247 results on '"Jiang, Qingchao"'
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52. Statistical Monitoring of Chemical Processes Based on Sensitive Kernel Principal Components
53. A Meta Reinforcement Learning-Based Task Offloading Strategy for IoT Devices in an Edge Cloud Computing Environment.
54. Chemical processes monitoring based on weighted principal component analysis and its application
55. Distributed Robust Process Monitoring Based on Optimized Denoising Autoencoder With Reinforcement Learning
56. Data-driven Soft Sensing for Batch Processes Using Neural Network-based Deep Quality-Relevant Representation Learning
57. Improved fault detection in nonlinear chemical processes using WKPCA-SVDD
58. Fault detection and identification using a Kullback-Leibler divergence based multi-block principal component analysis and bayesian inference
59. Imbalanced Classification Based on Minority Clustering Synthetic Minority Oversampling Technique With Wind Turbine Fault Detection Application
60. Fault detection in nonlinear chemical processes based on kernel entropy component analysis and angular structure
61. Local–Global Modeling and Distributed Computing Framework for Nonlinear Plant-Wide Process Monitoring With Industrial Big Data
62. Variational Bayesian probabilistic modeling framework for data-driven distributed process monitoring
63. Review for "Dynamic industrial process monitoring based on concurrent fast and slow‐time‐varying feature analytics"
64. Dynamic CCA-Based Distributed Monitoring for Multiunit Non-Gaussian Processes
65. Neural network aided approximation and parameter inference of stochastic models of gene expression
66. Fault Diagnostic Method Based on Deep Learning and Multimodel Feature Fusion for Complex Industrial Processes
67. Neighborhood Stable Correlation Analysis for Robust Monitoring of Multiunit Chemical Processes
68. Data‐driven nonlinear chemical process fault diagnosis based on hierarchical representation learning
69. Data-Driven Batch-End Quality Modeling and Monitoring Based on Optimized Sparse Partial Least Squares
70. Quality-relevant dynamic process monitoring based on dynamic total slow feature regression model
71. Data-Driven Two-Dimensional Deep Correlated Representation Learning for Nonlinear Batch Process Monitoring
72. Learning Deep Correlated Representations for Nonlinear Process Monitoring
73. Multiobjective Two-Dimensional CCA-Based Monitoring for Successive Batch Processes with Industrial Injection Molding Application
74. Neighborhood Variational Bayesian Multivariate Analysis for Distributed Process Monitoring With Missing Data
75. Multimode Process Monitoring Using Variational Bayesian Inference and Canonical Correlation Analysis
76. Review and Perspectives of Data-Driven Distributed Monitoring for Industrial Plant-Wide Processes
77. Just‐in‐time learning–multiple subspace support vector data description used for non‐Gaussian dynamic batch process monitoring
78. Multiobjective Two-Dimensional CCA-Based Monitoring for Successive Batch Processes With Industrial Injection Molding Application
79. Multivariate Statistical Monitoring of Key Operation Units of Batch Processes Based on Time-Slice CCA
80. Quality‐relevant dynamic process monitoring based on mutual information multiblock slow feature analysis
81. Quality-Driven Kernel Projection to Latent Structure Model for Nonlinear Process Monitoring
82. Deep Discriminative Representation Learning for Nonlinear Process Fault Detection
83. Independent component analysis-based non-Gaussian process monitoring with preselecting optimal components and support vector data description.
84. Batch Process Monitoring Based on Multisubspace Multiway Principal Component Analysis and Time-Series Bayesian Inference
85. Deep Discriminative Representation Learning for Nonlinear Process Fault Detection.
86. Locally Weighted Canonical Correlation Analysis for Nonlinear Process Monitoring
87. Joint-Individual Monitoring of Parallel-Running Batch Processes Based on MCCA
88. Optimal Variable Transmission for Distributed Local Fault Detection Incorporating RA and Evolutionary Optimization
89. Data-Driven Distributed Local Fault Detection for Large-Scale Processes Based on the GA-Regularized Canonical Correlation Analysis
90. Fault information-aided principal component subspace construction for efficient small fault detection for chemical processes
91. FRDPC subspace construction integrated with Bayesian inference for efficient monitoring of dynamic chemical processes
92. Output-related feature representation for soft sensing based on supervised locality preserving projections
93. Efficient Monitoring of Nonlinear Chemical Processes based on Fault-Relevant Kernel Principal Component Subspace Construction and Bayesian Inference
94. Data-Driven Optimized Distributed Dynamic PCA for Efficient Monitoring of Large-Scale Dynamic Processes
95. Bayesian Fault Diagnosis With Asynchronous Measurements and Its Application in Networked Distributed Monitoring
96. PCA-ICA Integrated with Bayesian Method for Non-Gaussian Fault Diagnosis
97. Performance-Driven Distributed PCA Process Monitoring Based on Fault-Relevant Variable Selection and Bayesian Inference
98. Multiblock Independent Component Analysis Integrated with Hellinger Distance and Bayesian Inference for Non-Gaussian Plant-Wide Process Monitoring
99. Loading-Based Principal Component Selection for PCA Integrated with Support Vector Data Description
100. Joint Probability Density and Double-Weighted Independent Component Analysis for Multimode Non-Gaussian Process Monitoring
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