학술논문

Multilevel techniques for compression and reduction of scientific data—the univariate case.
Document Type
Article
Source
Computing & Visualization in Science. Dec2018, Vol. 19 Issue 5/6, p65-76. 12p.
Subject
*DATA compression
*DATA reduction
*MULTILEVEL models
*CODING theory
*UNIVARIATE analysis
Language
ISSN
1432-9360
Abstract
We present a multilevel technique for the compression and reduction of univariate data and give an optimal complexity algorithm for its implementation. A hierarchical scheme offers the flexibility to produce multiple levels of partial decompression of the data so that each user can work with a reduced representation that requires minimal storage whilst achieving the required level of tolerance. The algorithm is applied to the case of turbulence modelling in which the datasets are traditionally not only extremely large but inherently non-smooth and, as such, rather resistant to compression. We decompress the data for a range of relative errors, carry out the usual analysis procedures for turbulent data, and compare the results of the analysis on the reduced datasets to the results that would be obtained on the full dataset. The results obtained demonstrate the promise of multilevel compression techniques for the reduction of data arising from large scale simulations of complex phenomena such as turbulence modelling. [ABSTRACT FROM AUTHOR]