Insights Into the Morphology of the East Asia PM Annual Cycle Provided by Machine Learning

The abundance of airborne particulate matter with an aerodynamic equivalent diameter of 2.5 µm or less (PM 2.5 ) is a significant environmental and health issue. Many tools have been used to examine the relationship between PM 2.5 abundance and meteorological variables, but some of the relationships...

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Main Authors: Daji Wu, Gebreab K Zewdie, Xun Liu, Melanie Anne Kneen, David John Lary
Format: Article
Language:English
Published: SAGE Publishing 2017-03-01
Series:Environmental Health Insights
Online Access:https://doi.org/10.1177/1178630217699611
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spelling doaj-81c8654253d04200a0efd6e82fe2ceb12020-11-25T03:04:14ZengSAGE PublishingEnvironmental Health Insights1178-63022017-03-011110.1177/117863021769961110.1177_1178630217699611Insights Into the Morphology of the East Asia PM Annual Cycle Provided by Machine LearningDaji Wu0Gebreab K Zewdie1Xun Liu2Melanie Anne Kneen3David John Lary4William B. Hanson Center for Space Sciences, The University of Texas at Dallas, Richardson, TX, USAWilliam B. Hanson Center for Space Sciences, The University of Texas at Dallas, Richardson, TX, USAWilliam B. Hanson Center for Space Sciences, The University of Texas at Dallas, Richardson, TX, USADepartment of Environmental Science, Collin College, Plano, TX, USAWilliam B. Hanson Center for Space Sciences, The University of Texas at Dallas, Richardson, TX, USAThe abundance of airborne particulate matter with an aerodynamic equivalent diameter of 2.5 µm or less (PM 2.5 ) is a significant environmental and health issue. Many tools have been used to examine the relationship between PM 2.5 abundance and meteorological variables, but some of the relationships are nonlinear, non-Gaussian, and even unknown. Machine learning provides a broad range of practical algorithms to help examine this issue. In this study, we use machine learning to classify the morphology of PM 2.5 seasonal cycles in East Asia. Machine learning is able to objectively classify the seasonal cycles and, without a priori assumption, is able to clearly distinguish between urban and rural areas. We show an example of this in the Sichuan Basin of China. Furthermore, machine learning is also able to provide physical insights by identifying the key factors associated with each distinct shape of the seasonal cycle, such as highlighting the key role played by the topography and the built environment.https://doi.org/10.1177/1178630217699611
collection DOAJ
language English
format Article
sources DOAJ
author Daji Wu
Gebreab K Zewdie
Xun Liu
Melanie Anne Kneen
David John Lary
spellingShingle Daji Wu
Gebreab K Zewdie
Xun Liu
Melanie Anne Kneen
David John Lary
Insights Into the Morphology of the East Asia PM Annual Cycle Provided by Machine Learning
Environmental Health Insights
author_facet Daji Wu
Gebreab K Zewdie
Xun Liu
Melanie Anne Kneen
David John Lary
author_sort Daji Wu
title Insights Into the Morphology of the East Asia PM Annual Cycle Provided by Machine Learning
title_short Insights Into the Morphology of the East Asia PM Annual Cycle Provided by Machine Learning
title_full Insights Into the Morphology of the East Asia PM Annual Cycle Provided by Machine Learning
title_fullStr Insights Into the Morphology of the East Asia PM Annual Cycle Provided by Machine Learning
title_full_unstemmed Insights Into the Morphology of the East Asia PM Annual Cycle Provided by Machine Learning
title_sort insights into the morphology of the east asia pm annual cycle provided by machine learning
publisher SAGE Publishing
series Environmental Health Insights
issn 1178-6302
publishDate 2017-03-01
description The abundance of airborne particulate matter with an aerodynamic equivalent diameter of 2.5 µm or less (PM 2.5 ) is a significant environmental and health issue. Many tools have been used to examine the relationship between PM 2.5 abundance and meteorological variables, but some of the relationships are nonlinear, non-Gaussian, and even unknown. Machine learning provides a broad range of practical algorithms to help examine this issue. In this study, we use machine learning to classify the morphology of PM 2.5 seasonal cycles in East Asia. Machine learning is able to objectively classify the seasonal cycles and, without a priori assumption, is able to clearly distinguish between urban and rural areas. We show an example of this in the Sichuan Basin of China. Furthermore, machine learning is also able to provide physical insights by identifying the key factors associated with each distinct shape of the seasonal cycle, such as highlighting the key role played by the topography and the built environment.
url https://doi.org/10.1177/1178630217699611
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