GlobalHighPM₂.₅ (2017)
Authors/Creators
Description
Here is the first big data-derived seamless (spatial coverage = 100%) daily, monthly, and yearly 1 km (i.e., D1K, M1K, and Y1K) global ground-level PM2.5 dataset over land for the year 2017. This dataset exhibits high quality, with a cross-validation coefficient of determination (CV-R2) of 0.91 and a root-mean-square error (RMSE) of 9.20 µg m-3 on a daily basis.
If you use the GlobalHighPM2.5 dataset in your scientific research, please cite the following reference (Wei et al., NC, 2023):
-
Wei, J., Li, Z., Lyapustin, A., Wang, J., Dubovik, O., Schwartz, J., Sun, L., Li, C., Liu, S., and Zhu, T. First close insight into global daily gapless 1 km PM2.5 pollution, variability, and health impact. Nature Communications, 2023, 14, 8349. https://doi.org/10.1038/s41467-023-43862-3
Notes
Files
Wei_et_al-NC-2023.pdf
Files
(40.8 GB)
| Name | Size | Download all |
|---|---|---|
|
md5:241e72bd02ec028c003268d6048c2a7d
|
3.4 GB | Preview Download |
|
md5:68ff837d356be683da33efdd63454227
|
3.1 GB | Preview Download |
|
md5:ca6fecce6dbd1ee027da5e40ac1cbd7b
|
3.3 GB | Preview Download |
|
md5:28eaf46bd6a8ef0107191dcf92685e06
|
3.2 GB | Preview Download |
|
md5:e0dde193b9861c4d88997c25c1d8a6b3
|
3.3 GB | Preview Download |
|
md5:c21597fa26097301f5e9d44203f452d9
|
3.1 GB | Preview Download |
|
md5:3443359892f7e033c7a99cc1ed46a2ce
|
3.3 GB | Preview Download |
|
md5:926eb5247d4696246ac0e9033ee28108
|
3.3 GB | Preview Download |
|
md5:6576c1a87ae354297f1928ba05f98bd3
|
3.2 GB | Preview Download |
|
md5:27bbb695e4bd78c5141be6b9a08f1901
|
3.4 GB | Preview Download |
|
md5:11b8abc7eb0ba12b550b7789597876e6
|
3.4 GB | Preview Download |
|
md5:8ec5b82c0bf618ea49683e59ac9a400d
|
3.6 GB | Preview Download |
|
md5:77f163076c0a2ac7655709df814eff5c
|
94.7 MB | Download |
|
md5:f16727ec0a2d0180680d91010becaa62
|
93.3 MB | Download |
|
md5:7df497843dd6fd3d3e23eec0e02b572a
|
91.8 MB | Download |
|
md5:c06a58e93bdb636bfae64cdf367e50dd
|
90.7 MB | Download |
|
md5:53f33bd053fdfb2047d1589a97e1e731
|
89.2 MB | Download |
|
md5:be11c604199bcedea4b139f7555ac0cc
|
88.0 MB | Download |
|
md5:8c74a4115ba9d7674237a146ba8082e8
|
88.2 MB | Download |
|
md5:09c4a555364e5e1967d3ee2c69037aec
|
88.3 MB | Download |
|
md5:79363a75129ef4bc4a023abefc266970
|
90.4 MB | Download |
|
md5:065402a124002012c890e97be64ce908
|
92.5 MB | Download |
|
md5:7f232c80eb3b202fac4cd6eb8c3c1447
|
96.8 MB | Download |
|
md5:4fa8f539f0aad694cba676aa71c7931e
|
102.6 MB | Download |
|
md5:370f83bf7eccd2f06fff896fb4a49799
|
76.9 MB | Download |
|
md5:8353fc369673deaae7c59ab4b7384b0e
|
3.0 kB | Preview Download |
|
md5:df77274e5ad9e67889165b663ea9f621
|
33.9 MB | Preview Download |
Additional details
Dates
- Created
-
2022-04-11
References
- Wei, J., Li, Z., Lyapustin, A., Wang, J., Dubovik, O., Schwartz, J., Sun, L., Li, C., Liu, S., and Zhu, T. First close insight into global daily gapless 1 km PM2.5 pollution, variability, and health impact. Nature Communications, 2023, 14, 8349. https://doi.org/10.1038/s41467-023-43862-3