Ensemble-Vis: A Framework for the Statistical Visualization of Ensemble Data

Miami, FL(2009)

Cited 256|Views1
No score
Abstract
Scientists increasingly use ensemble data sets to explore relationships present in dynamic systems. Ensemble data sets combine spatio-temporal simulation results generated using multiple numerical models, sampled input conditions and perturbed parameters. While ensemble data sets are a powerful tool for mitigating uncertainty, they pose significant visualization and analysis challenges due to their complexity. In this article, we present Ensemble-Vis, a framework consisting of a collection of overview and statistical displays linked through a high level of interactivity. Ensemble-Vis allows scientists to gain key scientific insight into the distribution of simulation results as well as the uncertainty associated with the scientific data. In contrast to methods that present large amounts of diverse information in a single display, we argue that combining multiple linked displays yields a clearer presentation of the data and facilitates a greater level of visual data analysis. We demonstrate our framework using driving problems from climate modeling and meteorology and discuss generalizations to other fields.
More
Translated text
Key words
displays yield,present large amount,present ensemble-vis,greater level,key scientific insight,ensemble data set,scientific data,high level,statistical visualization,ensemble data,visual data analysis,uncertainty,data analysis,computational modeling,climate model,dynamic system,dynamic systems,data models,climate modeling,data visualization,data visualisation,meteorology
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined