CNRDv1.0: the China natural runoff dataset version 1.0(1961-2018)

CNRDv1.0: the China natural runoff dataset version 1.0(1961-2018)


Water is one of the most direct mediums through which people perceive the effects of climate change. The flow regimes that people rely on are influenced by large-scale climate change, and identifying changes to these regimes and determining their causes requires reliable, spatiotemporally continuous runoff records. China is climate vulnerable due to its remarkable topographic gradients, monsoon climate, and rapid economic development. Climate change has increased the urgency of understanding, regulating, and forecasting China’s freshwater flows. Yet, available global and regional runoff data in China are produced from sparse, poor-quality gauged station data that have been acquired over different time scales. Our research presents a new long-term, high-quality natural runoff dataset, named the China Natural Runoff Dataset version 1.0 (CNRD v1.0) for driving hydrological and climate studies over China. It will also contribute to the global runoff database. CNRD v1.0 provides daily, monthly, and annual 0.25-degree natural runoff estimates for the period of 1 January 1961 to 31 December 2018 over China.

CNRD v1.0 is generated using the Variable Infiltration Capacity macroscale hydrological model, which was used to fill in gaps or construct time series of comparable lengths. To control the model performance and thus our dataset quality, the model’s sensitive parameters are automatically calibrated using an adaptive surrogate modeling‐based optimization algorithm based on monthly natural or near-natural streamflow data from 200 hydrological gauge stations—more than in previous studies—with low fractions of missing data. Another important quality control adopted for this dataset was the use of a multiscale parameter regionalization technique to estimate model parameters for ungauged basins.

Overall, the results show well-calibrated parameters for most gauged catchments, and the skill scores, the Nash–Sutcliffe model efficiency coefficient (NSE) present high values for all catchments, with an average of 0.83 and 0.80 for calibration and validation modes, respectively. The multiscale parameter regionalization technique offered the best regionalization solution (median NSE = 0.76 for the calibration period and 0.72 for the validation period. The results overall show well-calibrated and regionalized parameters for the hydrological model thus for the long-term runoff reconstruction. By the cell-to-cell comparisons between the CNRD v1.0 with the two global runoff datasets, ISIMIP and GRUN, we found that our datasets show more continuous transitions in runoff dis¬tribution compared to ISIMIP and GRUN across China, and perform well in representing the geographic distribution of China’s water resources across complex terrain and climate regions.


File naming and required software

Filename: grided runoff data are stored in NetCDF files.
Global attributes:
Variables = Total runoff (qtot)
Data Types = Histrorical reconstruction
Date format = NetCDF4
Temporal Range = 1961-01-01 to 2018-12-31
Spatial extent = 18.6250° N ~53.6250° N, 73.375° E ~135.1250° E
Units = mm
Missing value = -9999
_FillValue = -9999


Data Citations Data citation guideline What's data citation?
Cite as:

Miao, C., Gou, J. (2022). CNRDv1.0: the China natural runoff dataset version 1.0(1961-2018). A Big Earth Data Platform for Three Poles, DOI: 10.11888/Atmos.tpdc.272864. CSTR: 18406.11.Atmos.tpdc.272864. (Download the reference: RIS | Bibtex )

Related Literatures:

1. Gou, J.J., Miao, C.Y., Duan, Q.Y., Tang, Q.H., Di, Z.H., Liao, W.H., Wu, J.W., & Zhou, R. (2020). Sensitivity analysis-based automatic parameter calibration of the VIC model for streamflow simulations over China. Water Resources Research, 56, 1-19.( View Details | Bibtex)

2. Gou, J.J., Miao, C.Y., Samaniego, L., Xiao, M., Wu, J.W., & Guo, X.Y. (2021). CNRD v1.0: a high-quality natural runoff dataset for hydrological and climate studies in China. Bulletin of the American Meteorological Society, 102(5), E929-E947.( View Details | Bibtex)

3. Miao, C.Y., Gou, J.J., Fu, B.J., Tang, Q.H., Duan, Q.Y., Chen, Z.S., Lei, H.M., Chen, J., Guo, J.L., Borthwick, A.G.L., Ding, W.F., Duan, X.W., Li, Y.G., Kong, D.X., Guo, X.Y., & Wu, J.W. (2022). High-quality reconstruction of China’s natural streamflow. Science Bulletin, 67(5), 547-556.( View Details | Bibtex)

Using this data, the data citation is required to be referenced and the related literatures are suggested to be cited.


Support Program

National Natural Science Foundation of China (No:41622101)

National Natural Science Foundation of China (No:41877155)

Copyright & License

To respect the intellectual property rights, protect the rights of data authors, expand services of the data center, and evaluate the application potential of data, data users should clearly indicate the source of the data and the author of the data in the research results generated by using the data (including published papers, articles, data products, and unpublished research reports, data products and other results). For re-posting (second or multiple releases) data, the author must also indicate the source of the original data.


License: This work is licensed under an Attribution 4.0 International (CC BY 4.0)


Related Resources
Comments

Current page automatically show English comments Show comments in all languages

Download Follow
Keywords
Geographic coverage
East: 140.00 West: 70.00
South: 17.00 North: 55.00
Details
  • Temporal resolution: Daily
  • Spatial resolution: 0.01º - 0.05º
  • File size: 201 MB
  • Views: 7251
  • Downloads: 1299
  • Access: Open Access
  • Temporal coverage: 1961-01-01 To 2018-12-31
  • Updated time: 2022-10-21
Contacts
: MIAO Chiyuan   GOU Jiaojiao  

Distributor: A Big Earth Data Platform for Three Poles

Email: poles@itpcas.ac.cn

Export metadata