[1] 李贵三, 张正松, 唐锡宽. 大型高速旋转机械故障特征及其识别[J]. 石油化工设备技术, 1991, 12(1):45-49. LI Guisan, ZHANG Zhengsong, TANG Xikuan. Fault characteristics and identification of large-scale high-speed rotating machinery[J]. Petrochemical Equipment Technology, 1991, 12(1):45-49. [2] LU Q, YANG R, ZHONG M, et al. An improved fault diagnosis method of rotating machinery using sensitive features and RLS-BP neural network[J]. IEEE Transactions on Instrumentation and Measurement, 2020, 69(4):1585-1593. [3] JIA Z, LIU Z, VONG C, et al. A rotating machinery fault diagnosis method based on feature learning of thermal images[J]. IEEE Access, 2019, 7:12348-12359. [4] HE Y, LIU Y, SHAO S, et al. Application of CNN-LSTM in gradual changing fault diagnosis of rod pumping system[J]. Mathematical Problems in Engineering, 2019, 2019:1-9. [5] PARK M, LEE J, KANG W, et al. Predictive model for PV power generation using RNN (LSTM)[J]. Journal of Mechanical Science and Technology, 2021, 35:795-803. [6] SHANG S, LUO Q, ZHAO J, et al. LSTM-CNN network for human activity recognition using WiFi CSI data[J]. Journal of Physics:Conference Series, 2021, 1883(1). [7] HUANG T, ZHANG Q, TANG X, et al. A novel fault diagnosis method based on CNN and LSTM and its application in fault diagnosis for complex systems[J]. Artificial Intelligence Review, 2022, 55:1289-1316. [8] SHAO B, HU X, BIAN G, et al. A multichannel LSTM-CNN method for fault diagnosis of chemical process[J]. Mathematical Problems in Engineering, 2019, 2019:1-14. [9] RAI P, LONDHE N, RAJ R. Fault classification in power system distribution network integrated with distributed generators using CNN[J]. Electric Power Systems Research, 2021, 192:106914. [10] JIANG P, CONG H, WANG J, et al. Fault diagnosis of gearbox in multiple conditions based on fine-grained classification CNN algorithm[J]. Shock and Vibration, 2020, 2020:9238908. [11] 付文秀, 李弘扬, 靳东明. 基于LSTM的列车测速测距设备故障诊断[J]. 北京交通大学学报, 2020, 44(2):9-16. FU Wenxiu, LI Hongyang, JIN Dongming. Fault diagnosis of train speed and ranging equipment based on LSTM[J]. Journal of Beijing Jiaotong University, 2020, 44(2):9-16. [12] BELAGOUNE S, BALI N, BAKDI A, et al. Deep learning through LSTM classification and regression for transmission line fault detection, diagnosis and location in large-scale multi-machine power systems[J]. Measurement, 2021, 177:109330. [13] 沈涛, 李舜酩. 针对滚动轴承故障的批标准化CNN-LSTM诊断方法[J]. 计算机集成制造系统, 2021, 27(3):583-596. SHEN Tao, LI Shunming. CNN-LSTM method with batch normalization for rolling bearing fault diagnosis[J]. Computer Integrated Manufacturing Systems, 2021, 27(3):583-598. [14] TANG X, WANG J, LU J, et al. Improving bearing fault diagnosis using maximum information coefficient based feature selection[J]. Applied Sciences, 2018, 8(11):2143. [15] BEATTY R. Differentiating rotor response due to radial rubbing[J]. Journal of Vibration, Acoustics, Stress, and Reliability in Design, 1985, 107(2):151-160. [16] CHU F, LU W. Determination of the rubbing location in a multi-disk rotor system by means of dynamic stiffness identification[J]. Journal of Sound and Vibration, 2001, 248(2):235-246. [17] GAN C, CHEN Y, CUI X, et al. Investigation of rotor strength and rotor dynamics for high-speed high-power switched reluctance machines[J]. IET Electric Power Applications, 2020, 14(9):1624-1630. [18] CHEN S, HANSEN J, TORTORELLI D. Unconditionally energy stable implicit time integration:Application to multibody system analysis and design[J]. International Journal for Numerical Methods in Engineering, 2000, 48(6):791-822. [19] 陈昱, 吴宗莲, 龙胜刚. 高速旋转应变遥测系统在发动机试验中的应用[C]. 第三届中国航空学会青年科技论坛, 中国贵州贵阳, 2008. CHEN Yu, WU Zonglian, LONG Shenggang. Application of high-speed rotating strain telemetry system in engine test[C]. The 3rd China Aeronautical Society Youth Science and Technology Forum, Guiyang, Guizhou, China, 2008. |