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Source Apportionment of PM10 Particles in the Urban Atmosphere Using PMF and LPO-XGBoost.

Ying Liu, Bowen JinAndrés Alastuey,Xavier Querol

Environmental research(2025)

Univ. Grenoble Alpes | INERIS | ANDRA DISTECEES Observatoire Pérenne de l'Environnement | Aix Marseille Univ | Department of Applied Physics | Associate Unit CSIC-UHU "Atmospheric Pollution" | Swiss Federal Laboratories for Materials Science and Technology: Dübendorf | ENRACT Lab | Institute of Environmental Assessment and Water Research (IDAEA-CSIC)

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Abstract
Atmospheric particulate matter (PM), as a leading part of air pollution, affects health in many ways. Thus, identifying and quantifying the contribution of atmospheric particulate matter sources of PM is vital for developing effective air quality management strategies. Positive Matrix Factorization (PMF) is one of the most common methods for source apportionment. However, PMF has some limitations, particularly its assumption that each source contributes linearly. In reality, some sources may exhibit nonlinear behaviors, which can compromise the accuracy of source apportionment. This study introduces a Lung Performance Optimization-based XGBoost (LPO-XGBoost) model, which leverages adaptive optimization principles inspired by lung function to enhance classic PM source apportionment. We demonstrate the potential for efficient, real-time application of the LPO-XGBoost model across 21 monitoring sites in 6 European countries. Trained and validated on extensive environmental datasets, the model is capable of predicting major pollution sources, including road traffic, biomass burning, crustal, industrial, nitrate-rich particles, sulfate-rich particles, heavy fuel oil, and sea salt. It outperforms other machine learning models with an overall predictive coefficient of determination (r2 = 0.88). Notably, the model performs exceptionally well in predicting sources such as sea salt (r2 = 0.97) and biomass burning (r2 = 0.89), but shows lower accuracy for the sulfate-rich particles source (r2 = 0.75). Comparative analyses with models including Random Forest (RF), Support Vector Machine (SVM), and their LPO-enhanced variants confirm that LPO-XGBoost provides the most reliable performance in estimating pollution source contributions, offering scalability and robustness ideal for high-time-resolution observational data. This model has significant potential to support targeted air quality management strategies. Future research should focus on expanding key species measurements at monitoring sites, ensuring consistent temporal coverage, and optimizing the model for improved mixed-source predictions to strengthen its applicability in comprehensive urban air quality assessments.
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要点】:研究提出了一种基于肺功能优化原理的LPO-XGBoost模型,用于提高城市大气PM10颗粒物来源解析的准确性,实验结果表明该模型在预测多种污染源方面性能优越。

方法】:研究利用自适应优化原理,模仿肺功能机制,对传统的PMF模型进行改进,以处理非线性源贡献问题。

实验】:LPO-XGBoost模型在六个欧洲国家的21个监测点进行训练和验证,使用的数据集未明确指出名称,模型在预测主要污染源方面表现出色,整体预测决定系数(r2)达到0.88,对海盐和生物质燃烧源的预测尤为准确,r2分别为0.97和0.89,而对硫酸盐富集颗粒物的预测准确度较低,r2为0.75。通过与随机森林(RF)、支持向量机(SVM)及其LPO增强版模型的比较分析,LPO-XGBoost展现了最佳的预测性能。