Hybrid modeling for optimizing electrospun polyurethane nanofibrous membranes in air filtration applications

Abstract Nanofibers have gained recognition as promising materials for air filtration due to their high surface area-to-volume ratio, adjustable porosity, and exceptional mechanical properties. However, optimizing their structural characteristics to maximize filtration efficiency while minimizing pr...

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Main Authors: Majid Sohrabi, Milad Razbin
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-13159-0
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author Majid Sohrabi
Milad Razbin
author_facet Majid Sohrabi
Milad Razbin
author_sort Majid Sohrabi
collection DOAJ
description Abstract Nanofibers have gained recognition as promising materials for air filtration due to their high surface area-to-volume ratio, adjustable porosity, and exceptional mechanical properties. However, optimizing their structural characteristics to maximize filtration efficiency while minimizing pressure drop remains challenging due to the complexity of the electrospinning process. This study presents an artificial intelligence-based methodology to establish relationships between electrospinning parameters, nanofiber morphology, and filtration performance. An advanced statistical approach is used to systematically collect and analyze data, followed by modeling these relationships using artificial neural networks (ANN) and analytical formulas to enhance predictive accuracy. A genetic algorithm (GA) is subsequently utilized to refine electrospinning parameters, facilitating the production of nanofibers with enhanced filtration efficiency and optimized airflow resistance. The optimized nanofiber membranes are validated experimentally to assess their real-world performance. The findings demonstrate the potential of AI-driven design in fine-tuning nanofiber structures for advanced air filtration applications. The optimized sample achieved a filtration efficiency of 96%, a pressure drop of 110.23 Pa, and a quality factor of 0.0297. This study underscores the effectiveness of combining AI with electrospinning to develop high-performance air filtration materials.
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spelling doaj-art-4ffc00bc21704c4fbea611fc68fbeee92025-08-20T04:02:45ZengNature PortfolioScientific Reports2045-23222025-07-0115111710.1038/s41598-025-13159-0Hybrid modeling for optimizing electrospun polyurethane nanofibrous membranes in air filtration applicationsMajid Sohrabi0Milad Razbin1Department of Textile Engineering, Faculty of Engineering, University of GuilanDepartment of Textile Engineering, Amirkabir University of TechnologyAbstract Nanofibers have gained recognition as promising materials for air filtration due to their high surface area-to-volume ratio, adjustable porosity, and exceptional mechanical properties. However, optimizing their structural characteristics to maximize filtration efficiency while minimizing pressure drop remains challenging due to the complexity of the electrospinning process. This study presents an artificial intelligence-based methodology to establish relationships between electrospinning parameters, nanofiber morphology, and filtration performance. An advanced statistical approach is used to systematically collect and analyze data, followed by modeling these relationships using artificial neural networks (ANN) and analytical formulas to enhance predictive accuracy. A genetic algorithm (GA) is subsequently utilized to refine electrospinning parameters, facilitating the production of nanofibers with enhanced filtration efficiency and optimized airflow resistance. The optimized nanofiber membranes are validated experimentally to assess their real-world performance. The findings demonstrate the potential of AI-driven design in fine-tuning nanofiber structures for advanced air filtration applications. The optimized sample achieved a filtration efficiency of 96%, a pressure drop of 110.23 Pa, and a quality factor of 0.0297. This study underscores the effectiveness of combining AI with electrospinning to develop high-performance air filtration materials.https://doi.org/10.1038/s41598-025-13159-0Nanofibrous membranePolyurethaneAir filtrationArtificial intelligenceOptimization
spellingShingle Majid Sohrabi
Milad Razbin
Hybrid modeling for optimizing electrospun polyurethane nanofibrous membranes in air filtration applications
Scientific Reports
Nanofibrous membrane
Polyurethane
Air filtration
Artificial intelligence
Optimization
title Hybrid modeling for optimizing electrospun polyurethane nanofibrous membranes in air filtration applications
title_full Hybrid modeling for optimizing electrospun polyurethane nanofibrous membranes in air filtration applications
title_fullStr Hybrid modeling for optimizing electrospun polyurethane nanofibrous membranes in air filtration applications
title_full_unstemmed Hybrid modeling for optimizing electrospun polyurethane nanofibrous membranes in air filtration applications
title_short Hybrid modeling for optimizing electrospun polyurethane nanofibrous membranes in air filtration applications
title_sort hybrid modeling for optimizing electrospun polyurethane nanofibrous membranes in air filtration applications
topic Nanofibrous membrane
Polyurethane
Air filtration
Artificial intelligence
Optimization
url https://doi.org/10.1038/s41598-025-13159-0
work_keys_str_mv AT majidsohrabi hybridmodelingforoptimizingelectrospunpolyurethanenanofibrousmembranesinairfiltrationapplications
AT miladrazbin hybridmodelingforoptimizingelectrospunpolyurethanenanofibrousmembranesinairfiltrationapplications