A hybrid method coupling empirical mode decomposition and a long short-term memory network to predict missing measured signal data of SHM systems
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Chaodong Zhang | Junhui Liu | Linchao Li | Haijun Zhou | Hanlin Liu | Linchao Li | Haijun Zhou | Hanlin Liu | Chaodong Zhang | Junhui Liu
[1] Sung-Han Sim,et al. Issues in structural health monitoring employing smart sensors , 2007 .
[2] Yan Yu,et al. Compressive sampling–based data loss recovery for wireless sensor networks used in civil structural health monitoring , 2013 .
[3] Jun Li,et al. Development and application of a deep learning–based sparse autoencoder framework for structural damage identification , 2018, Structural Health Monitoring.
[4] John W. Wallace,et al. Reconstructing seismic response demands across multiple tall buildings using kernel‐based machine learning methods , 2019, Structural Control and Health Monitoring.
[5] Yongchao Yang,et al. Harnessing data structure for recovery of randomly missing structural vibration responses time history: Sparse representation versus low-rank structure , 2016 .
[6] Taylor B. Arnold,et al. kerasR: R Interface to the Keras Deep Learning Library , 2017, J. Open Source Softw..
[7] Zilong Zou,et al. Compressive sensing‐based lost data recovery of fast‐moving wireless sensing for structural health monitoring , 2015 .
[8] Hui Li,et al. LQD-RKHS-based distribution-to-distribution regression methodology for restoring the probability distributions of missing SHM data , 2018, Mechanical Systems and Signal Processing.
[9] Donald F. Specht,et al. A general regression neural network , 1991, IEEE Trans. Neural Networks.
[10] Yi-Qing Ni,et al. Wind pressure data reconstruction using neural network techniques: A comparison between BPNN and GRNN , 2016 .
[11] Ross Ihaka,et al. Gentleman R: R: A language for data analysis and graphics , 1996 .
[12] Stefan Fritsch,et al. neuralnet: Training of Neural Networks , 2010, R J..
[13] Yaozhi Luo,et al. Restoring method for missing data of spatial structural stress monitoring based on correlation , 2017 .
[14] Jingjing He,et al. Structural response reconstruction based on empirical mode decomposition in time domain , 2012 .
[15] James-A. Goulet,et al. Empirical Validation of Bayesian Dynamic Linear Models in the Context of Structural Health Monitoring , 2018 .
[16] Bin Ran,et al. Missing Value Imputation for Traffic-Related Time Series Data Based on a Multi-View Learning Method , 2019, IEEE Transactions on Intelligent Transportation Systems.
[17] Yuequan Bao,et al. A novel distribution regression approach for data loss compensation in structural health monitoring , 2018 .
[18] Yi-Qing Ni,et al. Bayesian multi-task learning methodology for reconstruction of structural health monitoring data , 2018, Structural Health Monitoring.
[19] Jürgen Schmidhuber,et al. Long Short-Term Memory , 1997, Neural Computation.
[20] Darryll J. Pines,et al. Structural health monitoring using empirical mode decomposition and the Hilbert phase , 2006 .
[21] Wen-Hwa Wu,et al. A Rapidly Convergent Empirical Mode Decomposition Method for Analyzing the Environmental Temperature Effects on Stay Cable Force , 2018, Comput. Aided Civ. Infrastructure Eng..
[22] Simon X. Yang,et al. Bridge Structure Deformation Prediction Based on GNSS Data Using Kalman-ARIMA-GARCH Model , 2018, Sensors.
[23] Farid Taheri,et al. Damage identification in beams using empirical mode decomposition , 2011 .
[24] Z. Q. Chen,et al. EMD-based random decrement technique for modal parameter identification of an existing railway bridge , 2011 .
[25] Brigitte Chebel-Morello,et al. Application of empirical mode decomposition and artificial neural network for automatic bearing fault diagnosis based on vibration signals , 2015 .
[26] Genda Chen,et al. Time–frequency analysis and applications in time-varying/nonlinear structural systems: A state-of-the-art review , 2018 .
[27] Hui Li,et al. Convolutional neural network‐based data anomaly detection method using multiple information for structural health monitoring , 2018, Structural Control and Health Monitoring.
[28] Mahmood Shafiee,et al. Data management for structural integrity assessment of offshore wind turbine support structures: data cleansing and missing data imputation , 2019, Ocean Engineering.
[29] Bin Ran,et al. Short-to-medium Term Passenger Flow Forecasting for Metro Stations using a Hybrid Model , 2017, KSCE Journal of Civil Engineering.
[30] Yi-Qing Ni,et al. Bayesian Modeling Approach for Forecast of Structural Stress Response Using Structural Health Monitoring Data , 2018, Journal of Structural Engineering.
[31] Yuequan Bao,et al. Analyzing and modeling inter-sensor relationships for strain monitoring data and missing data imputation: a copula and functional data-analytic approach , 2018, Structural Health Monitoring.
[32] Hui Li,et al. Computer vision and deep learning–based data anomaly detection method for structural health monitoring , 2019 .