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首页> 外文期刊>Hydrology and Earth System Sciences >Performance of bias-correction schemes for CMORPH rainfall estimates in the Zambezi River basin
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Performance of bias-correction schemes for CMORPH rainfall estimates in the Zambezi River basin

机译:Zambezi River盆地Cmorph降雨估计偏差方案的性能

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摘要

Satellite rainfall estimates (SREs) are prone to bias as they are indirect derivatives of the visible, infrared, and/or microwave cloud properties, and hence SREs need correction. We evaluate the influence of elevation and distance from large-scale open water bodies on bias for Climate Prediction Center-MORPHing (CMORPH) rainfall estimates in the Zambezi basin. The effectiveness of five linear/non-linear and time–space-variant/-invariant bias-correction schemes was evaluated for daily rainfall estimates and climatic seasonality. The schemes used are spatio-temporal bias (STB), elevation zone bias (EZ), power transform (PT), distribution transformation (DT), and quantile mapping based on an empirical distribution (QME). We used daily time series (1998–2013) from 60 gauge stations and CMORPH SREs for the Zambezi basin. To evaluate the effectiveness of the bias-correction schemes spatial and temporal cross-validation was applied based on eight stations and on the 1998–1999 CMORPH time series, respectively. For correction, STB and EZ schemes proved to be more effective in removing bias. STB improved the correlation coefficient and Nash–Sutcliffe efficiency by 50 % and 53 %, respectively, and reduced the root mean squared difference and relative bias by 25 % and 33 %, respectively. Paired t tests showed that there is no significant difference (p??0.05) in the daily means of CMORPH against gauge rainfall after bias correction. ANOVA post hoc tests revealed that the STB and EZ bias-correction schemes are preferable. Bias is highest for very light rainfall (?2.5 mm d?1), for which most effective bias reduction is shown, in particular for the wet season. Similar findings are shown through quantile–quantile (q–q) plots. The spatial cross-validation approach revealed that most bias-correction schemes removed bias by ?28 %. The temporal cross-validation approach showed effectiveness of the bias-correction schemes. Taylor diagrams show that station elevation has an influence on CMORPH performance. Effects of distance ?10 km from large-scale open water bodies are minimal, whereas effects at shorter distances are indicated but are not conclusive for a lack of rain gauges. Findings of this study show the importance of applying bias correction to SREs.
机译:卫星降雨估计(SRES)易于偏见,因为它们是可见,红外和/或微波云属性的间接衍生物,因此SRE需要校正。我们评估了大型开放水体对气候预测中心 - 变形(CMORPH)降雨估计的大规模开阔水体的影响。ZAMBEZI盆地的降雨估计。评估了五种线性/非线性和时隙 - 校正方案的有效性,用于日降雨估计和气候季节性。使用的方案是时空偏置(STB),高度区域偏置(EZ),功率变换(PT),分配变换(DT)和基于经验分布(QME)的分量映射。我们使用了60个仪表站(1998-2013)的日常时间(1998-2013),为赞同的盆地Cmorph Sres。为了评估偏差方案的有效性,基于八个站和1998-1999 Cmorph时间序列应用了空间和时间交叉验证。对于校正,STB和EZ方案证明在去除偏压方面更有效。 STB分别将相关系数和NASH-SUTCLIFFE效率提高50%和53%,并分别将根部平均平方差和相对偏差减少25%和33%。配对的T测试表明,在偏差校正后CMORPH的日常手段中没有显着差异(P?<0.05)。 ANOVA后HOC测试显示STB和EZ偏压方案是优选的。对于非常轻微的降雨(<?2.5mm d?1),偏差最高,特别是对于湿季节而言,尤其是最有效的偏差减少。通过定量位定量(Q-Q)图显示了类似的发现。空间交叉验证方法揭示了大多数偏压校正方案被偏差偏差>?28%。时间交叉验证方法显示了偏压校正方案的有效性。泰勒图表明,站高程对Cmor​​ph性能产生影响。距离的效果>距大型开放水体10公里是最小的,而缺少距离较短的效果,但缺乏雨量仪表并不确定。本研究的结果表明对SRES施加偏压的重要性。

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