4.7 Article

Soft Sensor Design Using Multi-State Dependent Parameter Methodology Based on Generalized Random Walk Method

Journal

IEEE SENSORS JOURNAL
Volume 22, Issue 8, Pages 7888-7901

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2022.3147306

Keywords

Data models; Soft sensors; Sensors; Sorting; Mathematical models; Adaptation models; Kalman filters; Soft sensor; multi-state dependent parameter; generalized random walk; Kalman filter; fixed interval smoothing; debutanizer column

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This paper proposes a new soft sensor modeling method (GRW-MSDP) based on a generalized random walk model, which allows for robust estimation of parameters in the presence of outliers and missing data. The method utilizes the Kalman filter and fixed-interval smoothing algorithms to estimate the model parameters. The main advantage of the GRW-MSDP method is that it does not require data pre-processing and can effectively handle non-linearity in the process and missing values in the time series data.
The main problem of developing data-driven soft sensors is the existence of contamination (i.e., outliers) and missing values in the industrial real-time data. In this paper, a new soft sensor modeling method has been extended using a generalized random walk model (GRW) in order to access a robust estimation of parameters in the presence of missing data and outliers. The method termed as generalized random walk-multi-state-dependent parameter (GRW-MSDP) was established based on MSDP models. The model parameters are estimated in multivariable state space by employing the Kalman filter (KF) and fixed-interval smoothing (FIS) algorithms. The Kalman filter has been applied to identify the best state estimation values and reduce the effect of outliers by assigning low weight to them. Although in the optimization of KF hyper-parameters the missing values are not taken into account, the FIS algorithm implements a predictor-corrector type estimator to handle the missing values. The prediction step of FIS can be used for interpolation directly without parameterization. The main privilege of the GRW-MSDP method is the not necessity of data pre-processing for fitting the best models. A simulation case and an industrial debutanizer column are utilized to illustrate the effectiveness and advantages of the proposed method. Results indicate that the non-linearity of the process can be addressed under this modeling method using fewer input variables and the change of the process is also well-tracked when missing values exist in the time series data. In addition, the GRW-MSDP method obtains significant improvements in the smoothing of parameters.

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