| Literature DB >> 35444993 |
Xinshuo Zhang1, Mengli Zhang2, Yong Cui1, Ying He1,3.
Abstract
Ground-received solar radiation is affected by several meteorological and air pollution factors. Previous studies have mainly focused on the effects of meteorological factors on solar radiation, but research on the influence of air pollutants is limited. Therefore, this study aimed to analyse the effects of air pollution characteristics on solar radiation. Meteorological data, air quality index (AQI) data, and data on the concentrations of six air pollutants (O3, CO, SO2, PM10, PM2.5, and NO2) in nine cities in China were considered for analysis. A city model (model-C) based on the data of each city and a unified model (model-U) based on national data were established, and the key pollutants under these conditions were identified. Correlation analysis was performed between each pollutant and the daily global solar radiation. The correlation between O3 and daily global solar radiation was the highest (r = 0.575), while that between SO2 and daily global solar radiation was the lowest. Further, AQI and solar radiation were negatively correlated, while some pollution components (e.g., O3) were positively correlated with the daily global solar radiation. Different key pollutants affected the solar radiation in each city. In Shenyang and Guangzhou, the driving effect of particles on the daily global solar radiation was stronger than that of pollutants. However, there were no key pollutants that affect solar radiation in Shanghai. Furthermore, the prediction performance of model-U was not as good as that of model-C. The model-U showed a good performance for Urumqi (R 2 = 0.803), while the difference between the two models was not particularly significant in other areas. This study provides significant insights to improve the accuracy of regional solar radiation prediction and fill the gap regarding the absence of long-term solar radiation monitoring data in some areas.Entities:
Keywords: air pollutants; air quality index; global solar radiation; meteorological factors; prediction models
Mesh:
Substances:
Year: 2022 PMID: 35444993 PMCID: PMC9015163 DOI: 10.3389/fpubh.2022.860107
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Figure 1The geographic location of the study area.
Figure 2Structure and technical framework of the study.
Figure 3Daily global solar radiation and pollution parameters from 2015 to 2020 in nine cities (Wuhan lacks 2018 data).
Figure 4Correlation coefficients between air pollution parameters and daily global solar radiation in the nine cities from 2015 to 2020.
Elements of the city models and ranking of their contributions.
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| 1 |
| Sunshine rate |
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| Sunshine rate | Sunshine rate | Sunshine rate |
| Sunshine rate |
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| 2 | Sunshine rate |
| Sunshine rate | Sunshine rate |
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| Sunshine rate |
| Sunshine rate |
| 3 | NO2 | O3 |
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| Δ |
| ln(Δ |
| ln(Δ |
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| 4 |
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| ln(Δ |
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| ln(Δ |
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| 5 | SO2 |
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| NO2 | O3 | CO |
| PM10 |
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| 6 | PM10 | SO2 | PM2.5 |
| PM2.5 | O3 | Δ | O3 | ||
| 7 | AQI | NO2 | PM10 | CO | O3 | NO2 | NO2 | |||
| 8 | ln(Δ | SO2 | SO2 | |||||||
| 9 |
| PM10 | ||||||||
| 10 | AQI | |||||||||
Figure 5Scatter plot of predicted values and measured values of model-C.
Figure 6Scatter plot of predicted values and measured values of model-U.
Figure 7Comparison of R2 and LCCC values between the two models.