Challenges and potential solutions in statistical downscaling of precipitation

被引:0
|
作者
Jie Chen
Xunchang John Zhang
机构
[1] Wuhan University,State Key Laboratory of Water Resources & Hydropower Engineering Science
[2] USDA-ARS,undefined
[3] Grazinglands Research Laboratory,undefined
来源
Climatic Change | 2021年 / 165卷
关键词
Statistical downscaling; Temporal sequence of precipitation; Daily precipitation extreme; Nonstationarity;
D O I
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学科分类号
摘要
Downscaling is an effective technique to bridge the gap between climate model outputs and data requirements of most crop and hydrologic models for assessing local and site-specific climate change impacts, especially on future food security. However, downscaling of temporal sequences, extremes in daily precipitation, and handling of nonstationary precipitation in future conditions are considered common challenges for most statistical downscaling methods. This study reviewed the above key challenges in statistical downscaling and proposed potential solutions. Ten weather stations located across the globe were used as proof of concept. The use of a stochastic Markov chain to generate daily precipitation occurrences is an effective approach to simulate the temporal sequence of precipitation. Also, the downscaling of precipitation extremes can be achieved by adjusting the skewness coefficient of a probability distribution, as they are highly correlated. Nonstationarity in precipitation downscaling can be handled by adjusting parameters of a probability distribution according to future precipitation change signals projected by climate models. The perspectives proposed in this study are of great significance in using climate model outputs for assessing local and site-specific climate change impacts, especially on future food security.
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