Improving process operations using support vector machines and decision trees (original) (raw)
Related papers
Statistical Process Control using Support Vector Machines: A Case Study
xa.yimg.com
Fault Detection and Diagnosis in Process Data Using Support Vector Machines
Journal of Applied Mathematics, 2014
Applying decision trees to investigate the operating regimes of a production process
ACTA AGRARIA KAPOSVÁRIENSIS; vol. 11, num. 2, pp. 175-186, 2007
Kernel-based fault diagnosis on mineral processing plants
Minerals Engineering, 2006
Application of combined support vector machines in process fault diagnosis
2009 American Control Conference, 2009
2007
On the complexity and interpretability of support vector machines for process modeling
Proceedings of the 2002 International Joint Conference on Neural Networks. IJCNN'02 (Cat. No.02CH37290), 2002
1991
HUNGARIAN JOURNAL OF INDUSTRIAL CHEMISTRY; vol. 35, num. 1, 2007
A review of machine learning approaches for high dimensional process monitoring
Proceedings of the 2018 Industrial and Systems Engineering Research Conference, 2018
Data Mining for Fault Diagnosis in Dynamic Processes : An approach based on SVM
2013
Support vector machines for recognizing shifts in correlated and other manufacturing processes
International journal of production research, 2002
FAULT DETECTION AND DIAGNOSIS VIA IMPROVED MULTIVARIATE STATISTICAL PROCESS CONTROL
Naecon, 1992
Model-based diagnosis of special causes in statistical process control
International Journal of Production Research, 1997
International Journal of Adaptive Control and Signal Processing, 2006
Neurocomputing, 2011
Optimizing kernel methods to reduce dimensionality in fault diagnosis of industrial systems
Computers & Industrial Engineering, 2015
Monitoring Nonlinear Profiles Using Support Vector Machines
Lecture Notes in Computer Science
Study on Support Vector Machine-Based Fault Detection in Tennessee Eastman Process
Abstract and Applied Analysis, 2014
Identification of change structure in statistical process control
International Journal of Production Research, 1992
Sensors
Supervised process monitoring and fault diagnosis based on machine learning methods
The International Journal of Advanced Manufacturing Technology, 2019
Process Fault Diagnosis Using Recursive Multivariate Statistical Process Control
IFAC Proceedings Volumes
Stellenbosch : Stellenbosch University, 2021
Applied Soft Computing, 2016
An integrated supervised learning solution for monitoring process mean vector
The International Journal of Advanced Manufacturing Technology, 2011
Robust kernel distance multivariate control chart using support vector principles
International Journal of Production Research, 2008
Application of Computational Intelligence Methods in Control And Diagnosis of Production Processes
2013
Stabilizing the Operation of Industrial Processes using Data Driven Techniques
Chemical Engineering Research Bulletin, 2009
Applications of Data Mining to Diagnosis and Control of Manufacturing Processes
Knowledge-Oriented Applications in Data Mining, 2011
IFAC Proceedings Volumes, 2008
Journal of Chemometrics, 2010
Decision trees for informative process alarm definition and alarm-based fault classification
Process Safety and Environmental Protection, 2020
Lecture Notes in Computer Science, 2005