Machine Learning and Neural Networks for Modelling the Retention of PPhACs by NF/RO

The retention of polar pharmaceutical active compounds (PPhACs) by nanofiltration and reverse osmosis (NF/RO) membranes is of paramount importance in membrane separation processes. The retention of 21 PPhACs was correlated using artificial intelligence techniques: multi-layer perceptron (MLP), feedf...

Full description

Bibliographic Details
Main Authors: Yamina Ammi, Cherif Si-Moussa, Salah Hanini
Format: Article
Language:English
Published: Croatian Society of Chemical Engineers 2023-11-01
Series:Kemija u Industriji
Subjects:
Online Access:http://silverstripe.fkit.hr/kui/assets/Uploads/1-617-626-KUI-11-12-2023.pdf
Description
Summary:The retention of polar pharmaceutical active compounds (PPhACs) by nanofiltration and reverse osmosis (NF/RO) membranes is of paramount importance in membrane separation processes. The retention of 21 PPhACs was correlated using artificial intelligence techniques: multi-layer perceptron (MLP), feedforward neural network with radial basis function (RBF), and support vector machine (SVM). A database of 541 retention values has been collected from the literature. The results showed a high predictive capacity of the MLP model for the retention of PPhACs by NF/RO with a very high correlation coefficient (R = 0.9714) and a very low root mean squared error (RMSE = 3.9139 %) for the entire data set. The comparison between the three models showed the superiority of the MLP model. The sensitivity analysis emphasised that the retention of PPhACs is governed by three interactions arranged in descending order: polarity interactions (hydrophobicity/hydrophilicity), electrostatic repulsion, and steric hindrance. This research suggests that the PPhACs retention on the NF/RO membrane strongly depends on the topological polar surface area.
ISSN:0022-9830
1334-9090