吉林大学学报(工学版) ›› 2022, Vol. 52 ›› Issue (2): 491-496.doi: 10.13229/j.cnki.jdxbgxb20210669
• 车辆工程·机械工程 • 上一篇
Jie CAO1,2(),Jia-lin MA1,Dai-lin HUANG1,Ping YU3()
摘要:
深度学习在故障诊断中有良好的诊断能力与泛化能力,但大部分工作是直接从卷积层面上提取信号特征图,使邻近信号点未被考虑,并且采样频率不同也会对特征提取有影响。为此,本文基于MTF以及ResNet18算法提出了M2TF-ResNet算法。本文在凯斯西储大学(CWRU)轴承数据集中进行了大量实验。通过验证得出:该算法可适应不同采样频率下信号的特征提取,避免训练过拟合,并且与其他故障诊断方式相比,该算法在诊断率上的优势更突出。
中图分类号:
1 | Ghate V N, Dudul S V. Design of optimal MLP and RBF neural network classifier for fault diagnosis of three phase induction motor[J]. International Journal of Advanced Mechatronic Systems, 2010, 2(3): 204-216. |
2 | Keleolu C, KüüK H, DemetgüL M. Fault diagnosis of bevel gears using neural pattern recognition and MLP neural network algorithms[J]. International Journal of Precision Engineering and Manufacturing, 2020, 21(5): 843-856. |
3 | Souahlia S, Bacha K, Chaari A. MLP neural network-based decision for power transformers fault diagnosis using an improved combination of rogers and doernenburg ratios DGA[J]. International Journal of Electrical Power & Energy Systems, 2012, 43(1): 1346-1353. |
4 | Waqar T, Demetgul M. Thermal analysis MLP neural network based fault diagnosis on worm gears[J]. Measurement, 2016, 86: 56-66. |
5 | Dibaj A, Ettefagh M M, Hassannejad R, et al. A hybrid fine-tuned VMD and CNN scheme for untrained compound fault diagnosis of rotating machinery with unequal-severity faults[J]. Expert Systems with Applications, 2020, 167: 114094. |
6 | Wang D, Guo Q, Song Y, et al. Application of multiscale learning neural network based on CNN in bearing fault diagnosis[J]. Journal of Signal Processing Systems for Signal, Image, and Video Technology, 2019, 91(10): 1205-1217. |
7 | Shao S, Yan R, Lu Y, et al. DCNN-based multi-signal induction motor fault diagnosis[J]. IEEE Transactions on Instrumentation and Measurement, 2020, 69(6): 2658-2669. |
8 | 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, 2021(5): 1-27. |
9 | Li X, Li J, Zhao C, et al. Early gear pitting fault diagnosis based on bi-directional LSTM[C]∥Prognostics and System Health Management Conference, Qingdao, 2019:1-5. |
10 | Han Y, Qi W, Ding N, et al. Short-time wavelet entropy integrating improved LSTM for fault diagnosis of modular multilevel converter[J]. IEEE Transactions on Cybernetics, 2021(99): 1-9. |
11 | Levent E, Turker I, Serkan K. A generic intelligent bearing fault diagnosis system using compact adaptive 1D CNN classifier[J]. Journal of Signal Processing Systems, 2019, 91: 179-189. |
12 | Nian-Long G U, Hao P, Peng H E. Bearing fault diagnosis method based on EMD-CNNs[J]. DEStech Transactions on Computer Science and Engineering, 2017, 34: 466-473. |
13 | Zhang J, Xu B, Wang Z, et al. An FSK-MBCNN based method for compound fault diagnosis in wind turbine gearboxes[J]. Measurement, 2020, 172(6): 108933. |
14 |
杜先君, 贾亮亮. 基于优化堆叠降噪自编码器的滚动轴承故障诊断[J]. 吉林大学学报: 工学版.DOI: 10.13229/j.cnki.jdxbgxb20210415.
doi: 10.13229/j.cnki.jdxbgxb20210415 |
Du Xian-jun,Jia Liang-liang. Fault diagnosis of rolling bearing based on optimized stacked denoising auto encoders[J]. Journal of Jilin University(Engineering and Technology Edition).DOI: 10.13229/j.cnki.jdxbgxb20210415.
