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首页> 外文期刊>Advances in Water Resources >Bias adjustment of satellite rainfall data through stochastic modeling: Methods development and application to Nepal
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Bias adjustment of satellite rainfall data through stochastic modeling: Methods development and application to Nepal

机译:通过随机建模对卫星降雨数据的偏差调整:方法的发展和在尼泊尔的应用

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摘要

Estimating precipitation over large spatial areas remains a challenging problem for hydrologists. Sparse ground-based gauge networks do not provide a robust basis for interpolation, and the reliability of remote sensing products, although improving, is still imperfect. Current techniques to estimate precipitation rely on combining these different kinds of measurements to correct the bias in the satellite observations. We propose a novel procedure that, unlike existing techniques, (ⅰ) allows correcting the possibly confounding effects of different sources of errors in satellite estimates, (ⅱ) explicitly accounts for the spatial heterogeneity of the biases and (ⅲ) allows the use of non overlapping historical observations. The proposed method spatially aggregates and interpolates gauge data at the satellite grid resolution by focusing on parameters that describe the frequency and intensity of the rainfall observed at the gauges. The resulting gridded parameters can then be used to adjust the probability density function of satellite rainfall observations at each grid cell, accounting for spatial heterogeneity. Unlike alternate methods, we explicitly adjust biases on rainfall frequency in addition to its intensity. Adjusted rainfall distributions can then readily be applied as input in stochastic rainfall generators or frequency domain hydrological models. Finally, we also provide a procedure to use them to correct remotely sensed rainfall time series. We apply the method to adjust the distributions of daily rainfall observed by the TRMM satellite in Nepal, which exemplifies the challenges associated with a sparse gauge network and large biases due to complex topography. In a cross-validation analysis on daily rainfall from TRMM 3B42 v6, we find that using a small subset of the available gauges, the proposed method outperforms local rainfall estimations using the complete network of available gauges to directly interpolate local rainfall or correct TRMM by adjusting monthly means. We conclude that the proposed frequency-domain bias correction approach is robust and reliable compared to other bias correction approaches.
机译:对于水文学家来说,估计大空间区域的降水仍然是一个具有挑战性的问题。稀疏的地面轨距网络无法为插值提供可靠的基础,尽管提高了遥感产品的可靠性,但仍不完善。当前估计降水的技术依赖于将这些不同种类的测量结果结合起来,以纠正卫星观测中的偏差。我们提出一种新颖的程序,与现有技术不同,(ⅰ)可以校正卫星估计中不同误差源的可能造成的混淆影响,(ⅱ)明确说明偏差的空间异质性,并且(ⅲ)允许使用非重叠的历史观察。所提出的方法通过关注描述在标尺上观测到的降雨的频率和强度的参数,以卫星网格分辨率在空间上聚合和内插标尺数据。然后,可以将得到的网格化参数用于调整每个网格单元上卫星降雨观测值的概率密度函数,以解决空间异质性问题。与替代方法不同,除了强度之外,我们还显式调整降雨频率的偏差。然后可以将调整后的降雨分布轻松地用作随机降雨发生器或频域水文模型的输入。最后,我们还提供了使用它们来校正遥感降雨时间序列的过程。我们应用该方法来调整由TRMM卫星在尼泊尔观测到的每日降雨量的分布,这例证了与稀疏轨距网络和复杂地形导致的大偏差相关的挑战。在对来自TRMM 3B42 v6的每日降雨量的交叉验证分析中,我们发现,使用一小部分可用量规,该建议方法使用完整的可用量规网络直接内插局部降雨量或通过调整来校正TRMM优于本地降雨量估算月度收入。我们得出的结论是,与其他偏差校正方法相比,提出的频域偏差校正方法是可靠且可靠的。

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