Monitoring of wastewater treatment processes using dynamic concurrent kernel partial least squares
暂无分享,去创建一个
Yuchen Zhang | Jie Yang | Hongbin Liu | Chong Yang | Chong Yang | Hongbin Liu | Yuchen Zhang | Jie Yang
[1] Donghua Zhou,et al. Total projection to latent structures for process monitoring , 2009 .
[2] Qiang Liu,et al. Comprehensive monitoring of nonlinear processes based on concurrent kernel projection to latent structures , 2016, IEEE Transactions on Automation Science and Engineering.
[3] Roman Rosipal,et al. Kernel Partial Least Squares Regression in Reproducing Kernel Hilbert Space , 2002, J. Mach. Learn. Res..
[4] Tiago J. Rato,et al. Defining the structure of DPCA models and its impact on process monitoring and prediction activities , 2013 .
[5] Mingzhi Huang,et al. Multivariate statistical monitoring of subway indoor air quality using dynamic concurrent partial least squares , 2019, Environmental Science and Pollution Research.
[6] Bengt Carlsson,et al. Dynamic Nonlinear Partial Least Squares Modeling Using Gaussian Process Regression , 2019, Industrial & Engineering Chemistry Research.
[7] Rongrong Sun,et al. Fault diagnosis of nonlinear process based on KCPLS reconstruction , 2015 .
[8] Zonghai Sun,et al. Statistical Monitoring of Wastewater Treatment Plants Using Variational Bayesian PCA , 2014 .
[9] S. Joe Qin,et al. Statistical process monitoring: basics and beyond , 2003 .
[10] In-Beum Lee,et al. A novel multivariate regression approach based on kernel partial least squares with orthogonal signal correction , 2005 .
[11] Barry M. Wise,et al. The process chemometrics approach to process monitoring and fault detection , 1995 .
[12] S. Joe Qin,et al. Quality‐relevant and process‐relevant fault monitoring with concurrent projection to latent structures , 2013 .
[13] S. Wold,et al. PLS-regression: a basic tool of chemometrics , 2001 .
[14] Furong Gao,et al. Review of Recent Research on Data-Based Process Monitoring , 2013 .
[15] ChangKyoo Yoo,et al. A fuzzy neural network-based soft sensor for modeling nutrient removal mechanism in a full-scale wastewater treatment system , 2013 .
[16] Thomas J. McAvoy,et al. Nonlinear PLS Modeling Using Neural Networks , 1992 .
[17] LiuHongbin,et al. Fault Diagnosis of Subway Indoor Air Quality Based on Local Fisher Discriminant Analysis , 2018 .
[18] Chi Ma,et al. Fault diagnosis of nonlinear processes using multiscale KPCA and multiscale KPLS , 2011 .
[19] ChangKyoo Yoo,et al. Evaluation of passenger health risk assessment of sustainable indoor air quality monitoring in metro systems based on a non-Gaussian dynamic sensor validation method. , 2014, Journal of hazardous materials.
[20] Soon Keat Tan,et al. Localized, Adaptive Recursive Partial Least Squares Regression for Dynamic System Modeling , 2012 .
[21] ChangKyoo Yoo,et al. Statistical process monitoring with independent component analysis , 2004 .
[22] B H Jun,et al. Fault detection using dynamic time warping (DTW) algorithm and discriminant analysis for swine wastewater treatment. , 2011, Journal of hazardous materials.
[23] Hazem Nounou,et al. Online reduced kernel PLS combined with GLRT for fault detection in chemical systems , 2019, Process Safety and Environmental Protection.
[24] C. Yoo,et al. Nonlinear process monitoring using kernel principal component analysis , 2004 .
[25] A. J. Morris,et al. Non-linear dynamic projection to latent structures modelling , 2000 .
[26] Si-Zhao Joe Qin,et al. Survey on data-driven industrial process monitoring and diagnosis , 2012, Annu. Rev. Control..
[27] Ying-wei Zhang,et al. On-line batch process monitoring using hierarchical kernel partial least squares , 2011 .
[28] Daoping Huang,et al. Development of Interval Soft Sensors Using Enhanced Just-in-Time Learning and Inductive Confidence Predictor , 2012 .