The ever-growing size of modern space-time data sets, such as those collected by remote sensing, requires new techniques for their efficient and automated processing, including gap-filling of missing values. CUDA-based parallelization on GPU has become a popular way to dramatically increase computational efficiency of various approaches. Recently, we have proposed a computationally efficient and competitive, yet simple spatial prediction approach inspired from statistical physics models, called modified planar rotator (MPR) method. Its GPU implementation allowed additional impressive computational acceleration exceeding two orders of magnitude in comparison with CPU calculations. In the current study we propose a rather general approach to modelling spatial heterogeneity in GPU-implemented spatial prediction methods for two-dimensional gridded data by introducing spatial variability to model parameters. Predictions of unknown values are obtained from non-equilibrium conditional simulations, assuming ``local'' equilibrium conditions. We demonstrate that the proposed method leads to significant improvements in both prediction performance and computational efficiency.
翻译:现代空间时间数据集的规模不断扩大,例如遥感收集的数据集,要求采用新技术来高效和自动化地处理这些数据集,包括填补缺失值的空白。基于CUDA的GPU平行化已成为大大提高各种方法计算效率的流行方式。最近,我们提议了一种由统计物理模型(称为“局部转动器(MPR)修改后转动器(MPR)方法)启发的计算效率和竞争性的简单空间预测方法。其GPU的实施允许与CPU计算相比,增加令人印象深刻的加速计算速度,超过两个数量级。在目前的研究中,我们提出了一个相当笼统的方法,通过将空间变异性引入模型参数来模拟二维电网数据实施空间预测方法的空间异性。从非平衡的有条件模拟中获得了未知值的预测,假设了“局部的平衡条件 ” 。我们证明拟议的方法在预测性能和计算效率两方面都取得了显著的改进。