Hammerstein Box-Jenkins System Identification of the Cascaded Tanks Benchmark System

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Abstract

A common process control application is the cascaded two-tank system, where the level is controlled in the second tank. A nonlinear system identification approach is presented in this work to predict the model structure parameters that minimize the difference between the estimated and measured data, using benchmark datasets. The general suggested structure consists of a static nonlinearity in cascade with a linear dynamic filter in addition to colored noise element. A one-step ahead prediction error-based technique is proposed to estimate the model. The model is identified using a separable least squares optimization, where only the parameters that appear nonlinearly in the output of the predictor are solved using a modified Levenberg-Marquardt iterative optimization approach, while the rest are fitted using simple least squares after each iteration. Finally, MATLAB simulation examples using benchmark data are included.

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Aljamaan, I. A., Al-Dhaifallah, M. M., & Westwick, D. T. (2021). Hammerstein Box-Jenkins System Identification of the Cascaded Tanks Benchmark System. Mathematical Problems in Engineering, 2021. https://doi.org/10.1155/2021/6613425

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