CNN-LSTM based on attention mechanism for brake pad remaining life prediction
Abstract
Keywords
Full Text:
PDFReferences
Deng Fengman. Analysis of hydraulic brake system fault diagnosis based on fuzzy ARX-RBQ method [J]. Hydraulic Pneumatics and Seals, 2020, 40(6): 51-54.
Hao Mingshu. Thermal-structural coupling analysis and life prediction of disc brakes [J]. Wuhan University of Technology, 2012(7):68-69.
T.Liao, N.Zhang. Wear prediction of brake pads in EMUs using a BP neural network. Advanced Science and Industry Research Center.Proceedings of 2014 Proceedings of 2014 International Conference on Artificial Intelligence and Industrial Application (AIIA2014) [J]. WIT Press, 2014(6):47-56.
Eker Muammer, Mutlu brahim, Aysal Faruk Emre, Atli Sinan, Yavuz brahim, Ergn Yelda Akin. The ANN Analysis and Taguchi Method Optimisation of the Brake Pad Composition [J]. Emerging Materials Research,2021(4):6-9.
Eltayb N. S. M., Hamdy Abeer. LS-SVM Approach for Predicting Frictional Performance of Industrial Brake Pad Materials [J]. International Journal of Mechanical Engineering and Robotics Research, 2016,7(2):87-88.
Changchang Che, Huawei Wang, Qiang Fu, Xiaomei Ni. Combining multiple deep learning algorithms for prognostic and health management of aircraft [J]. Aerospace Science and Technology, 2019,94(3):34-35.
Zheng S, Ristovski K, Farahat A, et al. Long short-term
memory network for remaining useful life estimation. Proceedings of the 2017 EEE International Conference on Prognostics and Health Management [J]. piscataway: EEE, 2017(7): 88-95.
Zhang J, Wang P, Yan R, et al. Long short-term memory formachine remaining life predictiion [J]. Jourmal of Manufacturing Systems, 2018, 48(Pt C):78-86.
Xu M., Wang Y. Kun. Remaining life prediction of DA40 aircraft carbon brake pads based on bidirectional long- and short-term memory networks [J]. computer Applications, 2021,41(05): 1527-1532.
Liu Muyuan, He Junyu, Huang Yuzhou, Tang Tao, Hu Jing, Xiao Xi. Algal bloom forecasting with time-frequency analysis: A hybrid deep learning approach [J]. Water Research, 2022(2),219.
Rremer M, Vempaty A, Calmonf P, et al. Correcting forecasts with multifactor neural attention [J]. International Conference on Machine Learning. 2016(3):3010-3019.
Qin Y, Song D J, Chen H F, et al. A dual-stage attention-based recurrent neural network for time series prediction [J].AAAI Press, 2017(1):2627- 2633.
P. K. Ambadekar, C. M. Choudhari. CNN based tool monitoring system to predict the life of cutting tool [J]. SN Applied Sciences, 2020,2(4):5-9.
Xiaoyang Zhang, Xin Lu, Weidong Li, Sheng Wang. Prediction of the remaining useful life of cutting tool using the Hurst exponent and CNN-LSTM [J]. The International Journal of Advanced Manufacturing Technology, 2021(112):357-366.
Lecun Y, Bottou L, Bengioy, et al. Gradient based learning applied to document recognition [J]. Proceedings of the IEEE, 1998,86(11) :2278-2324.
Hochreiter S, Schmidhuber J. Long short- term memory [J]. Neural Computation, 1997,9 (8) :1735 - 1780.
Chen HH, Wu G, Li JX et al. Advances in deep learning recommendation research based on attention mechanism [J]. Computer Engineering and Science, 2021, 43 (2) :370-380.
Yao Wang. Research on the wear life prediction and failure warning method of automotive brake pads [J]. China University of Mining and Technology, 2018(7):68-69.
DOI: https://doi.org/10.33142/mes.v4i2.9085
Refbacks
- There are currently no refbacks.
Copyright (c) 2022 Shuo WANG, Zhenliang YU, Guangchen XU, Sisi CHEN
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.