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Improving GPU-accelerated adaptive IDW interpolation algorithm using fast kNN search

机译:使用快速kNN搜索改进GPU加速的自适应IDW插值算法

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摘要

This paper presents an efficient parallel Adaptive Inverse Distance Weighting (AIDW) interpolation algorithm on modern Graphics Processing Unit (GPU). The presented algorithm is an improvement of our previous GPU-accelerated AIDW algorithm by adopting fast k-nearest neighbors (kNN) search. In AIDW, it needs to find several nearest neighboring data points for each interpolated point to adaptively determine the power parameter; and then the desired prediction value of the interpolated point is obtained by weighted interpolating using the power parameter. In this work, we develop a fast kNN search approach based on the space-partitioning data structure, even grid, to improve the previous GPU-accelerated AIDW algorithm. The improved algorithm is composed of the stages of kNN search and weighted interpolating. To evaluate the performance of the improved algorithm, we perform five groups of experimental tests. The experimental results indicate: (1) the improved algorithm can achieve a speedup of up to 1017 over the corresponding serial algorithm; (2) the improved algorithm is at least two times faster than our previous GPU-accelerated AIDW algorithm; and (3) the utilization of fast kNN search can significantly improve the computational efficiency of the entire GPU-accelerated AIDW algorithm.Electronic supplementary materialThe online version of this article (doi:10.1186/s40064-016-3035-2) contains supplementary material, which is available to authorized users.
机译:本文提出了一种在现代图形处理单元(GPU)上有效的并行自适应逆距离加权(AIDW)插值算法。提出的算法是对我们以前的GPU加速AIDW算法的改进,它采用了快速k最近邻(kNN)搜索。在AIDW中,它需要为每个插值点找到几个最近的相邻数据点,以自适应地确定功率参数。然后通过使用功率参数进行加权插值得到插值点的期望预测值。在这项工作中,我们开发了一种基于空间划分数据结构(甚至网格)的快速kNN搜索方法,以改进以前的GPU加速的AIDW算法。改进的算法由kNN搜索和加权插值两个阶段组成。为了评估改进算法的性能,我们执行了五组实验测试。实验结果表明:(1)改进后的算法可以比相应的串行算法提高1017倍的速度; (2)改进的算法至少比我们之前的GPU加速的AIDW算法快两倍; (3)快速kNN搜索的使用可以显着提高整个GPU加速的AIDW算法的计算效率。电子补充材料本文的在线版本(doi:10.1186 / s40064-016-3035-2)包含补充材料,可供授权用户使用。

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