Improving Environmental Sustainability by Characterizing Spatial and Temporal Concentrations of Ozone
Statistical methods have been widely used to predict pollutant concentrations. However, few efforts have been made to examine spatial and temporal characteristics of ozone in Korea. Ozone monitoring stations are often geographically grouped, and the ozone concentrations are separately predicted for...
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doaj-72105c9275b24da2b4d4ea96075365f32020-11-24T21:28:54ZengMDPI AGSustainability2071-10502018-12-011012455110.3390/su10124551su10124551Improving Environmental Sustainability by Characterizing Spatial and Temporal Concentrations of OzoneKyu Jong Lee0Hyungu Kahng1Seoung Bum Kim2Sun Kyoung Park3School of Industrial Management Engineering, Korea University, Seoul 02841, KoreaSchool of Industrial Management Engineering, Korea University, Seoul 02841, KoreaSchool of Industrial Management Engineering, Korea University, Seoul 02841, KoreaSchool of ICT-Integrated studies, Pyeongtaek University, Pyeongtaek 17869, KoreaStatistical methods have been widely used to predict pollutant concentrations. However, few efforts have been made to examine spatial and temporal characteristics of ozone in Korea. Ozone monitoring stations are often geographically grouped, and the ozone concentrations are separately predicted for each group. Although geographic information is useful in grouping the monitoring stations, the accuracy of prediction can be improved if the temporal patterns of pollutant concentrations is incorporated into the grouping process. The goal of this research is to cluster the monitoring stations according to the temporal patterns of pollutant concentrations using a k-means clustering algorithm. In addition, this study characterizes the meteorology and various pollutant concentrations linked to high ozone concentrations (>0.08 ppm, 1-h average concentration) based on a decision tree algorithm. The data used include hourly meteorology (temperature, relative humidity, solar insolation, and wind speed) and pollutant concentrations (O<sub>3</sub>, CO, NO<sub>x</sub>, SO<sub>2</sub>, and PM<sub>10</sub>) monitored at 25 stations in Seoul, Korea between 2005 and 2010. Results demonstrated that 25 stations were grouped into four clusters, and PM<sub>10</sub>, temperature, and relative humidity were the most important factors that characterize high ozone concentrations. This method can be extended to the characterization of other pollutant concentrations in other regions.https://www.mdpi.com/2071-1050/10/12/4551ozonek-means clusteringdecision tree algorithmPM10temperaturerelative humidity |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kyu Jong Lee Hyungu Kahng Seoung Bum Kim Sun Kyoung Park |
spellingShingle |
Kyu Jong Lee Hyungu Kahng Seoung Bum Kim Sun Kyoung Park Improving Environmental Sustainability by Characterizing Spatial and Temporal Concentrations of Ozone Sustainability ozone k-means clustering decision tree algorithm PM10 temperature relative humidity |
author_facet |
Kyu Jong Lee Hyungu Kahng Seoung Bum Kim Sun Kyoung Park |
author_sort |
Kyu Jong Lee |
title |
Improving Environmental Sustainability by Characterizing Spatial and Temporal Concentrations of Ozone |
title_short |
Improving Environmental Sustainability by Characterizing Spatial and Temporal Concentrations of Ozone |
title_full |
Improving Environmental Sustainability by Characterizing Spatial and Temporal Concentrations of Ozone |
title_fullStr |
Improving Environmental Sustainability by Characterizing Spatial and Temporal Concentrations of Ozone |
title_full_unstemmed |
Improving Environmental Sustainability by Characterizing Spatial and Temporal Concentrations of Ozone |
title_sort |
improving environmental sustainability by characterizing spatial and temporal concentrations of ozone |
publisher |
MDPI AG |
series |
Sustainability |
issn |
2071-1050 |
publishDate |
2018-12-01 |
description |
Statistical methods have been widely used to predict pollutant concentrations. However, few efforts have been made to examine spatial and temporal characteristics of ozone in Korea. Ozone monitoring stations are often geographically grouped, and the ozone concentrations are separately predicted for each group. Although geographic information is useful in grouping the monitoring stations, the accuracy of prediction can be improved if the temporal patterns of pollutant concentrations is incorporated into the grouping process. The goal of this research is to cluster the monitoring stations according to the temporal patterns of pollutant concentrations using a k-means clustering algorithm. In addition, this study characterizes the meteorology and various pollutant concentrations linked to high ozone concentrations (>0.08 ppm, 1-h average concentration) based on a decision tree algorithm. The data used include hourly meteorology (temperature, relative humidity, solar insolation, and wind speed) and pollutant concentrations (O<sub>3</sub>, CO, NO<sub>x</sub>, SO<sub>2</sub>, and PM<sub>10</sub>) monitored at 25 stations in Seoul, Korea between 2005 and 2010. Results demonstrated that 25 stations were grouped into four clusters, and PM<sub>10</sub>, temperature, and relative humidity were the most important factors that characterize high ozone concentrations. This method can be extended to the characterization of other pollutant concentrations in other regions. |
topic |
ozone k-means clustering decision tree algorithm PM10 temperature relative humidity |
url |
https://www.mdpi.com/2071-1050/10/12/4551 |
work_keys_str_mv |
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