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首页> 外文期刊>Remote Sensing >Two-Step Downscaling of Trmm 3b43 V7 Precipitation in Contrasting Climatic Regions With Sparse Monitoring: The Case of Ecuador in Tropical South America
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Two-Step Downscaling of Trmm 3b43 V7 Precipitation in Contrasting Climatic Regions With Sparse Monitoring: The Case of Ecuador in Tropical South America

机译:气候变化地区的Trmm 3b43 V7降水两步缩减和稀疏监测:以南美洲热带厄瓜多尔为例

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摘要

Spatial prediction of precipitation with high resolution is a challenging task in regions with strong climate variability and scarce monitoring. For this purpose, the quasi-continuous supply of information from satellite imagery is commonly used to complement in situ data. However, satellite images of precipitation are available at coarse resolutions, and require adequate methods for spatial downscaling and calibration. The objective of this paper is to introduce and evaluate a 2-step spatial downscaling approach for monthly precipitation applied to TRMM 3B43 (from 0 . 25 ° ≈ 27 km to 5 km resolution), resulting in 5 downscaled products for the period 01-2001/12-2011. The methodology was evaluated in 3 contrasting climatic regions of Ecuador. In step 1, bilinear resampling was applied over TRMM, and used as a reference product. The second step introduces further variability, and consists of four alternative gauge-satellite merging methods: (1) regression with in situ stations, (2) regression kriging with in situ stations, (3) regression with in situ stations and auxiliary variables, and (4) regression kriging with in situ stations and auxiliary variables. The first 2 methods only use the resampled TRMM data set as an independent variable. The last 2 methods enrich these models with auxiliary environmental factors, incorporating atmospheric and land variables. The results showed that no product outperforms the others in every region. In general, the methods with residual kriging correction outperformed the regression models. Regression kriging with situ data provided the best representation in the Coast, while regression kriging with in situ and auxiliary data generated the best results in the Andes. In the Amazon, no product outperformed the resampled TRMM images, probably due to the low density of in situ stations. These results are relevant to enhance satellite precipitation, depending on the availability of in situ data, auxiliary satellite variables and the particularities of the climatic regions.
机译:在气候多变性和监测稀缺的地区,高分辨率降水的空间预测是一项艰巨的任务。为此,通常使用卫星图像的准连续信息来补充原位数据。但是,降水的卫星图像可以以较高分辨率获得,并且需要用于空间缩小和校准的适当方法。本文的目的是介绍和评估应用于TRMM 3B43(从0。25°≈27 km到5 km的分辨率)的月降水量的两步空间缩减方法,在01-2001年期间产生了5个缩减的乘积/ 12-2011。在厄瓜多尔的三个不同气候区域对方法进行了评估。在步骤1中,将双线性重采样应用于TRMM,并用作参考产品。第二步引入了更多的可变性,并且由四种可选的轨距卫星合并方法组成:(1)使用原位站进行回归,(2)使用原位站进行回归克里金法,(3)使用原位站和辅助变量进行回归,以及(4)具有原位测站和辅助变量的回归克里金法。前两种方法仅将重新采样的TRMM数据集用作自变量。后两种方法结合了大气和陆地变量,以辅助环境因素丰富了这些模型。结果表明,在每个地区都没有产品胜过其他产品。通常,使用剩余克里金校正的方法要优于回归模型。使用原位数据的回归克里金法在海岸地区提供了最好的表示,而使用原位和辅助数据的回归克里金法在安第斯山脉产生了最好的结果。在亚马逊地区,没有产品比重新采样的TRMM图像更胜一筹,这可能是由于原地站的密度低。这些结果与增强卫星降水有关,这取决于现场数据的可用性,辅助卫星变量和气候区域的特殊性。

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