Published September 15, 2023 | Version GEOTIFF
Dataset Open

Gap-free 1-km PM2.5 dataset in China (2000-present)

Authors/Creators

  • 1. Wuhan University of Technology

Description

This is the monthly PM2.5 estimates across China from 2000 to 2022. If you want daily dataset, please go to 10.5281/zenodo.7229348. More datasets can be found on the right navigation panel of 10.5281/zenodo.4569557

We also estimate other atmospheric data:

For full-coverage, 1-km, AOD data in China, please go to harvard dataverse. This dataset was imputed based on MODIS MAIAC 1-km AOD retrievals.

We have estimated full-coverage, daily 1-km PM2.5 data from 2000 to 2020 in China using a random forest-based hindcast modeling method. Our modeling method focused on improving pre-2013 PM2.5 estimates because for those years no available PM2.5 measurements can be directly used for constructing the model and evaluating the model performance. In our proposed method, observed predictor information before 2013 was incoporated into the modeling for the first time. Multiple sources were used as inputs, including MAIAC AOD, meteorological data from CMA, reanalysis data from ERA-5, and other land-related data. The monthly average data during 2000-2022 are released here GEOTIFF format (if you want CSV files, please go to 10.5281/zenodo.8084388) and free for non-commercial use. If you want use our dataset, please cite the following publication. 

The estimates in 2021-2022 are separately predicted using the same modeling method developed in the publication below and samples in the corresponding predictive year (sample-based 10-fold cross validation R2 [RMSE] values are 0.91 [8.84 ug/m3] for 2021 and 0.93 [7.42 ug/m3] for 2022, respectively. 

-He, Q., Ye, T., Wang, W., Luo, M., Song, Y., & Zhang, M. (2023). Spatiotemporally continuous estimates of daily 1-km PM2. 5 concentrations and their long-term exposure in China from 2000 to 2020. Journal of Environmental Management342, 118145.[url]

-He, Q., Wang, W., Song, Y., Zhang, M., & Huang, B. (2023). Spatiotemporal high-resolution imputation modeling of aerosol optical depth for investigating its full-coverage variation in China from 2003 to 2020. Atmospheric Research281, 106481.[url]

 

If you want other atmospheric data, e.g., CO2 dataset, please go to 10.5281/zenodo.10022904.

Files

Files (8.7 GB)

Name Size Download all
md5:88f67001278686c574458ac386f3671f
377.5 MB Download
md5:abdf8cf47ef0b18673e2c276ccf1b5d7
378.1 MB Download
md5:cda28ec04fdc9c9769a5248bb0317417
378.4 MB Download
md5:f58d961ecadc1c7e8dd61b371302ee24
379.4 MB Download
md5:a1a521af8c9d9f7db1239c336a0bcbb4
379.6 MB Download
md5:c8b6d8a29e6d509fb097f92b0c25666f
379.6 MB Download
md5:a7abbdf39786c4c4437f9e114d22525e
379.3 MB Download
md5:4595146f49ea5056c31f53e692394ee8
379.0 MB Download
md5:ec1280441d0156574ad1148e30b95f1f
379.0 MB Download
md5:d2faae2c588e650b8c625b26f4250067
378.8 MB Download
md5:cb74dd2dd6926ca875470cd3fa558ba2
379.3 MB Download
md5:c3d1e7ea24cf8a93a37484fff1945899
379.2 MB Download
md5:d7870c06d9ce5195555c522cae4070e5
379.1 MB Download
md5:d1d1601207f45ea17ef7330a44b0e7e4
381.3 MB Download
md5:c8309e66ef4d7119166dbb13c74b2057
381.1 MB Download
md5:be44675365561d661e824fad2c8e9ce6
381.0 MB Download
md5:77b4aefccae315954aba70ab0b9fc397
381.3 MB Download
md5:702115154ec63b842af638989bf6e75d
381.2 MB Download
md5:ff49c2af90213d71084ca3d98d3b9925
380.5 MB Download
md5:20494749b50c0203eb3c51ecab4f0427
380.3 MB Download
md5:609a6c907f3b316a2d2d24e94d35aad7
380.0 MB Download
md5:46e8b4b970633e44dc1f9e201777299d
377.7 MB Download
md5:4962c8ddb270e5f5e2b81d26df73f798
377.2 MB Download