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A space and time scale-dependent nonlinear geostatistical approach for downscaling daily precipitation and temperature

机译:与空间和时间尺度有关的非线性地统计学方法,用于缩小每日降水量和温度

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摘要

A geostatistical framework is proposed to downscale daily precipitation and temperature. The methodology is based on multiple-point geostatistics (MPS), where a multivariate training image is used to represent the spatial relationship between daily precipitation and daily temperature over several years. Here, the training image consists of daily rainfall and temperature outputs from the Weather Research and Forecasting (WRF) model at 50 km and 10 km resolution for a twenty year period ranging from 1985 to 2004. The data are used to predict downscaled climate variables for the year 2005. The result, for each downscaled pixel, is daily time series of precipitation and temperature that are spatially dependent. Comparison of predicted precipitation and temperature against a reference dataset indicates that both the seasonal average climate response together with the temporal variability are well reproduced. The explicit inclusion of time dependence is explored by considering the climate properties of the previous day as an additional variable. Comparison of simulations with and without inclusion of time dependence shows that the temporal dependence only slightly improves the daily prediction because the temporal variability is already well represented in the conditioning data. Overall, the study shows that the multiple-point geostatistics approach is an efficient tool to be used for statistical downscaling to obtain local scale estimates of precipitation and temperature from General Circulation Models. This article is protected by copyright. All rights reserved.
机译:提出了一个地统计学框架来降低每日的降水量和温度。该方法基于多点地统计学(MPS),其中使用多变量训练图像来表示几年中每日降水量与每日温度之间的空间关系。在这里,训练图像由天气研究和预报(WRF)模型在1985年至2004年的20年期间的50 km和10 km分辨率下的每日降雨量和温度输出组成。这些数据用于预测气候变量的降尺度结果是2005年。对于每个按比例缩小的像素,结果是降水和温度的每日时间序列与空间相关。将预测的降水量和温度与参考数据集进行比较表明,季节平均气候响应以及时间变异性都得到了很好的再现。通过将前一天的气候特性作为附加变量,探索了对时间依赖性的明确包含。具有和不具有时间依赖性的模拟的比较表明,时间依赖性仅稍微改善了每日预测,因为时间变异性已经很好地表示在条件数据中。总体而言,研究表明,多点地统计方法是一种有效的工具,可用于统计缩减,以从“一般环流模型”中获得降水和温度的局部尺度估计。本文受版权保护。版权所有。

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