DocumentCode
3717352
Title
Climate model diagnostic analyzer
Author
Seungwon Lee;Lei Pan;Chengxing Zhai;Benyang Tang;Terry Kubar;Jia Zhang;Wei Wang
Author_Institution
Jet Propulsion Laboratory, California Institute of Technology, Pasadena, CA U.S.A.
fYear
2015
Firstpage
1948
Lastpage
1952
Abstract
The comprehensive and innovative evaluation of climate models with newly available global observations is critically needed for the improvement of climate model current-state representation and future-state predictability. A climate model diagnostic evaluation process requires physics-based multi-variable analyses that typically involve large-volume and heterogeneous datasets, making them both computation- and data-intensive. With an exploratory nature of climate data analyses and an explosive growth of datasets and service tools, scientists are struggling to keep track of their datasets, tools, and execution/study history, let alone sharing them with others. In response, we have developed a cloud-enabled, provenance-supported, web-service system called Climate Model Diagnostic Analyzer (CMDA). CMDA enables the physics-based, multivariable model performance evaluations and diagnoses through the comprehensive and synergistic use of multiple observational data, reanalysis data, and model outputs. At the same time, CMDA provides a crowdsourcing space where scientists can organize their work efficiently and share their work with others. CMDA is empowered by many current state-of-the-art software packages in web service, provenance, and semantic search.
Keywords
"Meteorology","Web services","Clouds","Data models","Input variables","Semantics","Probability density function"
Publisher
ieee
Conference_Titel
Big Data (Big Data), 2015 IEEE International Conference on
Type
conf
DOI
10.1109/BigData.2015.7363973
Filename
7363973
Link To Document