Long-term meteorology-adjusted and unadjusted trends of PM2.5 using the AirGAM model over Delhi, 2007-2022

被引:1
|
作者
Chetna [1 ]
Dhaka, Surendra K. [2 ]
Walker, Sam-Erik [3 ]
Rawat, Vikas [1 ,4 ]
Singh, Narendra [4 ]
机构
[1] Univ Delhi, Dept Phys & Astrophys, Delhi, India
[2] Univ Delhi, Rajdhani Coll, Radio & Atmospher Phys Lab, Delhi, India
[3] Climate & Environm Res Inst NILU, Kjeller, Norway
[4] Aryabhatta Res Inst Observat Sci, Naini Tal, India
来源
ATMOSPHERIC ENVIRONMENT-X | 2024年 / 22卷
关键词
GAM; Particulate matter; Meteorology; Meteorology -adjusted trend; BOUNDARY-LAYER HEIGHT; REGRESSION-MODELS; NORTHERN INDIA; POLLUTION; QUALITY; CHINA; PM10; POLLUTANTS; NORMALIZATION; VISIBILITY;
D O I
10.1016/j.aeaoa.2024.100255
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This study investigates the impact of meteorological variations on the long-term patterns of PM2.5 in Delhi from 2007 to 2022 using the AirGAM 2022r1 model. Generalized Additive Modeling was employed to analyze meteorology-adjusted (removing the influence of inter-annual variations in meteorology) and unadjusted trends (trends without considering meteorology) while addressing auto-correlation. PM2.5 levels showed a modest decline of 14 mu g m(-3) unadjusted and 18 mu g m(-3) meteorology-adjusted over the study period. Meteorological conditions and time factors significantly influenced trends. Temperature, wind speed, wind direction, humidity, boundary layer height, medium-height cloud cover, precipitation, and time variables including day-of-week, day-of-year, and overall time, were used as GAM model inputs. The model accounted for 55% of PM2.5 variability (adjusted R-squared = 0.55). Day-of-week and medium-height cloud cover were non-significant, while other covariates were significant (p < 0.05), except for precipitation (p < 0.1). Wind speed (F-value: 98) showed the strongest correlation, followed by day-of-year (61), years (41.8), planetary boundary layer height (13.7), and temperature (13). Meteorological parameters exhibited significant long-term trends, except for temperature. Inter-annual meteorological variations minimally affected PM2.5 trends. The model had a Pearson correlation of 0.72 with observed PM2.5, underestimating episodic peaks due to long-range transport. Partial dependencies revealed a non-linear PM2.5 relationship with meteorology. Break-point detection identified two potential breakpoints in PM2.5 time series. The first, on October 1, 2010, saw a significant increase from 103.4 to 162.6 mu g m(-3), potentially due to long-range transport. Comparing meteorology-adjusted and unadjusted trends can aid policymakers in understanding pollution change causes.
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页数:14
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