doi: 10.13229/j.cnki.jdxbgxb20210415 |
|
15 | 院老虎, 连冬杉, 张亮, 等. 基于密集连接卷积网络和支持向量机的飞行器机械部件故障诊断[J]. 吉林大学学报: 工学版, 2021, 51(5): 1635-1641. |
Yuan Lao-hu,Lian Dong-shan,Zhang Liang, et al. Fault diagnosis of key mechanical components of aircraft based on densenet and support vector machine[J]. Journal of Jilin University(Engineering and Technology Edition), 2021, 51(5): 1635-1641. | |
16 | Russakovsky O, Deng J, Su H, et al. Imagenet large scale visual recognition challenge[J]. International Journal of Computer Vision, 2015, 115: 211-252. |
17 | Lu L, Wang Z G. Encoding temporal markov dynamics in graph for time series visualization[J]. Association for the Advancement of Artificial Intelligence, 2016, 78: 07273. |
18 | Jing L, Zhao M, Li P, et al. A convolutional neural network based feature learning and fault diagnosis method for the condition monitoring of gearbox[J]. Measurement, 2017, 111: 1-10. |
[1] | 高文志,王彦军,王欣伟,张攀,李勇,董阳. 基于卷积神经网络的柴油机失火故障实时诊断[J]. 吉林大学学报(工学版), 2022, 52(2): 417-424. |
[2] | 王进花,胡佳伟,曹洁,黄涛. 基于自适应变分模态分解和集成极限学习机的滚动轴承多故障诊断[J]. 吉林大学学报(工学版), 2022, 52(2): 318-328. |
[3] | 董绍江,朱朋,裴雪武,李洋,胡小林. 基于子领域自适应的变工况下滚动轴承故障诊断[J]. 吉林大学学报(工学版), 2022, 52(2): 288-295. |
[4] | 罗巍,卢博,陈菲,马腾. 基于PSO-SVM及时序环节的数控刀架故障诊断方法[J]. 吉林大学学报(工学版), 2022, 52(2): 392-399. |
[5] | 宋林,王立平,吴军,关立文,刘知贵. 基于信息物理融合和数字孪生的可靠性分析[J]. 吉林大学学报(工学版), 2022, 52(2): 439-449. |
[6] | 邓飞跃,吕浩洋,顾晓辉,郝如江. 基于轻量化神经网络Shuffle⁃SENet的高速动车组轴箱轴承故障诊断方法[J]. 吉林大学学报(工学版), 2022, 52(2): 474-482. |
[7] | 张龙,徐天鹏,王朝兵,易剑昱,甄灿壮. 基于卷积门控循环网络的齿轮箱故障诊断[J]. 吉林大学学报(工学版), 2022, 52(2): 368-376. |
[8] | 陈晓雷,孙永峰,李策,林冬梅. 基于卷积神经网络和双向长短期记忆的稳定抗噪声滚动轴承故障诊断[J]. 吉林大学学报(工学版), 2022, 52(2): 296-309. |
[9] | 刘桂霞,裴志尧,宋佳智. 基于深度学习的蛋白质⁃ATP结合位点预测[J]. 吉林大学学报(工学版), 2022, 52(1): 187-194. |
[10] | 曲优,李文辉. 基于锚框变换的单阶段旋转目标检测方法[J]. 吉林大学学报(工学版), 2022, 52(1): 162-173. |
[11] | 张杰,景雯,陈富. 基于被动分簇算法的即时通信网络协议漏洞检测[J]. 吉林大学学报(工学版), 2021, 51(6): 2253-2258. |
[12] | 欧阳丹彤,张必歌,田乃予,张立明. 结合格局检测与局部搜索的故障数据缩减方法[J]. 吉林大学学报(工学版), 2021, 51(6): 2144-2153. |
[13] | 董丽丽,杨丹,张翔. 基于深度学习的大规模语义文本重叠区域检索[J]. 吉林大学学报(工学版), 2021, 51(5): 1817-1822. |
[14] | 院老虎,连冬杉,张亮,刘义. 基于密集连接卷积网络和支持向量机的飞行器机械部件故障诊断[J]. 吉林大学学报(工学版), 2021, 51(5): 1635-1641. |
[15] | 兰凤崇,李继文,陈吉清. 面向动态场景复合深度学习与并行计算的DG-SLAM算法[J]. 吉林大学学报(工学版), 2021, 51(4): 1437-1446. |
|