Artificial neural networks (MLP-ANN) and multiple linear
regressions (MLR) models were used for predicting the dynamic adsorption of the
complex system of adsorbent adsorbate in the solid-liquid phase. A structure of
09 neurons in the input layer, 16 neurons in the hidden layer, and 1 neuron in
the output layer was built.
According to the statistically obtained result for the ANN model
in terms of root mean square error (RMSE= 0.0521) and correlation coefficient
(R = 0.991), the ANN presents a powerful tool and gives more significant
results than the MLR model.
Author(s)
Details
Meriem.
Sediri
Biomaterials and Transport Phenomena Laboratory (LBMPT),
University of Médéa, Ain D’Heb 26000, Médéa, Algeria.
Salah.
Hanini
Biomaterials and Transport Phenomena Laboratory (LBMPT),
University of Médéa, Ain D’Heb 26000, Médéa, Algeria.
Maamar.
Laidi
Biomaterials and Transport Phenomena Laboratory (LBMPT),
University of Médéa, Ain D’Heb 26000, Médéa, Algeria.
Siham.
Abbas Turki
Department of Electrics and Computing Engineering, University of
Médéa, Ain D’Heb 26000, Médéa, Algeria.
Hakima.
Cherifi
Biomaterials and Transport Phenomena Laboratory (LBMPT),
University of Médéa, Ain D’Heb 26000, Médéa, Algeria.
Hamadache.
Mabrouk
Biomaterials and Transport Phenomena Laboratory (LBMPT),
University of Médéa, Ain D’Heb 26000, Médéa, Algeria.
Please see the book here:- https://doi.org/10.9734/bpi/cmsdi/v5/1932
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