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OPTIMIZING NANOFILTRATION FOR SUSTAINABLE PHARMACEUTICAL WASTEWATER TREATMENT USING RESPONSE SURFACE METHODOLOGY AND ARTIFICIAL NEURAL NETWORKS.
Year: 2025
Type of publication: ostatní - článek ve sborníku
Name of source: Workshop of Student's Presentation 2025 : book of abstracts
Publisher name: Czech Membrane Platform
Place: Česká Lípa
Page from-to: nestránkováno
Titles:
Language Name Abstract Keywords
eng OPTIMIZING NANOFILTRATION FOR SUSTAINABLE PHARMACEUTICAL WASTEWATER TREATMENT USING RESPONSE SURFACE METHODOLOGY AND ARTIFICIAL NEURAL NETWORKS. This study presents a comparative modelling approach for predicting pharmaceutical rejection from synthetic wastewater using thin-film composite nanofiltration membranes (AFC 40 and AFC 80). Three key process parameters, transmembrane pressure (10–30 bar), feed flow rate (5–15 L/min), and feed concentration (5–20 mg/L) were evaluated to optimize system performance. Response Surface Methodology (RSM) and Artificial Neural Networks (ANN) were applied to model and predict solute rejection behaviour. The findings highlight the potential of machine learning-based predictive tools in optimizing nanofiltration processes for pharmaceutical removal, offering a robust framework for advancing sustainable wastewater treatment strategies. OPTIMIZING; NANOFILTRATION; PHARMACEUTICAL; WASTEWATER; RESPONSE SURFACE METHODOLOGY; ARTIFICIAL NEURAL NETWORKS.