论文标题
TAC:针对三维自适应网格改进模拟优化误差的有损压缩
TAC: Optimizing Error-Bounded Lossy Compression for Three-Dimensional Adaptive Mesh Refinement Simulations
论文作者
论文摘要
当今的科学仿真需要大大减少数据量,因为它们产生了大量数据,并且I/O带宽和存储空间有限。遇到错误的损耗压缩已被认为是上述问题最有效的解决方案之一。但是,对于改善自适应网格细化(AMR)模拟数据的错误结合的有损压缩的工作很少。与以前仅利用1D压缩的工作不同,在这项工作中,我们建议为AMR数据的每个细化水平利用高维(例如3D)压缩。为了删除不同级别的数据冗余,我们提出了三种预处理策略,并根据数据特征自适应地使用它们。与最先进的方法相比,在相同的数据失真下,来自现实世界中的大规模AMR模拟的七个AMR数据集实验表明,我们提出的方法可以提高压缩率高达3.3倍。此外,我们利用方法的灵活性来调整每个级别的误差,这在两个特定于应用的指标上的数据失真较低。
Today's scientific simulations require a significant reduction of data volume because of extremely large amounts of data they produce and the limited I/O bandwidth and storage space. Error-bounded lossy compression has been considered one of the most effective solutions to the above problem. However, little work has been done to improve error-bounded lossy compression for Adaptive Mesh Refinement (AMR) simulation data. Unlike the previous work that only leverages 1D compression, in this work, we propose to leverage high-dimensional (e.g., 3D) compression for each refinement level of AMR data. To remove the data redundancy across different levels, we propose three pre-process strategies and adaptively use them based on the data characteristics. Experiments on seven AMR datasets from a real-world large-scale AMR simulation demonstrate that our proposed approach can improve the compression ratio by up to 3.3X under the same data distortion, compared to the state-of-the-art method. In addition, we leverage the flexibility of our approach to tune the error bound for each level, which achieves much lower data distortion on two application-specific metrics.