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Comparison of interpolation methods for estimating spatial distribution of precipitation in Ontario, Canada

机译:估算加拿大安大略省降水空间分布的插值方法的比较

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摘要

In this study, different interpolation techniques in a geographical information system (GIS) environment are analysed and compared for estimating the spatial distribution of precipitation in the province of Ontario, Canada. A high-resolution regional climate modelling system [Providing Regional Climates for Impacts Studies (PRECIS)] is used to simulate the present (1961-1990) and future (2071-2100) precipitation events for 12 meteorological stations over Ontario. The results verify that for the present case PRECIS simulates well the precipitation events when compared with observed data. The future precipitation events can be projected after the validation of PRECIS. Six interpolation methods are then used to generate spatial distribution of precipitation based on the projections of future precipitation of 12 meteorological stations; they include inverse distance weighting (IDW), global polynomial interpolation (GPI), local polynomial interpolation (LPI), radial basis functions (RBF), ordinary kriging (OK), and universal kriging (UK). Cross-validation is applied to evaluate the accuracy of interpolation methods in terms of the root mean square error (RMSE). The results indicate that LPI is the optimal method with the least RMSE for interpolating the PRECIS precipitation. LPI is then used to analyse spatial variations of the average annual precipitation for the period of 2071-2100 over Ontario.
机译:在这项研究中,分析和比较了地理信息系统(GIS)环境中的不同插值技术,以估算加拿大安大略省降水的空间分布。高分辨率区域气候建模系统[提供区域气候影响研究(PRECIS)]用于模拟安大略省12个气象站的当前(1961-1990年)和未来(2071-2100年)降水事件。结果证明,与观察到的数据相比,在当前情况下,PRECIS能够很好地模拟降水事件。在PRECIS验证后,可以预测未来的降水事件。然后,根据12个气象台站未来降水的预测,使用六种插值方法生成降水的空间分布。它们包括反距离权重(IDW),全局多项式插值(GPI),局部多项式插值(LPI),径向基函数(RBF),普通克里金(OK)和通用克里金(UK)。交叉验证用于根据均方根误差(RMSE)评估插值方法的准确性。结果表明,LPI是插值PRECIS降水量的最小RMSE的最佳方法。然后,LPI用于分析安大略省2071-2100年期间的年平均降水量的空间变化。

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