共 22 条
[1]
LEI Yaguo, Feng JIA, KONG Detong, Et al., Opportunities and challenges of machinery intelligent fault diagnosis in big data era[J], Journal of Mechanical Engineering, 54, 5, pp. 94-104, (2018)
[2]
LI Yanfu, HAN Te, Deep learning based industrial equipment prognostics and health management : A review[J], Journal of Vibration , Measurement & Diagnosis, 42, 5, pp. 835-847, (2022)
[3]
ZHAO Z, LI T, Et al., Deep learning algorithms for rotating machinery intelligent diagnosis:An open source benchmark study[J], ISA Transactions, 107, pp. 224-255, (2020)
[4]
ZHANG Y, TINO P, LEONARDIS A, Et al., A survey on neural network interpretability[J], IEEE Transactions on Emerging Topics in Computational Intelligence, 5, 5, pp. 726-742, (2021)
[5]
BRITO L C, BRITO J N, Et al., An explainable artificial intelligence approach for unsupervised fault detection and diagnosis in rotating machinery[J], Mechanical Systems and Signal Processing, 163, (2022)
[6]
SI Nianwen, Research on deep learning visualization interpretation techniques for image recognition, (2021)
[7]
QUAN Cong, Research on text-based interpretable recommender system, (2019)
[8]
WU X, ZHANG Y, CHENG C, Et al., A hybrid classification autoencoder for semi-supervised fault diagnosis in rotating machinery[J], Mechanical Systems and Signal Processing, 149, (2021)
[9]
GREZMAK J, ZHANG J, WANG P, Et al., Interpretable convolutional neural network through layer-wise relevance propagation for machine fault diagnosis[J], IEEE Sensors Journal, 20, 6, pp. 3172-3181, (2020)
[10]
TANG J, ZHENG G, WEI C, Et al., Signal-transformer:A robust and interpretable method for rotating machinery intelligent fault diagnosis under variable operating conditions[J], IEEE Transactions on Instrumentation and Measurement, 71, (2022)