Research on the Topological Properties of Air Quality Index Based on a Complex Network
To analyze the dynamic characteristics of air quality for enforcing effective measures to prevent and evade air pollution harm, air quality index (AQI) time series data was selected and transformed into a symbol sequence consisting of characters (H, M, L) through the coarse graining process; then ea...
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doaj-18f0c258a0184f9aa80d87c6bbb36edc2020-11-24T23:58:48ZengMDPI AGSustainability2071-10502018-04-01104107310.3390/su10041073su10041073Research on the Topological Properties of Air Quality Index Based on a Complex NetworkYongli Zhang0Sanggyun Na1School of Management Science and Engineering, Hebei GEO University, Shijiazhuang 050031, Hebei, ChinaCollege of Business Administration, Wonkwang University, 460 Iksandae-ro, Iksan 54538, Jeonbuk, KoreaTo analyze the dynamic characteristics of air quality for enforcing effective measures to prevent and evade air pollution harm, air quality index (AQI) time series data was selected and transformed into a symbol sequence consisting of characters (H, M, L) through the coarse graining process; then each 6-symbols series was treated as one vertex by time sequence to construct the AQI directed-weighted network; finally the centrality, clusterability, and ranking of the AQI network were analyzed. The results indicated that vertex strength and cumulative strength distribution, vertex strength and strength rank presented power law distributions, and the AQI network is a scale-free network. Only 17 vertices possessed a higher weighted clustering coefficient; meanwhile weighted clustering coefficient and vertex strength didn’t show a strong correlation. The AQI network did not have an obvious central tendency towards intermediaries in general, but 20.55% of vertices accounted for nearly 1/2 of the intermediaries, and the varieties still existed. The mean distance of 68.4932% of vertices was 6.120–9.973, the AQI network did not have obvious small-world phenomena, the conversion of AQI patterns presented the characteristics of periodicity and regularity, and 20.2055% of vertices had high proximity prestige. The vertices fell into six islands, the AQI pattern indicating heavy or serious air pollution lasting six days always lingered for a long time. The number of triads 2-012 was the largest, and the AQI network followed the transitivity model. The study has instructional significance in understanding time change regulation of air quality in Beijing, opening a new way for time series prediction research. Additionally, the factors causing the change of topological properties should be analyzed in the future research.http://www.mdpi.com/2071-1050/10/4/1073air quality indextime seriescomplex networktopological property |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yongli Zhang Sanggyun Na |
spellingShingle |
Yongli Zhang Sanggyun Na Research on the Topological Properties of Air Quality Index Based on a Complex Network Sustainability air quality index time series complex network topological property |
author_facet |
Yongli Zhang Sanggyun Na |
author_sort |
Yongli Zhang |
title |
Research on the Topological Properties of Air Quality Index Based on a Complex Network |
title_short |
Research on the Topological Properties of Air Quality Index Based on a Complex Network |
title_full |
Research on the Topological Properties of Air Quality Index Based on a Complex Network |
title_fullStr |
Research on the Topological Properties of Air Quality Index Based on a Complex Network |
title_full_unstemmed |
Research on the Topological Properties of Air Quality Index Based on a Complex Network |
title_sort |
research on the topological properties of air quality index based on a complex network |
publisher |
MDPI AG |
series |
Sustainability |
issn |
2071-1050 |
publishDate |
2018-04-01 |
description |
To analyze the dynamic characteristics of air quality for enforcing effective measures to prevent and evade air pollution harm, air quality index (AQI) time series data was selected and transformed into a symbol sequence consisting of characters (H, M, L) through the coarse graining process; then each 6-symbols series was treated as one vertex by time sequence to construct the AQI directed-weighted network; finally the centrality, clusterability, and ranking of the AQI network were analyzed. The results indicated that vertex strength and cumulative strength distribution, vertex strength and strength rank presented power law distributions, and the AQI network is a scale-free network. Only 17 vertices possessed a higher weighted clustering coefficient; meanwhile weighted clustering coefficient and vertex strength didn’t show a strong correlation. The AQI network did not have an obvious central tendency towards intermediaries in general, but 20.55% of vertices accounted for nearly 1/2 of the intermediaries, and the varieties still existed. The mean distance of 68.4932% of vertices was 6.120–9.973, the AQI network did not have obvious small-world phenomena, the conversion of AQI patterns presented the characteristics of periodicity and regularity, and 20.2055% of vertices had high proximity prestige. The vertices fell into six islands, the AQI pattern indicating heavy or serious air pollution lasting six days always lingered for a long time. The number of triads 2-012 was the largest, and the AQI network followed the transitivity model. The study has instructional significance in understanding time change regulation of air quality in Beijing, opening a new way for time series prediction research. Additionally, the factors causing the change of topological properties should be analyzed in the future research. |
topic |
air quality index time series complex network topological property |
url |
http://www.mdpi.com/2071-1050/10/4/1073 |
work_keys_str_mv |
AT yonglizhang researchonthetopologicalpropertiesofairqualityindexbasedonacomplexnetwork AT sanggyunna researchonthetopologicalpropertiesofairqualityindexbasedonacomplexnetwork |
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1725449672418394112 |