Ensemble Augmentation for Deep Neural Networks Using 1-D Time Series Vibration Data

被引:3
|
作者
Faysal, Atik [1 ]
Ngui, W. K. [1 ]
Lim, M. H. [2 ]
Leong, M. S. [2 ]
机构
[1] Univ Malaysia Pahang, Lebuhraya Tun Razak, Pahang 26300, Gambang, Malaysia
[2] Univ Teknol Malaysia, Inst Noise & Vibrat, Jalan Sultan Yahya Petra, Kuala Lumpur 54100, Malaysia
关键词
Data augmentation; Transfer learning; Condition monitoring; DCGAN; Vibration signal; FAULT-DIAGNOSIS; WAVELET;
D O I
10.1007/s42417-022-00683-w
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
Purpose Deep Neural Networks (DNNs) typically require enormous labeled training samples to achieve optimum performance. Therefore, numerous forms of data augmentation techniques are employed to compensate for the lack of training samples. Methods In this paper, a data augmentation technique named ensemble augmentation is proposed to generate real-like samples. This augmentation method uses the power of white noise added in ensembles to the original samples to generate real-like samples. After averaging the signal with ensembles, a new signal is obtained that contains the characteristics of the original signal. The parameters for the ensemble augmentation are validated using a simulated signal. The proposed method is evaluated by 10 class-bearing vibration data using three Transfer Learning (TL) models, namely, Inception-V3, MobileNet-V2, and ResNet50. The outputs from the proposed method are compared with no augmentation and different augmentation techniques. Results The results showed that the classifiers with the ensemble augmentation have higher validation and test accuracy than all the other augmentation techniques. The robustness assessment conducted with noisy test samples and test samples from different loads showed that the classifiers could obtain much higher robustness when trained with samples from ensemble augmentation. Conclusion The proposed data augmentation technique can be applied to 1-D time series data to achieve robust classifiers.
引用
收藏
页码:1987 / 2011
页数:25
相关论文
共 50 条
  • [21] Outlier Detection for Multidimensional Time Series using Deep Neural Networks
    Kieu, Tung
    Yang, Bin
    Jensen, Christian S.
    2018 19TH IEEE INTERNATIONAL CONFERENCE ON MOBILE DATA MANAGEMENT (MDM 2018), 2018, : 125 - 134
  • [22] Randomnet: clustering time series using untrained deep neural networks
    Li, Xiaosheng
    Xi, Wenjie
    Lin, Jessica
    DATA MINING AND KNOWLEDGE DISCOVERY, 2024, 38 (06) : 3473 - 3502
  • [23] Radio halo detection in MWA data using deep neural networks and generative data augmentation
    Mishra, Ashutosh K.
    Tolley, Emma
    Krishna, Shreyam Parth
    Kneib, Jean-Paul
    MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY, 2025, 538 (04) : 2905 - 2922
  • [24] Fatigue Damage Diagnostics of Composites Using Data Fusion and Data Augmentation With Deep Neural Networks
    Dabetwar, Shweta
    Ekwaro-Osire, Stephen
    Dias, Joao Paulo
    JOURNAL OF NONDESTRUCTIVE EVALUATION, DIAGNOSTICS AND PROGNOSTICS OF ENGINEERING SYSTEMS, 2022, 5 (02):
  • [25] Real-Time Fault Detection and Identification for MMC Using 1-D Convolutional Neural Networks
    Kiranyaz, Serkan
    Gastli, Adel
    Ben-Brahim, Lazhar
    Al-Emadi, Nasser
    Gabbouj, Moncef
    IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2019, 66 (11) : 8760 - 8771
  • [26] Forecasting Time Series by an Ensemble of Artificial Neural Networks based on transforming the Time Series
    Gutierrez, German
    Paz Sesmero, M.
    Sanchis, Araceli
    2016 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN, AND CYBERNETICS (SMC), 2016, : 4769 - 4774
  • [27] Training Deep Fourier Neural Networks to Fit Time-Series Data
    Gashler, Michael S.
    Ashmore, Stephen C.
    INTELLIGENT COMPUTING IN BIOINFORMATICS, 2014, 8590 : 48 - 55
  • [28] Detecting Methane Outbreaks from Time Series Data with Deep Neural Networks
    Pawlowski, Krzysztof
    Kurach, Karol
    ROUGH SETS, FUZZY SETS, DATA MINING, AND GRANULAR COMPUTING, RSFDGRC 2015, 2015, 9437 : 475 - 484
  • [29] Deep Time Series Neural Networks and Fluorescence Data Stream Noise Detection
    Obert, James
    Ferguson, Matthew
    INTELLIGENT COMPUTING, VOL 2, 2019, 857 : 18 - 32
  • [30] Long-term missing value imputation for time series data using deep neural networks
    Park, Jangho
    Muller, Juliane
    Arora, Bhavna
    Faybishenko, Boris
    Pastorello, Gilberto
    Varadharajan, Charuleka
    Sahu, Reetik
    Agarwal, Deborah
    NEURAL COMPUTING & APPLICATIONS, 2023, 35 (12): : 9071 - 9091