An online variable selection method using recursive least squares

This paper proposes a method for online variable selection and model learning (AdaFSML-RLS) to be applied in industrial applications in the context of adaptive soft sensors. In the proposed method the model learning is made online and recursivelly, i.e it is not necessary to store the past values of data while learning the model. Furthermore, the proposed method has the capability of tracking the real time correlation coefficient between each variable and the target, allowing the knowledge about the importance of variables over the time. Moreover, in this method is not necessary to have any knowledge about the process or variables. The method was sucessfully applied in two datasets, an artificial dataset and in a real-world dataset.

[1]  E. Mizutani,et al.  Neuro-Fuzzy and Soft Computing-A Computational Approach to Learning and Machine Intelligence [Book Review] , 1997, IEEE Transactions on Automatic Control.

[2]  Bhupinder S. Dayal,et al.  Recursive exponentially weighted PLS and its applications to adaptive control and prediction , 1997 .

[3]  Petr Kadlec,et al.  Interpretable, Online Soft-Sensors for Process Control , 2011, 2011 IEEE 11th International Conference on Data Mining Workshops.

[4]  Weihua Li,et al.  Recursive PCA for adaptive process monitoring , 1999 .

[5]  David Shan-Hill Wong,et al.  Development of Adaptive Soft Sensor Based on Statistical Identification of Key Variables , 2008 .

[6]  Herman Augusto Lepikson,et al.  Applications of information theory, genetic algorithms, and neural models to predict oil flow , 2009 .

[7]  Isabelle Guyon,et al.  An Introduction to Variable and Feature Selection , 2003, J. Mach. Learn. Res..

[8]  Bogdan Gabrys,et al.  Data-driven Soft Sensors in the process industry , 2009, Comput. Chem. Eng..

[9]  Rui Araújo,et al.  Variable and time-lag selection using empirical data , 2011, ETFA2011.

[10]  Luigi Fortuna,et al.  Soft Sensors for Monitoring and Control of Industrial Processes (Advances in Industrial Control) , 2006 .

[11]  Girijesh Prasad,et al.  Statistical and computational intelligence techniques for inferential model development: a comparative evaluation and a novel proposition for fusion , 2004, Eng. Appl. Artif. Intell..

[12]  Ronald W. Shephard,et al.  Mathematics of Statistics, Part One. , 1948 .

[13]  Radford M. Neal Pattern Recognition and Machine Learning , 2007, Technometrics.

[14]  Bogdan Gabrys,et al.  Review of adaptation mechanisms for data-driven soft sensors , 2011, Comput. Chem. Eng..