This paper introduces a new approach to controlling Pressure Swing Adsorption (PSA) using a neural network controller based on a Model Predictive Control (MPC) process. We use a Hammerstein–Wiener (HW) model representing the real PSA process data. Then, we design an MPC-controlled model based on the HW model to maintain the bioethanol purity near (Formula presented.) molar fraction. This work proposes an Artificial Neural Network (ANN) that captures the dynamics of the PSA model controlled by the MPC strategy. Both controllers are validated using the HW model of the PSA process, showing great performance and robustness against disturbances. The results show that we can follow the desired trajectory and attenuate disturbances, achieving the purity of bioethanol at a molar fraction value of 0.99 using the ANN based on the MPC strategy with (Formula presented.) of fit in the control signal and a (Formula presented.) fit in the purity signal, so we can conclude that our ANN can be used to attenuate disturbances and maintain purity in the PSA process.
CITATION STYLE
Ramos-Martinez, M., Torres-Cantero, C. A., Ortiz-Torres, G., Sorcia-Vázquez, F. D. J., Avila-George, H., Lozoya-Ponce, R. E., … Rumbo-Morales, J. Y. (2023). Control for Bioethanol Production in a Pressure Swing Adsorption Process Using an Artificial Neural Network. Mathematics, 11(18). https://doi.org/10.3390/math11183967
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