ADVANCING SCIENCE

Scientific Contributions

Through research papers, patents, and PhD dissertations, we push the boundaries of knowledge, driving innovation in desalination and water treatment.

Precise biofilm thickness prediction in SWRO desalination from planar camera images by DNN models

by Henry J. Tanudjaja, Najat A Amin, Adnan Qamar, Sarah Kerdi, Hussain Basamh, Thomas Altmann, Ratul Das, Noreddine Ghaffour
Year: 2025 DOI: https://doi.org/10.1038/s41545-025-00451-9

Abstract

Detecting and quantifying biofouling is a challenging process inside a seawater reverse osmosis (SWRO) module due to its design complexity and operating obstacles. Herein, deep Convolutional Neural Network (CNN) models were developed to accurately calculate the cross-sectional biofilm thickness (vertical plane) through membrane surface images (horizontal plane). Models took membrane surface image as input; the classification model (CNN-Class) predicted fouling classification, while the regression model (CNN-Reg) predicted the average biofilm thickness on the membrane surface. CNN-Class model showed 90% accuracy, and CNN-Reg reached a moderate mean difference of ±24% in predicting the classification and biofilm thickness, respectively. Both models performed well and validated with 80% accuracy in classification and a mean difference of ±18% in biofilm thickness prediction from a new set of unseen live OCT images. The developed CNN models are a novel technology that has the potential to be implemented in desalination plants for early decision-making and biofouling mitigation.

Keywords

Seawater Reverse Osmosis (SWRO) Membranes Biofilm thickness prediction Biofouling detection Deep neural networks (DNN) Convolutional neural networks (CNN) Desalination membranes SWRO biofouling Membrane fouling analysis

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