相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。Probabilistic combination of local independent component regression model for multimode quality prediction in chemical processes
Zhiqiang Ge et al.
CHEMICAL ENGINEERING RESEARCH & DESIGN (2014)
Local Partial Least Squares Based Online Soft Sensing Method for Multi-output Processes with Adaptive Process States Division
Weiming Shao et al.
CHINESE JOURNAL OF CHEMICAL ENGINEERING (2014)
Novel Bayesian Framework for Dynamic Soft Sensor Based on Support Vector Machine With Finite Impulse Response
Chao Shang et al.
IEEE TRANSACTIONS ON CONTROL SYSTEMS TECHNOLOGY (2014)
Nonlinear semisupervised principal component regression for soft sensor modeling and its mixture form
Zhiqiang Ge et al.
JOURNAL OF CHEMOMETRICS (2014)
A novel unified correlation model using ensemble support vector regression for prediction of flooding velocity in randomly packed towers
Yi Liu et al.
JOURNAL OF INDUSTRIAL AND ENGINEERING CHEMISTRY (2014)
Developing a soft sensor based on sparse partial least squares with variable selection
Jialin Liu
JOURNAL OF PROCESS CONTROL (2014)
Data-driven soft sensor development based on deep learning technique
Chao Shang et al.
JOURNAL OF PROCESS CONTROL (2014)
A Bayesian model averaging based multi-kernel Gaussian process regression framework for nonlinear state estimation and quality prediction of multiphase batch processes with transient dynamics and uncertainty
Jie Yu et al.
CHEMICAL ENGINEERING SCIENCE (2013)
Adaptive soft sensor for online prediction and process monitoring based on a mixture of Gaussian process models
Ratko Grbic et al.
COMPUTERS & CHEMICAL ENGINEERING (2013)
Online quality prediction for cobalt oxalate synthesis process using least squares support vector regression approach with dual updating
Shuning Zhang et al.
CONTROL ENGINEERING PRACTICE (2013)
A novel least squares support vector machine ensemble model for NOx emission prediction of a coal-fired boiler
You Lv et al.
ENERGY (2013)
Long-Term Industrial Applications of Inferential Control Based on Just-In-Time Soft-Sensors: Economical Impact and Challenges
Sanghong Kim et al.
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH (2013)
Virtual Sensing Technology in Process Industries: Trends and Challenges Revealed by Recent Industrial Applications
Manabu Kano et al.
JOURNAL OF CHEMICAL ENGINEERING OF JAPAN (2013)
Modeling and advanced control method of PVC polymerization process
Shu Zhi Gao et al.
JOURNAL OF PROCESS CONTROL (2013)
Integrated soft sensor using just-in-time support vector regression and probabilistic analysis for quality prediction of multi-grade processes
Yi Liu et al.
JOURNAL OF PROCESS CONTROL (2013)
Online quality prediction of nonlinear and non-Gaussian chemical processes with shifting dynamics using finite mixture model based Gaussian process regression approach
Jie Yu
CHEMICAL ENGINEERING SCIENCE (2012)
Localized, Adaptive Recursive Partial Least Squares Regression for Dynamic System Modeling
Wangdong Ni et al.
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH (2012)
Just-in-Time Kernel Learning with Adaptive Parameter Selection for Soft Sensor Modeling of Batch Processes
Yi Liu et al.
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH (2012)
A Bayesian approach to design of adaptive multi-model inferential sensors with application in oil sand industry
Shima Khatibisepehr et al.
JOURNAL OF PROCESS CONTROL (2012)
Inferential estimation of kerosene dry point in refineries with varying crudes
Chang Zhou et al.
JOURNAL OF PROCESS CONTROL (2012)
On-line principal component analysis with application to process modeling
Jian Tang et al.
NEUROCOMPUTING (2012)
Development of high predictive soft sensor method and the application to industrial polymer processes
Hiromasa Kaneko et al.
ASIA-PACIFIC JOURNAL OF CHEMICAL ENGINEERING (2012)
Adaptive soft sensors using local partial least squares with moving window approach
Jialin Liu et al.
ASIA-PACIFIC JOURNAL OF CHEMICAL ENGINEERING (2012)
Local Learning-Based Adaptive Soft Sensor for Catalyst Activation Prediction
Petr Kadlec et al.
AICHE JOURNAL (2011)
Review of adaptation mechanisms for data-driven soft sensors
Petr Kadlec et al.
COMPUTERS & CHEMICAL ENGINEERING (2011)
A Survey of Data Treatment Techniques for Soft Sensor Design
Ajaya Kumar Pani et al.
CHEMICAL PRODUCT AND PROCESS MODELING (2011)
Development of Self-Validating Soft Sensors Using Fast Moving Window Partial Least Squares
Jialin Liu et al.
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH (2010)
The state of the art in chemical process control in Japan: Good practice and questionnaire survey
Manabu Kano et al.
JOURNAL OF PROCESS CONTROL (2010)
Soft-Sensor Development Using Correlation-Based Just-in-Time Modeling
Koichi Fujiwara et al.
AICHE JOURNAL (2009)
Data-driven Soft Sensors in the process industry
Petr Kadlec et al.
COMPUTERS & CHEMICAL ENGINEERING (2009)
Adaptive Soft-sensor Modeling Algorithm Based on FCMISVM and Its Application in PX Adsorption Separation Process
Fu Yongfeng et al.
CHINESE JOURNAL OF CHEMICAL ENGINEERING (2008)
On-line soft sensor for polyethylene process with multiple production grades
Jialin Liu
CONTROL ENGINEERING PRACTICE (2007)