Spatial prediction in an arbitrary location, based on a spatial set of observations, is usually performed by Kriging, being the best linear unbiased predictor (BLUP) in a least-square sense. In order to predict a continuous surface over a spatial domain a grid representation is most often used. Kriging predictions and prediction variances are computed in the nodes of a grid covering the spatial domain, and the continuous surface is assessed from this grid representation. A precise representation usually requires the number of grid nodes to be considerably larger than the number of observations. For a Gaussian random field model the Kriging predictor coinsides with the conditional expectation of the spatial variable given the observation set. An alternative expression for this conditional expectation provides a spatial predictor on functional form which does not rely on a spatial grid discretization. This functional predictor, called the Kernel predictor, is identical to the asymptotic grid infill limit of the Kriging-based grid representation, and the computational demand is primarily dependent on the number of observations - not the dimension of the spatial reference domain nor any grid discretization. We explore the potential of this Kernel predictor with associated prediction variances. The predictor is valid for Gaussian random fields with any eligible spatial correlation function, and large computational savings can be obtained by using a finite-range spatial correlation function. For studies with a huge set of observations, localized predictors must be used, and the computational advantage relative to Kriging predictors can be very large. Moreover, model parameter inference based on a huge observation set can be efficiently made. The methodology is demonstrated in a couple of examples.
翻译:根据一组空间观测,任意地点的任意空间预测通常由克里吉(Kriging)进行,这是最不平方的最好的线性无偏预测器(BLUP) 。为了在空间域上预测连续表面,最经常使用网格代表。在覆盖空间域的网格节点中计算了克里吉预测和预测差异,从这个网格代表处对连续表面进行评估。精确的表示通常要求网格节点的数目大大大于观测次数。对于高斯随机外地模型(Kriging 预测器硬币边),且根据观察组对空间变量的有条件期望。为了预测一个条件的替代表达方式,在空间域网格代表处的功能形式上提供不依赖空间网格离散的空间预测器。这个功能性预测器,称为内空格预测器,与填补以克里吉格为基础的网格代表点限制,而计算器的模型需求主要取决于观测次数 - 空间参考域域或任何电网格分解的数值。我们探索Kernoving 的观测潜力,在使用高空基度预测法的直径直径直径直径直系的直系函数中,使用高空的直径直径直系的直径直径直系的直径直系的直系的直系计算函数是用于直系的直系的直系的直系的直径直系的直径直系的直系的直系的直径直系的直判函数函数函数。一个直判的直判的直判的直判的直判的直判函数。