ChinaHighNO₂: Daily Seamless 1 km Ground-Level NO₂ Dataset for China (2019–Present)
Description
ChinaHighNO2 is part of a series of long-term, seamless, high-resolution, and high-quality datasets of air pollutants for China (i.e., ChinaHighAirPollutants, CHAP). It is generated from big data sources (e.g., ground-based measurements, satellite remote sensing products, atmospheric reanalysis, and model simulations) using artificial intelligence, taking into account the spatiotemporal heterogeneity of air pollution.
Here is the big data-derived seamless (spatial coverage = 100%) daily, monthly, and yearly 1 km (i.e., D1K, M1K, and Y1K) ground-level NO2 dataset for China from 2019 to the present. This dataset exhibits high quality, with a cross-validation coefficient of determination (CV-R2) of 0.93, a root-mean-square error (RMSE) of 4.89 µg m-3, and a mean absolute error (MAE) of 3.48 µg m-3 on a daily basis.
If you use the ChinaHighNO2 dataset in your scientific research, please cite the following references (Wei et al., EST, 2022; Wei et al., ACP, 2023):
-
Wei, J., Liu, S., Li, Z., Liu, C., Qin, K., Liu, X., Pinker, R., Dickerson, R., Lin, J., Boersma, K., Sun, L., Li, R., Xue, W., Cui, Y., Zhang, C., and Wang, J. Ground-level NO2 surveillance from space across China for high resolution using interpretable spatiotemporally weighted artificial intelligence. Environmental Science & Technology, 2022, 56(14), 9988–9998. https://doi.org/10.1021/acs.est.2c03834
-
Wei, J., Li, Z., Wang, J., Li, C., Gupta, P., and Cribb, M. Ground-level gaseous pollutants (NO2, SO2, and CO) in China: daily seamless mapping and spatiotemporal variations. Atmospheric Chemistry and Physics, 2023, 23, 1511–1532. https://doi.org/10.5194/acp-23-1511-2023
Note that the ChinaHighNO2 dataset is also available for periods prior to 2019, but at a spatial resolution of 10 km:
all (including daily) data for the years 2008–2018 is accessible at: https://doi.org/10.5281/zenodo.4641542
More CHAP datasets for different air pollutants are available at: https://weijing-rs.github.io/product.html
Notes
Files
ATBD_ChinaHighNO2.pdf
Files
(15.1 GB)
| Name | Size | Download all |
|---|---|---|
|
md5:c0ba441218c646228a9b02df8f55ab24
|
2.3 MB | Preview Download |
|
md5:f58f3b6782f70926cca95704630f4c13
|
2.6 GB | Preview Download |
|
md5:2ff4058105b6b9dad704c5ed898b6b69
|
2.5 GB | Preview Download |
|
md5:8bdeffdc053f3f6e5af74dd44e5d92f9
|
2.4 GB | Preview Download |
|
md5:6eeccc89d5898bc174d6e7b8001ac482
|
2.4 GB | Preview Download |
|
md5:50b8fb4c6c74a033d61c2ecd2b39e26c
|
2.4 GB | Preview Download |
|
md5:64185de372e96accf4dc949b0ed02fe6
|
2.3 GB | Preview Download |
|
md5:63e41d663997f004f2773e7f26d3aa80
|
76.5 MB | Preview Download |
|
md5:7e553e9f80a53774b51c1b3df75df2d5
|
71.2 MB | Preview Download |
|
md5:d266576dc8d9b1d8e9f451669aa9c347
|
69.5 MB | Preview Download |
|
md5:f539516cb0e3c1d9051d67aee2c96d2a
|
66.8 MB | Preview Download |
|
md5:3f98458f7e5dab90c6233d4cb3b29958
|
67.7 MB | Preview Download |
|
md5:f05709ad77a6a0d68d0f96b26fdaf9bb
|
65.9 MB | Preview Download |
|
md5:2247b674ed069dc91006630572dff550
|
6.4 MB | Download |
|
md5:571ddadeb8f99f95d519cc34a57bfbc8
|
5.8 MB | Download |
|
md5:d898b2f118743dfd76868c49b48bab26
|
5.7 MB | Download |
|
md5:2a080205df546286cbbc3b43945dacba
|
5.5 MB | Download |
|
md5:defbda58e6836f2761044c22de8f05a4
|
5.5 MB | Download |
|
md5:93b083c672d0b20664b70ff2afaeb482
|
5.4 MB | Download |
|
md5:6b152c60b85a2236762f0339676e31a5
|
3.0 kB | Download |
|
md5:450d3e097235a26bca4015a1d26d306a
|
3.1 MB | Preview Download |
Additional details
Related works
- Is referenced by
- Dataset: 10.1021/acs.est.2c03834 (DOI)
Dates
- Available
-
2021-03-01
References
- Wei, J., Liu, S., Li, Z., Liu, C., Qin, K., Liu, X., Pinker, R., Dickerson, R., Lin, J., Boersma, K., Sun, L., Li, R., Xue, W., Cui, Y., Zhang, C., and Wang, J. Ground-level NO2 surveillance from space across China for high resolution using interpretable spatiotemporally weighted artificial intelligence. Environmental Science & Technology, 2022, 56(14), 9988–9998. https://doi.org/10.1021/acs.est.2c03834
- Wei, J., Li, Z., Wang, J., Li, C., Gupta, P., and Cribb, M. Ground-level gaseous pollutants (NO2, SO2, and CO) in China: daily seamless mapping and spatiotemporal variations. Atmospheric Chemistry and Physics, 2023, 23, 1511–1532. https://doi.org/10.5194/acp-23-1511-2023