4.6 Article

Investigating the nonlinear and non-stationary relationship between PM2.5 and air pollutants by wavelet signal analysis in central Taiwan

Journal

ENVIRONMENTAL GEOCHEMISTRY AND HEALTH
Volume 45, Issue 7, Pages 5195-5211

Publisher

SPRINGER
DOI: 10.1007/s10653-023-01560-5

Keywords

Air pollution; PM2 5; Wavelet analysis; Wavelet coherence; Lag time

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In recent years, PM2.5 has become a critical factor in causing severe air pollution. This study used data from central Taiwan and applied data analysis methods to investigate the correlation between PM2.5 and other air pollutants. The results showed that PM2.5 has the most consistent correlation with other pollutants, with carbon monoxide being the primary source pollutant. The study also found that the correlation between PM2.5 and ozone is lower, and the correlation between PM2.5 and other pollutants varies at different locations.
In recent years, PM2.5 has become a critical factor as an environmental indicator, causing severe air pollution that has negatively impacted nature and human health. This study used hourly data gathered in central Taiwan from 2015 to 2019 and applied spatiotemporal data analysis and wavelet analysis methods to investigate the cross-correlation between PM2.5 and other air pollutants. Furthermore, it explored the correlation differences between adjacent stations after excluding major environmental factors such as climate and terrain. Wavelet coherence shows that PM2.5 and air pollutants mostly have a significant correlation at the half-day and one-day frequencies, while the differences between PM2.5 and PM10 are only particle size; hence, not only is the correlation the most consistent among all air pollutants but also the lag time is the most negligible. Carbon monoxide (CO) is the primary source pollutant of PM2.5 as it is also significantly correlated with PM2.5 at most timescales. Sulfur dioxide (SO2) and nitrogen oxide (NOx) are related to the generation of secondary aerosols, which are important components of PM2.5; therefore, the consistency of significant correlations improves as the timescale increases and the lag time becomes amplified. The pollution source mechanism of ozone (O-3) and PM2.5 is not identical, so the correlation is lower than for other air pollutants; the lag time is also obviously influenced by the season changes that have significant fluctuations. At stations near the ocean such as Xianxi station and Shulu station, PM2.5 and PM10 have a higher correlation in the 24-h frequency, while the SO2 and PM2.5 at Sanyi station and Fengyuan station, which are close to industrial areas, have significant correlations in the 24-h frequency. This study hopes to help better understand the impact mechanisms behind different pollutants, and thus construct a better reference for establishing a complete air pollution prediction model in the future.

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