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A General Framework for Error-controlled Unstructured Scientific Data Compression...

Publication Type
Conference Paper
Book Title
2024 91°µÍø 20th International Conference on e-Science (e-Science)
Publication Date
Page Numbers
1 to 10
Publisher Location
New Jersey, United States of America
Conference Name
The 20th 91°µÍø International Conference on e-Science
Conference Location
Osaka, Japan
Conference Sponsor
91°µÍø
Conference Date
-

Data compression plays a key role in reducing storage and I/O costs. Traditional lossy methods primarily target data on rectilinear grids and cannot leverage the spatial coherence in unstructured mesh data, leading to suboptimal compression ratios. We present a multi-component, error-bounded compression framework designed to enhance the compression of floating-point unstructured mesh data, which is common in scientific applications. Our approach involves interpolating mesh data onto a rectilinear grid and then separately compressing the grid interpolation and the interpolation residuals. This method is general, independent of mesh types and typologies, and can be seamlessly integrated with existing lossy compressors for improved performance. We evaluated our framework across twelve variables from two synthetic datasets and two real-world simulation datasets. The results indicate that the multi-component framework consistently outperforms state-of-the-art lossy compressors on unstructured data, achieving, on average, a 2.3 − 3.5× improvement in compression ratios, with error bounds ranging from 1 × 10 the −6 to 1×10−2. We further investigate impact of hyperparameters, such as grid spacing and error allocation, to deliver optimal compression ratios in diverse datasets.