[1] 宋威,丁一,赵凯,等. 基于EMD-LSTM的风机故障停机发生时间预测[J]. 计算机仿真,2023,40(12):113-118. [2] 刘军,安柏任,张维博,等. 大型风力发电机组健康状态评价综述[J]. 电力系统保护与控制,2023,51(1):176-187. [3] 王晓东. 基于多源数据融合的风电机组主传动链故障预警研究[D]. 广州:华南理工大学,2020. [4] SHARMA V.A review on vibration-based fault diagnosis techniques for wind turbine gearboxes operating under nonstationary conditions[J]. Journal of The Institution of Engineers(India):seriesc,2021,102(2):507-523. [5] SUN P,LI J,WANG C,et al.A generalized model for wind turbine anomaly identification based on SCADA data[J]. Applied Energy,2016,168:550-567. [6] 史小东,王晓岗,张浩. 多时频分析方法下压裂管汇紧固螺栓振动信号处理方法研究[J]. 石化技术,2025,32(2):239-241,232. [7] 杨世锡,胡劲松,吴昭同,等. 旋转机械振动信号基于EMD的希尔伯特变换和小波变换时频分析比较[J]. 中国电机工程学报,2003(6):102-107. [8] 李振兴,刘学,刘建男. 基于最优小波基选取的遥测振动信号降噪方法[J]. 舰船电子工程,2024,44(7):181-185. [9] 刘燕楠. 基于小波变换和KPCA-BFO-LDA的人脸识别研究[J]. 信息与电脑,2023,35(24):164-167. [10] 朱春松. 基于EMD分解的滚动轴承早期故障诊断[J]. 时代汽车,2023(18):175-177. [11] YIN C,WANG Y L,MA G C,et al.Weak fault feature extraction of rolling bearings based on improved ensemble noise-reconstructed EMD and adaptive threshold denoising[J]. Mechanical Systems and Signal Processing,2022,171:108834. [12] DRAGOMIRETSKIY K,ZOSSO D.Variational mode decomposition[J]. IEEE Transations on Signal Processing,2014,62(3):531-544. [13] WAHAB A,KHAN S U,NAWAZ T,et al.An optimized impulse factor-based VMD-EMD approach to improve SSVEP accuracy for BCI Systems[J]. Results in Engineering,2025,25:104203. [14] RAO D,HUANG M,SHI X Z,et al.A Microseismic signal denoising algorithm combining VMD and wavelet threshold denoising optimized by BWOA[J]. Computer Modeling in Engineering & Sciences,2024,141(1):187-217. [15] 林嘉豪,章宗长,姜冲,等. 基于生成对抗网络的模仿学习综述[J]. 计算机学报,2020,43(2):326-351. [16] WANG H,WANG S H,SUN W F,et al.Multi-sensor signal fusion for tool wear condition monitoring using denoising transformer auto-encoder Resnet[J]. Journal of Manufacturing Processes,2024,124:1054-1064. [17] SCHLEG L T,SEEBÖCK P,WALDSTEIN S M,et al. F-AnoGAN:fast unsupervised anomaly detection with generative adversarial networks[J]. Medical Image Analysis,2019,54:30-44. [18] 刘少文. 基于改进生成对抗网络的轴承故障诊断研究[D]. 北京:北京化工大学,2024. [19] 蔡铮印,鹿雷,丛屾. 基于自适应VMD与IAO-SVM的滚动轴承故障诊断[J]. 黑龙江大学工程学报(中英俄文),2024,15(4):47-54,88. [20] CHAUHAN V K,DAHIYA K,SHARMA A.Problem formulations and solvers in linear SVM:a review[J]. Artificial Intelligence Review,2019,52(2):803-855. [21] HE K,ZHANG X Y,REN S Q,et al.Deep residual learning for image recognition[J]. IEEE,2016.DOI:10.1109/CVPR.2016.90. [22] 傅顺军,罗强,李江,等. 基于STFT同步压缩变换和ResNet参数迁移的滚动轴承智能诊断[J]. 船舶工程,2024,46(12):58-67,74. [23] 方学宠,张才,白植志,等.基于3Cur-ResNet50-GCN的齿轮箱故障诊断模型[J]. 机床与液压,2025,53(14):15-23. [24] MIRJALILI S,LEWIS A.The whale optimization algorithm[J]. Advances in Engineering Software,2016,95:51-67. [25] XU T.Fusion of residual network and t-SNE-CS for 2D visualization of open set recognition[J]. Intelligent Systems with Applications,2024,24:200464. |