Mar 13, 2020

A Statistical Analysis of Lossily Compressed CESM-LENS Data


ERROR
Cookies must be enabled.

Version: 1.0

The data storage burden resulting from CESM simulations continues to grow, and lossy data compression methods can alleviate this burden, provided that key climate variables are not altered to the point of affecting scientific conclusions. This dataset was generated to evaluate the effects of two leading lossy compression algorithms, sz and zfp, on daily output data from the CESM-LENS dataset. In particular, it contains daily data for variables TS (surface temperature) and PRECT (precipitation rate) from the historical forcing period (1920-2005) for CESM-LENS ensemble member 30. The provided data has been compressed and reconstructed via two popular compressors: sz 1.4.13 and zfp 0.5.3 with a number of different absolute error tolerances. Errors due to compression can be determined by comparing these reconstructed files to the original CESM-LENS timeseries data, and statistical methods can evaluate the errors at different spatiotemporal scales. While both compression algorithms show promising fidelity with the original output, detectable artifacts are introduced even at relatively tight error tolerances.

DOI
https://doi.org/10.5065/5sqy-zf23
Download Data and Documentation
44 Files, 91.44 GB Total Size

Individual Files - View, select, and download individual files from this Dataset.

Zip File - Download a ZIP file containing all files.

Python script - Download all files via Python 3, preferred for all operating systems.

Wget shell script - Download all files using Wget, preferred for Linux.

Curl shell script - Download all files via Curl, preferred for MacOS.

Temporal Range
1920-01-01 to 2005-12-31
Spatial Resolution
1.0 degreesLatitude
1.0 degreesLongitude
Related Links
N/A
GCMD Science Keywords
  • Data Management/Data Handling > Data Compression
  • Models > Atmospheric General Circulation Models
File Media Types
  • application/x-hdf
  • text/plain
Support Contact
Allison Baker
UCAR/NCAR - Computational and Information Systems Laboratory
abaker@ucar.edu

Data Curator
GDEX Curator
UCAR/NCAR - GDEX
datahelp@ucar.edu

Legal Constraints
Creative Commons Attribution 4.0 International License.
Access Constraints
None
Full Metadata
DIF XML
ISO19139 XML
OAI DC
JSON-LD
Version History
1.0

Latitude Range
90.0° N to 90.0° S
Longitude Range
180.0° W to 180.0° E
Authors
Baker, Allison H
Hammerling, Dorit M
Publisher
UCAR/NCAR - GDEX

Suggested Citation
Baker, Allison H, Hammerling, Dorit M. (2020). A Statistical Analysis of Lossily Compressed CESM-LENS Data. Version 1.0. UCAR/NCAR - GDEX. https://doi.org/10.5065/5sqy-zf23. Accessed 08 Nov 2024.
Downloads
310
Download Volume
98.19 GB Total