Abstract

A statistical downscaling method based on Self-Organizing Maps (SOM), of which the SOM Precipitation Statistical Downscaling Method (SOM-SD) is named, has received increasing attention. Herein, its applicability of downscaling daily precipitation over North China is evaluated. Six indices (total season precipitation, daily precipitation intensity, mean number of precipitation days, percentage of rainfall from events beyond the 95th percentile value of overall precipitation, maximum consecutive wet days, and maximum consecutive dry days) are selected, which represent the statistics of daily precipitation with regards to both precipitation amount and frequency, as well as extreme event. The large-scale predictors were extracted from the National Center for Environmental Prediction/National Center for Atmospheric Research (NCEP/NCAR) daily reanalysis data, while the prediction was the high resolution gridded daily observed precipitation. The results show that the method can establish certain conditional transformation relationships between large-scale atmospheric circulation and local-scale surface precipitation in a relatively simple way. This method exhibited a high skill in reproducing the climatologic statistical properties of the observed precipitation. The simulated daily precipitation probability distribution characteristics can be well matched with the observations. The values of Brier scores are between 0 and 1.5 × 10−4 and the significance scores are between 0.8 and 1 for all stations. The SOM-SD method, which is evaluated with the six selected indicators, shows a strong simulation capability. The deviations of the simulated daily precipitation are as follows: Total season precipitation (−7.4%), daily precipitation intensity (−11.6%), mean number of rainy days (−3.1 days), percentage of rainfall from events beyond the 95th percentile value of overall precipitation (+3.4%), maximum consecutive wet days (−1.1 days), and maximum consecutive dry days (+3.5 days). In addition, the frequency difference of wet-dry nodes is defined in the evaluation. It is confirmed that there was a significant positive correlation between frequency difference and precipitation. The findings of this paper imply that the SOM-SD method has a good ability to simulate the probability distribution of daily precipitation, especially the tail of the probability distribution curve. It is more capable of simulating extreme precipitation fields. Furthermore, it can provide some guidance for future climate projections over North China.

Highlights

  • The Global Climate Models (GCM) are currently the most advanced tool available for simulating the response of the global climate system under increasing trends in greenhouse gas concentrations

  • The downscaling technique can compensate the deficiency of GCM

  • To observe the statistical characteristics of the daily precipitation statistical downscaling results, some commonly used precipitation indices are selected. Most of these indicators are selected from the core indicators of the EU STARDEX program for analyzing extreme climate events

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Summary

Introduction

The Global Climate Models (GCM) are currently the most advanced tool available for simulating the response of the global climate system under increasing trends in greenhouse gas concentrations. Its low resolution does not meet the small-scale needs of climate impact studies. The downscaling technique can compensate the deficiency of GCM in matching spatial and temporal resolution in climate impact assessment [1,2]. There are two main types of downscaling methods: Dynamic downscaling and statistical downscaling. The dynamic downscaling methods are computationally demanding and not easy to apply [3,4,5,6]. Statistical downscaling methods have been widely used in regional climate change impact assessment. Many different statistical downscaling methods for different regions have been studied by domestic and international scholars [9,10,11,12]

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