Feature extraction of complex ocean flow field using the helmholtz-hodge decomposition

Huan Wang, Junhui Deng
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引用次数: 5

Abstract

Flow visualization is an important research field in scientific visualization and feature detection is the one of the core problems. This paper presents a novel approach for complex ocean flow visualization and analysis by applying the helmholtz-hodge decomposition theory to the feature extraction problem. We give an efficient implementation on regular grids by solving a large-scale sparse group of linear equations. And to accelerate the computation process, we have used the GMRES parallel library. By making full use of the anti-noise property of the decomposition results, well-designed algorithms are used to identify the features such as critical points and vortices. To illustrate the ability of our techniques, experiments on realistic datasets are conducted. Experimental results demonstrate that our methods are helpful to deeply understand the flow field.
基于helmholtz-hodge分解的复杂海洋流场特征提取
流动可视化是科学可视化的一个重要研究领域,特征检测是其中的核心问题之一。将亥姆霍兹-霍奇分解理论应用于特征提取问题,提出了一种复杂洋流可视化分析的新方法。通过求解一组大规模的稀疏线性方程组,给出了正则网格上的有效实现。为了加快计算速度,我们使用了GMRES并行库。通过充分利用分解结果的抗噪声特性,采用精心设计的算法来识别临界点、漩涡等特征。为了说明我们技术的能力,在实际数据集上进行了实验。实验结果表明,我们的方法有助于深入了解流场。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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