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首页> 外文期刊>International journal of parallel programming >Performance Evaluation of GPU-Accelerated Spatial Interpolation Using Radial Basis Functions for Building Explicit Surfaces
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Performance Evaluation of GPU-Accelerated Spatial Interpolation Using Radial Basis Functions for Building Explicit Surfaces

机译:使用径向基函数构建显式曲面的GPU加速空间插值的性能评估

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This paper focuses on evaluating the computational performance of parallel spatial interpolation with Radial Basis Functions (RBFs) that is developed by utilizing modern GPUs. The RBFs can be used in spatial interpolation to build explicit surfaces such as Discrete Elevation Models. When interpolating with large-size of data points and interpolated points for building explicit surfaces, the computational cost would be quite expensive. To improve the computational efficiency, we specifically develop a parallel RBF spatial interpolation algorithm on many-core GPUs, and compare it with the parallel version implemented on multi-core CPUs. Five groups of experimental tests are conducted on two machines to evaluate the computational efficiency of the presented GPU-accelerated RBF spatial interpolation algorithm. Experimental results indicate that: in most cases, the parallel RBF interpolation algorithm on many-core GPUs does not have any significant advantages over the parallel version on multi-core CPUs in terms of computational efficiency. This unsatisfied performance of the GPU-accelerated RBF interpolation algorithm is due to: (1) the limited size of global memory residing on the GPU, and (2) the need to solve a system of linear equations in each GPU thread to calculate the weights and prediction value of each interpolated point.
机译:本文着重评估利用径向基函数(RBF)并行空间插值的计算性能,该径向基函数是利用现代GPU开发的。 RBF可用于空间插值,以构建显式曲面,例如离散高程模型。当使用大型数据点和用于构建显式曲面的插值点进行插值时,计算成本将非常昂贵。为了提高计算效率,我们专门在多核GPU上开发了并行RBF空间插值算法,并将其与在多核CPU上实现的并行版本进行比较。在两台机器上进行了五组实验测试,以评估所提出的GPU加速的RBF空间插值算法的计算效率。实验结果表明:在大多数情况下,就计算效率而言,多核GPU上的并行RBF插值算法并不比多核CPU上的并行版本具有任何显着优势。 GPU加速的RBF插值算法的这种不令人满意的性能归因于:(1)GPU上全局内存的有限大小,以及(2)需要在每个GPU线程中求解线性方程组以计算权重和每个插值点的预测值。

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