Just-in-Time Correntropy Soft Sensor with Noisy Data for Industrial Silicon Content Prediction

Sensors (Basel). 2017 Aug 8;17(8):1830. doi: 10.3390/s17081830.

Abstract

Development of accurate data-driven quality prediction models for industrial blast furnaces encounters several challenges mainly because the collected data are nonlinear, non-Gaussian, and uneven distributed. A just-in-time correntropy-based local soft sensing approach is presented to predict the silicon content in this work. Without cumbersome efforts for outlier detection, a correntropy support vector regression (CSVR) modeling framework is proposed to deal with the soft sensor development and outlier detection simultaneously. Moreover, with a continuous updating database and a clustering strategy, a just-in-time CSVR (JCSVR) method is developed. Consequently, more accurate prediction and efficient implementations of JCSVR can be achieved. Better prediction performance of JCSVR is validated on the online silicon content prediction, compared with traditional soft sensors.

Keywords: industrial blast furnace; local learning; outlier detection; silicon content; soft sensor; support vector regression.