Otwarty dostęp

Research on the Application of Image Feature Extraction in Mechanical Structure Recognition and Fault Diagnosis


Zacytuj

Yu, W., Mechefske, C., & Kim, I. Y. (2020). Identifying optimal features for cutting tool condition monitoring using recurrent neural networks:. Advances in Mechanical Engineering, 12(12), 487-546. Search in Google Scholar

Fan, Q., Zhou, Q., Wu, C., & Guo, M. (2017). Gear tooth surface damage diagnosis based on analyzing the vibration signal of an individual gear tooth. Advances in Mechanical Engineering, 9(6), 168781401770435. Search in Google Scholar

Pan, J., Zi, Y., Chen, J., Zhou, Z., & Wang, B. (2017). Liftingnet: a novel deep learning network with layerwise feature learning from noisy mechanical data for fault classification. IEEE Transactions on Industrial Electronics. Search in Google Scholar

Gao, H., Jiang, Y., Liu, J., Yu, Y., & Ju, Z. (2017). Zooming image based false matches elimination algorithms for robot navigation. Advances in Mechanical Engineering, 9(12), 168781401773815. Search in Google Scholar

Wang, Y., Wu, J., Cheng, Y., Wang, J., & Hu, K. (2022). Memory-enhanced hybrid deep learning networks for remaining useful life prognostics of mechanical equipment. Measurement(187-), 187. Search in Google Scholar

Galland, N., Lucic, N., Fang, B., Zhang, S., Letargat, R., & Ferrier, A., et al. (2020). Mechanical tunability of an ultra-narrow spectral feature with uniaxial stress. Physical Review Applied. Search in Google Scholar

Merican, N. S. L. A. A. (2018). Long-term wear failure analysis of uhmwpe acetabular cup in total hip replacement. Journal of the mechanical behavior of biomedical materials, 87. Search in Google Scholar

Chen, Liang-Chia, Liang, Ching-Wen, Hoang, & Dinh-Cuong, et al. (2018). A novel feature detection method using multi-dimensional image fusion for automated optical inspection on critical dimension. Journal of the Chinese Society of Mechanical Engineers, Series C: Transactions of the Chinese Society of Mechanical Engineers. Search in Google Scholar

Zhou, Y., Yin, S., Zhao, K., Wang, L., & Liu, L. (2023). Understanding the static rate dependence of early fracture behavior of cemented paste backfill using digital image correlation and acoustic emission techniques. Engineering Fracture Mechanics. Search in Google Scholar

Hong, W., Cai, W., Wang, S., & Tomovic, M. M. (2017). A review for mechanical wear debris feature, detection and diagnosis. Chinese Journal of Aeronautics, S1000936117302637. Search in Google Scholar

Huo, J., & Yu, X. (2020). Three-dimensional mechanical parts reconstruction technology based on two-dimensional image:. International Journal of Advanced Robotic Systems, 17(2), 36-46. Search in Google Scholar

Han, S., Oh, S., & Jeong, J. (2021). Bearing fault diagnosis based on multiscale convolutional neural network using data augmentation. Journal of Sensors. Search in Google Scholar

Yuan, J., Cao, S., Ren, G., Su, F., Jiang, H., & Zhao, Q. (2022). Lw-net: an interpretable network with smart lifting wavelet kernel for mechanical feature extraction and fault diagnosis. Neural computing & applications. Search in Google Scholar

Zhao, P. H. D. (2021). A novel mechanical fault signal feature extraction method based on unsaturated piecewise tri-stable stochastic resonance. Measurement, 168(1). Search in Google Scholar

Oh, H., Jung, J. H., Jeon, B. C., & Youn, B. D. (2017). Scalable and unsupervised feature engineering using vibration-imaging and deep learning for rotor system diagnosis. IEEE Transactions on Industrial Electronics. Search in Google Scholar

Liu, Y., Wang, F., Liu, L., & Zhu, Y. (2019). Secondary signal-induced large-parameter stochastic resonance for feature extraction of mechanical faults. International Journal of Modern Physics B, 33(7), 1950157. Search in Google Scholar

Zhang, K., Niu, X., Ma, Y., Chen, X., & Wu, J. (2021). A new demodulation method for mechanical fault feature extraction based on lod and iee. Measurement Science Review, 21(3), 67-75. Search in Google Scholar

Li, L., Wang, W., Cai, A., Li, H., Zhang, L., & Liu, P. (2022). Mechanical fault diagnosis technology of wind turbine transmission system based on image features. Mobile information systems(Pt.25), 2022. Search in Google Scholar

Wang, X., Qi, X., Gao, W., Ma, H., & Dong, J. (2023). Research on mechanical damage-energy evolution characteristics of coal based on digital image measurement technology. Measurement, 220. Search in Google Scholar

Li, Y., Liu, H., Zhou, K., Qin, H., Yu, W., & Liu, Y. (2022). Machine learning approach for delamination detection with feature missing and noise polluted vibration characteristics. Composite Structures, 287, 115335-. Search in Google Scholar

eISSN:
2444-8656
Język:
Angielski
Częstotliwość wydawania:
Volume Open
Dziedziny czasopisma:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics