Deep learning for air pollution detection: Analyzing scots pine needles with SEM/EDS

The goal of the activity described in the paper is to develop a smart air pollution identification system. The use of artificial intelligence, using the analysis of surface images of selected air pollution indicators to build a machine learning algorithm, allowed to develop an inexpensive and effect...

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Main Authors: Mirosław Szwed, Witold Żukowski, Dariusz Pasieka
Format: Article
Language:English
Published: Elsevier 2025-04-01
Series:Desalination and Water Treatment
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Online Access:http://www.sciencedirect.com/science/article/pii/S1944398625001651
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author Mirosław Szwed
Witold Żukowski
Dariusz Pasieka
author_facet Mirosław Szwed
Witold Żukowski
Dariusz Pasieka
author_sort Mirosław Szwed
collection DOAJ
description The goal of the activity described in the paper is to develop a smart air pollution identification system. The use of artificial intelligence, using the analysis of surface images of selected air pollution indicators to build a machine learning algorithm, allowed to develop an inexpensive and effective method of identifying hazardous substances. What was used to build the model, were scanning electron microscopy images of two-year-old needles of Pinus sylvestris L. Scots pine from representative research catchments of the national network of Integrated Monitoring of the Natural Environment and from selected locations with specific urban, industrial and transport pressure. The system enhances pollutant classification by incorporating SEM imagery combined with EDS for chemical characterization. The microscopy images were processed in a graphics programme, so that the particles classified based on their size, shape and chemical composition had the same attribute (colour). The layers (masks) used were an appropriate element to develop a machine learning algorithm identifying pollutants divided into previously defined categories. The use of neural networks to build a self-learning algorithm allowed to optimise the analysis of deposited pollutants imaged on the surface of pine needles. The developed system for identifying natural and anthropogenic particles in the form of categorised layers provides a high-level prediction efficiency. This study aims to bridge the gap between traditional bioindication techniques and AI-powered environmental assessment, thus contributing to academic research on machine learning applications in air pollution monitoring.
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issn 1944-3986
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publisher Elsevier
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series Desalination and Water Treatment
spelling doaj-art-6ba956b0ec0c4a088bdbc543e6fd3c962025-08-20T03:24:45ZengElsevierDesalination and Water Treatment1944-39862025-04-0132210114910.1016/j.dwt.2025.101149Deep learning for air pollution detection: Analyzing scots pine needles with SEM/EDSMirosław Szwed0Witold Żukowski1Dariusz Pasieka2Jan Kochanowski University of Kielce, Uniwersytecka 7, Kielce 25-406, Poland; Corresponding author.Faculty of Chemical Engineering and Technology, Cracow University of Technology, Warszawska 24, Cracow 31-155, PolandJan Kochanowski University of Kielce, Uniwersytecka 7, Kielce 25-406, PolandThe goal of the activity described in the paper is to develop a smart air pollution identification system. The use of artificial intelligence, using the analysis of surface images of selected air pollution indicators to build a machine learning algorithm, allowed to develop an inexpensive and effective method of identifying hazardous substances. What was used to build the model, were scanning electron microscopy images of two-year-old needles of Pinus sylvestris L. Scots pine from representative research catchments of the national network of Integrated Monitoring of the Natural Environment and from selected locations with specific urban, industrial and transport pressure. The system enhances pollutant classification by incorporating SEM imagery combined with EDS for chemical characterization. The microscopy images were processed in a graphics programme, so that the particles classified based on their size, shape and chemical composition had the same attribute (colour). The layers (masks) used were an appropriate element to develop a machine learning algorithm identifying pollutants divided into previously defined categories. The use of neural networks to build a self-learning algorithm allowed to optimise the analysis of deposited pollutants imaged on the surface of pine needles. The developed system for identifying natural and anthropogenic particles in the form of categorised layers provides a high-level prediction efficiency. This study aims to bridge the gap between traditional bioindication techniques and AI-powered environmental assessment, thus contributing to academic research on machine learning applications in air pollution monitoring.http://www.sciencedirect.com/science/article/pii/S1944398625001651Air pollutionArtificial intelligenceBioindicatorsMachine learningScots pineNeural network
spellingShingle Mirosław Szwed
Witold Żukowski
Dariusz Pasieka
Deep learning for air pollution detection: Analyzing scots pine needles with SEM/EDS
Desalination and Water Treatment
Air pollution
Artificial intelligence
Bioindicators
Machine learning
Scots pine
Neural network
title Deep learning for air pollution detection: Analyzing scots pine needles with SEM/EDS
title_full Deep learning for air pollution detection: Analyzing scots pine needles with SEM/EDS
title_fullStr Deep learning for air pollution detection: Analyzing scots pine needles with SEM/EDS
title_full_unstemmed Deep learning for air pollution detection: Analyzing scots pine needles with SEM/EDS
title_short Deep learning for air pollution detection: Analyzing scots pine needles with SEM/EDS
title_sort deep learning for air pollution detection analyzing scots pine needles with sem eds
topic Air pollution
Artificial intelligence
Bioindicators
Machine learning
Scots pine
Neural network
url http://www.sciencedirect.com/science/article/pii/S1944398625001651
work_keys_str_mv AT mirosławszwed deeplearningforairpollutiondetectionanalyzingscotspineneedleswithsemeds
AT witoldzukowski deeplearningforairpollutiondetectionanalyzingscotspineneedleswithsemeds
AT dariuszpasieka deeplearningforairpollutiondetectionanalyzingscotspineneedleswithsemeds