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A generalization of inverse distance weighting method via kernel regression and its application to surface modeling

机译:基于核回归的距离反演加权方法的推广及其在曲面建模中的应用

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摘要

The inverse-distance weighting (IDW) method is considered as one of the most popular deterministic methods and is widely applied to a variety of areas because of its low computational cost and easy implementation. In this paper, we show that the classical IDW is essentially a zeroth-order local kernel regression method with an inverse distance weight function. Thus, it suffers from various shortcomings, such as the boundary bias. Considering the advantages of the local polynomial modeling technique in statistics, the classical IDW was generalized into a higher-order regression by the Taylor expansion and then computed by means of a weighted least-squares method. Surface modeling of rainfall fields in China indicated that the generalized IDWs with the first- and second-orders are more accurate than the classical IDW in terms of root mean square error (RMSE). The example of digital elevation model construction with a group of sample points showed that the two generalized IDWs have better RMSE and mean error than the classical IDW. Furthermore, the second-order IDW has a better performance than the ordinary kriging in terms of RMSE. A theoretical analysis demonstrated that the gradient-plus-inverse distance squared method presented by Nalder and Wein (Agric For Meteorol 92(4): 211-225, 1998) is a first-order form of the generalized IDW expanded on spatial coordinates and elevation. In a word, the generalized IDW can incorporate multiple covariates, which can better explain the interpolation procedure and might improve its accuracy.
机译:逆距离加权(IDW)方法被认为是最流行的确定性方法之一,并且由于其计算成本低且易于实现而被广泛应用于各种领域。在本文中,我们证明了经典的IDW本质上是具有逆距离权重函数的零阶局部核回归方法。因此,它具有各种缺点,例如边界偏差。考虑到局部多项式建模技术在统计中的优势,经典的IDW通过泰勒展开推广为高阶回归,然后通过加权最小二乘法进行计算。中国降雨场的表面模拟表明,一阶和二阶广义IDW在均方根误差(RMSE)方面比经典IDW更为准确。具有一组采样点的数字高程模型构造示例显示,与常规IDW相比,两个广义IDW具有更好的RMSE和平均误差。此外,就RMSE而言,二阶IDW具有比普通克里金更好的性能。理论分析表明,Nalder和Wein(Agric For Meteorol 92(4):211-225,1998)提出的梯度加反距离平方方法是广义IDW在空间坐标和高程上扩展的一阶形式。 。总之,广义IDW可以包含多个协变量,可以更好地解释插值过程并可以提高其准确性。

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