微粒
气溶胶
粒子(生态学)
环境科学
分摊
管道(软件)
指纹(计算)
金属加工
环境化学
工艺工程
化学
材料科学
计算机科学
人工智能
冶金
工程类
气象学
地质学
物理
程序设计语言
有机化学
法学
政治学
海洋学
作者
Garret D. Bland,Matthew Battifarano,Qian Liu,Xuezhi Yang,Dawei Lü,Guibin Jiang,Gregory V. Lowry
出处
期刊:Environmental Science and Technology Letters
[American Chemical Society]
日期:2022-12-09
卷期号:10 (11): 1023-1029
被引量:18
标识
DOI:10.1021/acs.estlett.2c00835
摘要
Fine particulate matter (PM2.5) is a serious global health concern requiring mitigation, but source apportionment is difficult due to the limited variability in bulk aerosol composition between sources. The unique metal fingerprints of individual particles in PM2.5 sources can now be measured and may be used to identify sources. This study is the first to develop a robust machine learning pipeline to apportion PM2.5 sources based on the metal fingerprints of individual particles in air samples collected in Beijing, China. The metal fingerprints of particles in five primary PM2.5 source emitters were measured by single-particle inductively coupled plasma time-of-flight mass spectrometry (spICP-TOF-MS). A novel machine learning pipeline was used to identify unique fingerprints of individual particles from the five sources. The model successfully predicted 63% of the test data set (significantly higher than random guessing at 20%) and had 73% accuracy on a physically mixed sample. This strategy identified metal-containing particles unique to specific PM2.5 sources that confirms their presence and can potentially link PM2.5 toxicity to the metal content of specific particle types in anthropogenic PM2.5 sources.
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