Assessment of spatial interpolation techniques for drought severity analysis in Salt Lake Basin

A. Keshtkar, N. Moazami, A. Afzali
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引用次数: 1

Abstract

Drought risk management requires drought monitoring which is usually carried out by applying different drought indices which are, effectively, continuous functions of precipitation and other meteorological data. However, these indices are estimated at specific locations, and the spatial distribution of drought must be calculated in the form of maps. Geostatistical and deterministic techniques make it possible to interpolate spatially-referenced data. These methods are able to estimate values for arbitrary locations in regions of interest. The current study applied five spatial interpolation methods (inverse distance weighted, global polynomial interpolation, local polynomial interpolation, radial basic function, and kriging [with 4 sub-types]) to extract maps of SPI at 60 rain-gauge stations in the Salt Lake Basin of Iran. Based on the root mean square error, mean absolute error, and mean bias error values of estimations made using sampled data from 1969 to 2009, RBF and kriging techniques were the best and most suitable methods for the spatial analysis of SPI in the study area. The current study applied five spatial interpolation methods (inverse distance weighted, global polynomial interpolation, local polynomial interpolation, radial basic function, and kriging [with 4 sub-types]) to extract maps of SPI at 60 rain-gauge stations in the Salt Lake Basin of Iran. Based on the root mean square error, mean absolute error, and mean bias error values of estimations made using sampled data from 1969 to 2009, RBF and kriging techniques were the best and most suitable methods for the spatial analysis of SPI in the study area.
盐湖盆地干旱程度分析的空间插值技术评价
干旱风险管理需要干旱监测,通常通过应用不同的干旱指数来进行,这些指数是降水和其他气象数据的连续函数。然而,这些指数是在特定地点估计的,必须以地图的形式计算干旱的空间分布。地质统计学和确定性技术使得对空间参考数据进行插值成为可能。这些方法能够估计感兴趣区域中任意位置的值。目前的研究应用了五种空间插值方法(逆距离加权、全局多项式插值、局部多项式插值、径向基本函数和克里格法[有4个子类型])来提取伊朗盐湖盆地60个雨量站的SPI地图。基于1969年至2009年采样数据估计的均方根误差、平均绝对误差和平均偏误值,RBF和克里格技术是研究区域SPI空间分析的最佳和最合适的方法。目前的研究应用了五种空间插值方法(逆距离加权、全局多项式插值、局部多项式插值、径向基本函数和克里格法[有4个子类型])来提取伊朗盐湖盆地60个雨量站的SPI地图。基于1969年至2009年采样数据估计的均方根误差、平均绝对误差和平均偏误值,RBF和克里格技术是研究区域SPI空间分析的最佳和最合适的方法。
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