共 31 条
- [1] BALLAL D R,, ZELINA J., Progress in aeroengine tech⁃ nology(1939-2003)[J], Journal of Aircraft, 41, 1, pp. 43-50, (2004)
- [2] LI H S, LIU Y B,, HE X, Et al., Combined high and low cycle fatigue life of Gas tur⁃ bine blade materials considering coupling damage[J], Journal of Propulsion Technology, 43, 2, pp. 7-13, (2022)
- [3] JHA P K., Develop⁃ ments in investment casting process—a review[J], Jour⁃ nal of Materials Processing Technology, 212, 11, pp. 2332-2348, (2012)
- [4] LAKSHMI M R V,, MONDAL A K,, JADHAV C K,, Et al., Overview of NDT methods applied on an aero engine tur⁃ bine rotor blade[J], Insight-Non-Destructive Testing and Condition Monitoring, 55, 9, pp. 482-486, (2013)
- [5] Research on approaches for computer aided detection of casting defects in X-Ray im⁃ ages with feature engineering and machine learning[J], Procedia Manufacturing, 37, pp. 394-401, (2019)
- [6] MERY D., Computer vision technology for X-Ray testing [J], Insight (Northampton), 56, 3, pp. 147-155, (2014)
- [7] ARTETA C., Automatic defect recognition in X-Ray testing using computer vision[C], Santa Rosa:2017 IEEE Winter Conference on Applications of Com⁃ puter Vision(WACV), (2017)
- [8] FERGUSON M, LEE Y T,, Et al., Automatic local⁃ ization of casting defects with convolutional neural net⁃ works[C], Boston:2017 IEEE International Conference on Big Data(big data), (2017)
- [9] LEE Y T,, Et al., Detection and segmentation of manufacturing defects with convolutional neural networks and transfer learning[J], Products and Services, 2, 1, (2018)
- [10] (2017)