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Geostatistical approaches for incorporating elevation into the spatial interpolation of rainfall

机译:将海拔纳入降雨的空间插值的地统计学方法

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This paper presents three multivariate geostatistical algorithms for incorporating a digital elevation model into the spatial prediction of rainfall: simple kriging with varying local means; kriging with an external drift; and colocated cokriging. The techniques are illustrated using annual and monthly rainfall observations measured at 36 climatic stations in a 5000 km(2) region of Portugal. Cross validation is used to compare the prediction performances of the three geostatistical interpolation algorithms with the straightforward linear regression of rainfall against elevation and three univariate techniques: the Thiessen polygon, inverse square distance; and ordinary kriging. Larger prediction errors are obtained for the two algorithms (inverse square distance, Thiessen polygon) that ignore both the elevation and rainfall records at surrounding stations. The three multivariate geostatistical algorithms outperform other interpolators, in particular the linear regression, which stresses the importance of accounting for spatially dependent rainfall observations in addition to the colocated elevation. Last, ordinary kriging yields more accurate predictions than linear regression when the correlation between rainfall and elevation is moderate (less than 0.75 in the case study). (C) 2000 Elsevier Science B.V. All rights reserved. [References: 28]
机译:本文提出了三种将数字高程模型纳入降雨空间预测的多元地统计学算法:简单的克里金法和不同的局部均值;外部漂移的克里金法;和共置cokriging。通过在葡萄牙5000 km(2)地区的36个气候站测得的年度和月度降雨观测值说明了该技术。交叉验证用于比较三种地统计插值算法的预测性能,降雨对海拔的直接线性回归以及三种单变量技术:Thiessen多边形,平方反比,和普通的克里金法。对于这两种算法(反平方距离,蒂森多边形),将获得较大的预测误差,而忽略周围站点的海拔和降雨记录。三种多元地统计算法的性能优于其他插值器,尤其是线性回归,这强调了除了共处的海拔高度以外,考虑空间相关降雨观测的重要性。最后,当降雨和海拔之间的相关性为中等水平(在案例研究中小于0.75)时,普通克里金法比线性回归法能提供更准确的预测。 (C)2000 Elsevier Science B.V.保留所有权利。 [参考:28]

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