Follow
Ma Meng
Ma Meng
Postdoctoral associate of Mechanical Engineering, University of Massachusetts, Lowell.
Verified email at uml.edu
Title
Cited by
Cited by
Year
Deep transfer learning based on sparse autoencoder for remaining useful life prediction of tool in manufacturing
C Sun, M Ma, Z Zhao, S Tian, R Yan, X Chen
IEEE transactions on industrial informatics 15 (4), 2416-2425, 2018
5052018
Deep-convolution-based LSTM network for remaining useful life prediction
M Ma, Z Mao
IEEE Transactions on Industrial Informatics 17 (3), 1658-1667, 2020
4042020
Deep coupling autoencoder for fault diagnosis with multimodal sensory data
M Ma, C Sun, X Chen
IEEE Transactions on Industrial Informatics 14 (3), 1137-1145, 2018
2782018
Sparse deep stacking network for fault diagnosis of motor
C Sun, M Ma, Z Zhao, X Chen
IEEE Transactions on Industrial Informatics 14 (7), 3261-3270, 2018
2012018
Discriminative deep belief networks with ant colony optimization for health status assessment of machine
M Ma, C Sun, X Chen
IEEE Transactions on Instrumentation and Measurement 66 (12), 3115-3125, 2017
1422017
A deep coupled network for health state assessment of cutting tools based on fusion of multisensory signals
M Ma, C Sun, X Chen, X Zhang, R Yan
IEEE Transactions on Industrial Informatics 15 (12), 6415-6424, 2019
582019
Physics-informed deep neural network for bearing prognosis with multisensory signals
X Chen, M Ma, Z Zhao, Z Zhai, Z Mao
Journal of dynamics, monitoring and diagnostics, 200-207, 2022
542022
Locally linear embedding on Grassmann manifold for performance degradation assessment of bearings
M Ma, X Chen, X Zhang, B Ding, S Wang
IEEE Transactions on Reliability 66 (2), 467-477, 2017
532017
Bearing degradation assessment based on weibull distribution and deep belief network
M Ma, X Chen, S Wang, Y Liu, W Li
2016 International symposium on flexible automation (ISFA), 382-385, 2016
432016
Deep wavelet sequence-based gated recurrent units for the prognosis of rotating machinery
M Ma, Z Mao
Structural Health Monitoring 20 (4), 1794-1804, 2021
332021
Deep recurrent convolutional neural network for remaining useful life prediction
M Ma, Z Mao
2019 IEEE international conference on prognostics and health management …, 2019
332019
Subspace-based MVE for performance degradation assessment of aero-engine bearings with multimodal features
M Ma, C Sun, C Zhang, X Chen
Mechanical Systems and Signal Processing 124, 298-312, 2019
282019
Ensemble deep learning with multi-objective optimization for prognosis of rotating machinery
M Ma, C Sun, Z Mao, X Chen
ISA transactions 113, 166-174, 2021
262021
Deep learning in heterogeneous materials: Targeting the thermo-mechanical response of unidirectional composites
Q Chen, W Tu, M Ma
Journal of Applied Physics 127 (17), 2020
212020
An improved analytical dynamic model for rotating blade crack: With application to crack detection indicator analysis
L Yang, M Ma, S Wu, X Chen, R Yan, Z Mao
Journal of Low Frequency Noise, Vibration and Active Control 40 (4), 1935-1961, 2021
172021
Intelligent fault diagnosis of liquid rocket engine via interpretable LSTM with multisensory data
X Zhang, X Hua, J Zhu, M Ma
Sensors 23 (12), 5636, 2023
112023
Dynamic Model-based Digital Twin for Crack Detection of Aeroengine Disk
Y Yang, M Ma, Z Zhou, C Sun, R Yan
2021 International Conference on Sensing, Measurement & Data Analytics in …, 2021
82021
Transformer based Kalman Filter with EM algorithm for time series prediction and anomaly detection of complex systems
M Ma, L Fu, Z Zhai, RB Sun
Measurement 229, 114378, 2024
62024
Rotating machinery prognostics via the fusion of particle filter and deep learning
M Ma, ZHU Mao
Structural Health Monitoring 2019, 2019
62019
Direct waveform extraction via a deep recurrent denoising autoencoder
M Ma, Y Qin, M Haile, Z Mao
Nondestructive Characterization and Monitoring of Advanced Materials …, 2019
52019
The system can't perform the operation now. Try again later.
Articles 1–20