567-589.