Deep learning for quality prediction of nonlinear dynamic processes with variable attention‐based long short‐term memory network

[1]  Jürgen Schmidhuber,et al.  Long Short-Term Memory , 1997, Neural Computation.

[2]  Biao Huang,et al.  Deep Learning-Based Feature Representation and Its Application for Soft Sensor Modeling With Variable-Wise Weighted SAE , 2018, IEEE Transactions on Industrial Informatics.

[3]  W. Harmon Ray,et al.  Chemometric methods for process monitoring and high‐performance controller design , 1992 .

[4]  Chao Yang,et al.  Ensemble deep kernel learning with application to quality prediction in industrial polymerization processes , 2018 .

[5]  Zhiqiang Ge,et al.  Quality variable prediction for chemical processes based on semisupervised Dirichlet process mixture of Gaussians , 2019, Chemical Engineering Science.

[6]  Biao Huang,et al.  Design of inferential sensors in the process industry: A review of Bayesian methods , 2013 .

[7]  Weihua Gui,et al.  Probabilistic density-based regression model for soft sensing of nonlinear industrial processes , 2017 .

[8]  Xiao Fan Wang,et al.  Soft sensing modeling based on support vector machine and Bayesian model selection , 2004, Comput. Chem. Eng..

[9]  Manabu Kano,et al.  Estimation of active pharmaceutical ingredients content using locally weighted partial least squares and statistical wavelength selection. , 2011, International journal of pharmaceutics.

[10]  Jürgen Schmidhuber,et al.  Framewise phoneme classification with bidirectional LSTM and other neural network architectures , 2005, Neural Networks.

[11]  Sirish L. Shah,et al.  Inferential sensors for estimation of polymer quality parameters: Industrial application of a PLS-based soft sensor for a LDPE plant , 2006 .

[12]  Zhiqiang Ge,et al.  Weighted Linear Dynamic System for Feature Representation and Soft Sensor Application in Nonlinear Dynamic Industrial Processes , 2018, IEEE Transactions on Industrial Electronics.

[13]  Zhi-huan Song,et al.  Locally Weighted Kernel Principal Component Regression Model for Soft Sensing of Nonlinear Time-Variant Processes , 2014 .

[14]  Xuefeng Yan,et al.  Design teacher and supervised dual stacked auto-encoders for quality-relevant fault detection in industrial process , 2019, Appl. Soft Comput..

[15]  Manabu Kano,et al.  Data-based process monitoring, process control, and quality improvement: Recent developments and applications in steel industry , 2008, Comput. Chem. Eng..

[16]  Zhiqiang Ge,et al.  A comparative study of just-in-time-learning based methods for online soft sensor modeling , 2010 .

[17]  SchmidhuberJürgen,et al.  2005 Special Issue , 2005 .

[18]  B. Kowalski,et al.  Partial least-squares regression: a tutorial , 1986 .

[19]  Zhiqiang Ge,et al.  A Probabilistic Just-in-Time Learning Framework for Soft Sensor Development With Missing Data , 2017, IEEE Transactions on Control Systems Technology.

[20]  Lei Xie,et al.  Novel Just-In-Time Learning-Based Soft Sensor Utilizing Non-Gaussian Information , 2014, IEEE Transactions on Control Systems Technology.

[21]  Zhiqiang Ge,et al.  Semisupervised JITL Framework for Nonlinear Industrial Soft Sensing Based on Locally Semisupervised Weighted PCR , 2017, IEEE Transactions on Industrial Informatics.

[22]  Luigi Fortuna,et al.  Soft sensors for product quality monitoring in debutanizer distillation columns , 2005 .

[23]  Dexian Huang,et al.  Data-driven soft sensor development based on deep learning technique , 2014 .

[24]  Xuefeng Yan,et al.  Using Labeled Autoencoder to Supervise Neural Network Combined with k-Nearest Neighbor for Visual Industrial Process Monitoring , 2019, Industrial & Engineering Chemistry Research.

[25]  Yang Wang,et al.  Data-Driven Distributed Local Fault Detection for Large-Scale Processes Based on the GA-Regularized Canonical Correlation Analysis , 2017, IEEE Transactions on Industrial Electronics.

[26]  Zhiqiang Ge,et al.  Deep Learning of Semisupervised Process Data With Hierarchical Extreme Learning Machine and Soft Sensor Application , 2018, IEEE Transactions on Industrial Electronics.

[27]  Shihua Luo,et al.  Soft Sensing of a Nonlinear Multimode Process Using a Self Organizing Model and Conditional Probability Density Analysis , 2019, Industrial & Engineering Chemistry Research.

[28]  Xiang Li,et al.  Long short-term memory neural network for air pollutant concentration predictions: Method development and evaluation. , 2017, Environmental pollution.

[29]  Zhiqiang Ge,et al.  Soft Sensor Modeling of Nonlinear Industrial Processes Based on Weighted Probabilistic Projection Regression , 2017, IEEE Transactions on Instrumentation and Measurement.

[30]  W. Massy Principal Components Regression in Exploratory Statistical Research , 1965 .

[31]  Lukás Burget,et al.  Strategies for training large scale neural network language models , 2011, 2011 IEEE Workshop on Automatic Speech Recognition & Understanding.