A study of the temporal dynamics of ambient particulate matter using stochastic and chaotic techniques

Yu, H-L; Lin, Y-C; Sivakumar, B; Kuo, Y-M

HERO ID

1579398

Reference Type

Journal Article

Year

2013

HERO ID 1579398
In Press No
Year 2013
Title A study of the temporal dynamics of ambient particulate matter using stochastic and chaotic techniques
Authors Yu, H-L; Lin, Y-C; Sivakumar, B; Kuo, Y-M
Journal Atmospheric Environment
Volume 69
Page Numbers 37-45
Abstract Temporal dynamics of particulate matter (PM) concentration are affected by a variety of complex physical and chemical interactions among ambient pollutants and various exogenous factors (e.g. meteorological variables). Consequently, the dynamics of PM concentration can be considered either as a stochastic process or as a deterministic process. Many studies have applied stochastic and chaotic approaches independently to study the dynamics of PM concentration. However, none of them has compared these two complementary approaches for verification and possible confirmation of the outcomes. The present study makes an attempt to address this issue, through application of the dynamic factor analysis (DFA) (a stochastic method) and the correlation dimension (CD) method (a chaotic method) to study the temporal dynamics of ambient pollutants. More specifically, these two methods are employed to identify the number of variables dominantly governing the dynamics of PM concentration, with analysis of PM10, PM2.5, and ten other variables observed at the Hsing-Chuang station in Taipei (Taiwan). The results from the two methods are found to be consistent, with the DFA method suggesting eight common trends among the observed time series and the CD method suggesting eight variables dominantly governing the dynamics of both PM10 and PM2.5. This study provides an excellent example for the utility of both stochastic and chaotic approaches in modeling atmospheric and environmental systems, as these approaches not only shed light in their own ways but also complement each other in capturing the salient characteristics of such systems, especially from the perspective of simplified modeling. (C) 2012 Elsevier Ltd. All rights reserved.
Doi 10.1016/j.atmosenv.2012.10.067
Wosid WOS:000315932800004
Is Certified Translation No
Dupe Override No
Comments Source: Web of Science WOS:000315932800004
Is Public Yes
Keyword Particulate matter; Temporal dynamics; System identification; Dynamic factor analysis; Correlation dimension