A supervised machine learning approach to classify traffic-derived PM sources based on their magnetic properties.

被引:3
作者
Letaief, Sarah [1 ]
Camps, Pierre [1 ]
Carvallo, Claire [2 ]
机构
[1] Univ Montpellier, CNRS, Geosci Montpellier, Montpellier, France
[2] Sorbonne Univ, Inst Mineral Phys Mat & Cosmochim, UMR 7590, F-75005 Paris, France
关键词
Magnetic properties; kNN classification; Machine learning; Traffic related PM; ULTRAFINE PARTICLES; ACQUISITION CURVES; IDENTIFICATION; POLLUTION; QUANTIFICATION; COMPONENTS; MINERALS; SYSTEMS; DUST; SIZE;
D O I
10.1016/j.envres.2023.116006
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Environmental magnetism techniques are increasingly used to map the deposition of particulate pollutants on any type of accumulative surfaces. The present study is part of a collective effort that begun in recent years to evaluate the efficiency of these techniques involving a large range of measurements to trace the source signals. Here we explore the possibilities provided by the very simple but robust k-near-neighbors algorithm (kNN) for classification in a source-to-sink approach. For this purpose, in a first phase, the magnetic properties of the traffic-related sources of particulate matter (tire, brake pads, exhaust pipes, etc.) are used to parameterize and train the model. Then, the magnetic parameters measured on accumulating surfaces exposed to a polluted air as urban plant leaves and passive filters are confronted to the model. The results are very encouraging. The algorithm predicts the dominant traffic-related sources for different kinds of accumulative surfaces. The model predictions are generally consistent according to the sampling locations. Its resolution seems adequate since different dominant sources could be identified within one street. We demonstrate the possibility to trace trafficderived pollutants from sources to sinks based only on magnetic properties, and to eventually quantify their contributions in the total magnetic signal measured. Because magnetic mapping has a high-resolution efficiency, these results open the opportunity to complement conventional methods used to measure air quality and to improve the numerical models of pollutant dispersion.
引用
收藏
页数:10
相关论文
共 50 条
[31]   A Hybrid Approach to Traffic Incident Management: Machine Learning-Based Prediction and Patrol Optimization [J].
Sait Turkan, Yusuf ;
Ulu, Mesut .
IEEE Access, 2025, 13 :43455-43472
[32]   A WPT/NFC-Based Sensing Approach for Beverage Freshness Detection Using Supervised Machine Learning [J].
Rodriguez, Daniel ;
Saed, Mohammad A. ;
Li, Changzhi .
IEEE SENSORS JOURNAL, 2021, 21 (01) :733-742
[33]   SmiLe Net: A Supervised Graph Embedding-based Machine Learning Approach for NextG Vulnerability Detection [J].
Peng, Yifeng ;
Yang, Jingda ;
Arya, Sudhanshu ;
Wang, Ying .
MILCOM 2023 - 2023 IEEE MILITARY COMMUNICATIONS CONFERENCE, 2023,
[34]   High-Accuracy Wireless Traffic Prediction: A GP-Based Machine Learning Approach [J].
Xu, Yue ;
Xu, Wenjun ;
Yin, Feng ;
Lin, Jiaru ;
Cui, Shuguang .
GLOBECOM 2017 - 2017 IEEE GLOBAL COMMUNICATIONS CONFERENCE, 2017,
[35]   Machine Learning-Based Approach to Predict Energy Consumption of Renewable and Nonrenewable Power Sources [J].
Khan, Prince Waqas ;
Byun, Yung-Cheol ;
Lee, Sang-Joon ;
Kang, Dong-Ho ;
Kang, Jin-Young ;
Park, Hae-Su .
ENERGIES, 2020, 13 (18)
[36]   Application of Machine Learning Algorithms for Sustainable Business Management Based on Macro-Economic Data: Supervised Learning Techniques Approach [J].
Khan, Muhammad Anees ;
Abbas, Kumail ;
Su'ud, Mazliham Mohd ;
Salameh, Anas A. ;
Alam, Muhammad Mansoor ;
Aman, Nida ;
Mehreen, Mehreen ;
Jan, Amin ;
Hashim, Nik Alif Amri Bin Nik ;
Aziz, Roslizawati Che .
SUSTAINABILITY, 2022, 14 (16)
[37]   An Effective Ensemble Machine Learning Approach to Classify Breast Cancer Based on Feature Selection and Lesion Segmentation Using Preprocessed Mammograms [J].
Rafid, A. K. M. Rakibul Haque ;
Azam, Sami ;
Montaha, Sidratul ;
Karim, Asif ;
Fahim, Kayes Uddin ;
Hasan, Md. Zahid .
BIOLOGY-BASEL, 2022, 11 (11)
[38]   Machine learning prediction for magnetic properties of Sm-Fe-N based alloys produced by melt spinning [J].
Hosokawa, Hiroyuki ;
Calvert, Emma Lucy ;
Shimojima, Koji .
JOURNAL OF MAGNETISM AND MAGNETIC MATERIALS, 2021, 526
[39]   Congestion Control Prediction Model for 5G Environment Based on Supervised and Unsupervised Machine Learning Approach [J].
Kamel, Mohammed B. M. ;
Najm, Ihab Ahmed ;
Hamoud, Alaa Khalaf .
IEEE ACCESS, 2024, 12 :91127-91139
[40]   Driver Stress State Evaluation by Means of Thermal Imaging: A Supervised Machine Learning Approach Based on ECG Signal [J].
Cardone, Daniela ;
Perpetuini, David ;
Filippini, Chiara ;
Spadolini, Edoardo ;
Mancini, Lorenza ;
Chiarelli, Antonio Maria ;
Merla, Arcangelo .
APPLIED SCIENCES-BASEL, 2020, 10 (16)