An efficient nonlinear just-in-time learning (JITL) soft sensor method for online modeling of batch processes with uneven operating durations is proposed. A recursive least-squares support vector regression (RLSSVR) approach is combined with the JITL manner to model the nonlinearity of batch processes. The similarity between the query sample and the most relevant samples, including the weight of similarity and the size of the relevant set, can be chosen using a presented cumulative similarity factor. Then, the kernel parameters of the developed JITL-RLSSVR model structure can be determined adaptively using an efficient cross-validation strategy with low computational load. The soft sensor implement algorithm for batch processes is also deve...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
To resolve the online detection difficulty of some important state variables in fermentation process...
A comparative study of software sensors using Multiway Partial Least Squares and Extended Kalman Fil...
Soft sensors based on multivariate statistical models are used very frequently for the monitoring of...
A soft-sensing methodology applicable to batch processes operated under changeable initial condition...
Traditional single model based soft sensors may have poor performance on quality prediction for batc...
AbstractData-driven soft sensors have gained popularity due to availability of the recorded historic...
We propose a soft sensing method using local partial least squares models with adaptive process stat...
Soft sensor techniques have been widely adopted in chemical industry to estimate important indices t...
In the era of big data, industrial process data are often generated rapidly in the form of streams. ...
Abstract: In order to overcome the difficulties of online measurement of some crucial biochemical va...
Soft sensors are vital for online predictions of quality-related yet difficult-to-measure variables ...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
In the development of soft sensors for chemical processes, outliers of input variables and the time-...
Data-driven soft sensors have gained popularity due to availability of the recorded historical plant...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
To resolve the online detection difficulty of some important state variables in fermentation process...
A comparative study of software sensors using Multiway Partial Least Squares and Extended Kalman Fil...
Soft sensors based on multivariate statistical models are used very frequently for the monitoring of...
A soft-sensing methodology applicable to batch processes operated under changeable initial condition...
Traditional single model based soft sensors may have poor performance on quality prediction for batc...
AbstractData-driven soft sensors have gained popularity due to availability of the recorded historic...
We propose a soft sensing method using local partial least squares models with adaptive process stat...
Soft sensor techniques have been widely adopted in chemical industry to estimate important indices t...
In the era of big data, industrial process data are often generated rapidly in the form of streams. ...
Abstract: In order to overcome the difficulties of online measurement of some crucial biochemical va...
Soft sensors are vital for online predictions of quality-related yet difficult-to-measure variables ...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
In the development of soft sensors for chemical processes, outliers of input variables and the time-...
Data-driven soft sensors have gained popularity due to availability of the recorded historical plant...
Soft-sensors are widely utilized for predictions of important but hard-to-measure variables in indus...
To resolve the online detection difficulty of some important state variables in fermentation process...
A comparative study of software sensors using Multiway Partial Least Squares and Extended Kalman Fil...