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Deep-learning-based downscaling of precipitation in the middle reaches of the Yellow River using residual-based CNNs

  • He Fu
  • , Jianing Guo
  • , Chenguang Deng
  • , Heng Liu
  • , Jie Wu
  • , Zhengguo Shi
  • , Cailing Wang
  • , Xiaoning Xie
  • Xi'an Shiyou University
  • CAS - Institute of Earth Environment
  • Xi’an Institute for Innovative Earth Environment Research
  • Chinese Academy of Sciences

科研成果: 期刊稿件文章同行评审

13 引用 (Scopus)

摘要

The middle reaches of the Yellow River (MRYR), located in northern China, are the transition zone between semi-arid and semi-humid climates. As one of the climate-sensitive regions in China, MRYR has a fragile ecological environment and serious soil loss, which leads to geological disasters such as landslides, collapses, and mudslides caused by extreme precipitation. However, scarceness of high-resolution precipitation data over MRYR limits assessment of the environmental impacts caused by climate change, especially for extreme precipitation. In this article, we design a Residual-in-Residual Dense Block based Network (RRDBNet) model for the statistical downscaling of precipitation in MRYR, and compare the proposed RRDBNet with a generalized linear regression model (GLM) and two popular deep-learning-based models. The multi-level residuals and dense connectivity strategies introduced in RRDBNet help it to learn more abstract features and complex nonlinear relationships among climate variables to improve downscaling performance. The results show that the proposed RRDBNet has good performance in precipitation simulations, which can reproduce the spatial–temporal characteristics of high-resolution precipitation well. RRDBNet reduces the root-mean-squared error (RMSE) by 19% and improves the Pearson correlation coefficient (CC) by 6% relative to GLM for climatology mean precipitation. Especially, RRDBNet has substantial improvements in extreme precipitation compared with other models. It reduces RMSE by 58% (79%) and improves CC by 38% (145%) relative to GLM for R95P (R99P), where R95P and R99P represent extreme precipitation and very extreme precipitation, respectively. For the probability density function of daily precipitation, it is further demonstrated that RRDBNet performs better as regards extreme precipitation frequency. Our results suggest that statistical downscaling based on RRDBNet may be an effective tool for historical and future climate simulations from global climate models.

源语言英语
页(从-至)3290-3304
页数15
期刊Quarterly Journal of the Royal Meteorological Society
150
763
DOI
出版状态已出版 - 1 7月 2024

联合国可持续发展目标

此成果有助于实现下列可持续发展目标:

  1. 可持续发展目标 13 - 气候行动
    可持续发展目标 13 气候行动

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