4.7 Article

Rainfall Estimates on a Gridded Network (REGEN) - a global land-based gridded dataset of daily precipitation from 1950 to 2016

期刊

HYDROLOGY AND EARTH SYSTEM SCIENCES
卷 24, 期 2, 页码 919-943

出版社

COPERNICUS GESELLSCHAFT MBH
DOI: 10.5194/hess-24-919-2020

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资金

  1. Australian Research Council [DP160103439, CE110001028, DE150100456]
  2. Spanish Ministry for Science and Innovation [RYC-2017-22964]
  3. Australian Research Council [DE150100456] Funding Source: Australian Research Council

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We present a new global land-based daily precipitation dataset from 1950 using an interpolated network of in situ data called Rainfall Estimates on a Gridded Network - REGEN. We merged multiple archives of in situ data including two of the largest archives, the Global Historical Climatology Network - Daily (GHCN-Daily) hosted by National Centres of Environmental Information (NCEI), USA, and one hosted by the Global Precipitation Climatology Centre (GPCC) operated by Deutscher Wetterdienst (DWD). This resulted in an unprecedented station density compared to existing datasets. The station time series were qualitycontrolled using strict criteria and flagged values were removed. Remaining values were interpolated to create areaaverage estimates of daily precipitation for global land areas on a 1 degrees x 1 degrees latitude-longitude resolution. Besides the daily precipitation amounts, fields of standard deviation, kriging error and number of stations are also provided. We also provide a quality mask based on these uncertainty measures. For those interested in a dataset with lower station network variability we also provide a related dataset based on a network of long-term stations which interpolates stations with a record length of at least 40 years. The REGEN datasets are expected to contribute to the advancement of hydrological science and practice by facilitating studies aiming to understand changes and variability in several aspects of daily precipitation distributions, extremes and measures of hydrological intensity. Here we document the development of the dataset and guidelines for best practices for users with regards to the two datasets.

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