• CN: 11-2187/TH
  • ISSN: 0577-6686

Journal of Mechanical Engineering ›› 2023, Vol. 59 ›› Issue (1): 131-140.doi: 10.3901/JME.2023.01.131

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Running Condition Identification of High-speed Shaft Based on Shaft-end-data Driven LSTM-CNN

YI Cong1,2, DU Jianjun1, YIN Jixiong2,3, ZHU Haibin2,3, DENG Weikun2,3, BAI Baoliang4, FU Congyi4   

  1. 1. School of Mechanical Engineering and Automation, Harbin Institute of Technology, Shenzhen, Shenzhen 518000;
    2. Department of Testing and Equipment, Institute of Flexible Technology of THU, Jiaxing 314006;
    3. Jiaxing Key Laboratory of Flexible Electronics based Intelligent Sensing and Advanced Manufacturing Technology, Jiaxing 314006;
    4. New Technology Center, Zhejiang Heqing Flexible Electronics Company, Hangzhou 310000
  • Received:2021-12-22 Revised:2022-08-08 Online:2023-01-05 Published:2023-03-30

Abstract: Aiming at the problem that it is difficult to accurately real-time monitor and identify the running condition of high-speed shafts with complex structures, a composite neural network shaft running condition identification method based on the shaft-end-data driven is proposed. Firstly, a composite neural network model (LSTM-CNN) based on Long short-term memory (LSTM) and Convolutional neural networks (CNN) is proposed. A dual-disk shaft dynamics simulation model is then established. The Newmark-β method is used to numerically solve the shaft system for acquiring the dynamic response characteristics of the key fixed nodes of the shaft system; at the same time, the dynamic response characteristics of the key rotating nodes are obtained based on the finite element simulation. Two types of data are input into the LSTM-CNN model for running condition identification, and its accuracy and efficiency are compared and analyzed. Finally, a high-speed shaft experimental platform is designed and established, and the shaft-end data and fixed-end data are respectively used to train and test the LSTM-CNN model. The performance of different models for the running condition identification of the high-speed shaft is compared. Simulation and experimental verification analysis results show that the shaft-end-data driven LSTM-CNN have better running condition identification accuracy and efficiency than that based on the fixed-end-data driven.

Key words: high speed shaft, in-situ measurement, compound neural network, running condition identification

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