In the fields of science and engineering, it is common to run hundreds of simulations to investigate the dependence of the modeled process on various simulation and input the parameters. We propose a comprehensive approach for the visual analysis of such multi-run data to detect patterns and outliers. We use dimensionality reduction algorithms to generate a visual representation that exhibits the distribution of the simulation results under varying parameter settings. Each field (or even multi-field) of every time step and every simulation run is represented as a point in a 2D space, where the 2D layout conveys similarity of the scalar fields. Points corresponding to consecutive time steps of one run are connected by line segments, su...
The visualization of simulation trajectories is a well-established approach to analyze simulated pro...
Modern supercomputers enable domain scientists to conduct simulations by solving dynamic systems of ...
In physics we often encounter high-dimensional data, in the form of multivariate measurements or of ...
In the fields of science and engineering, it is common to run hundreds of simulations to investigate...
Physical simulations aim at modeling and computing spatio-temporal phenomena. As the simulations dep...
Visualization plays an important role in exploring, analyzing and presenting large and heterogeneous...
In this project, we introduce a visualization technique to analyze event simulation data. In particu...
Our perceptive of the scientific datasets has largely relied on numerical and statistical analysis o...
Data from present day scientific simulations and observations of physical processes often consist of...
Our perceptive of the scientific datasets has largely relied on numerical and statistical analysis o...
Scientific computational simulations are increasing rapidly in capability and scale, producing massi...
AbstractThe use of increasingly sophisticated means to simulate and observe natural phenomena has le...
The simulation of complex events is a challenging task and often requires careful selection of simul...
As datasets grow in size and complexity, the importance of comparison as a tool for analysis is grow...
Large-scale simulations are increasingly being used to study complex scientific and engineering phen...
The visualization of simulation trajectories is a well-established approach to analyze simulated pro...
Modern supercomputers enable domain scientists to conduct simulations by solving dynamic systems of ...
In physics we often encounter high-dimensional data, in the form of multivariate measurements or of ...
In the fields of science and engineering, it is common to run hundreds of simulations to investigate...
Physical simulations aim at modeling and computing spatio-temporal phenomena. As the simulations dep...
Visualization plays an important role in exploring, analyzing and presenting large and heterogeneous...
In this project, we introduce a visualization technique to analyze event simulation data. In particu...
Our perceptive of the scientific datasets has largely relied on numerical and statistical analysis o...
Data from present day scientific simulations and observations of physical processes often consist of...
Our perceptive of the scientific datasets has largely relied on numerical and statistical analysis o...
Scientific computational simulations are increasing rapidly in capability and scale, producing massi...
AbstractThe use of increasingly sophisticated means to simulate and observe natural phenomena has le...
The simulation of complex events is a challenging task and often requires careful selection of simul...
As datasets grow in size and complexity, the importance of comparison as a tool for analysis is grow...
Large-scale simulations are increasingly being used to study complex scientific and engineering phen...
The visualization of simulation trajectories is a well-established approach to analyze simulated pro...
Modern supercomputers enable domain scientists to conduct simulations by solving dynamic systems of ...
In physics we often encounter high-dimensional data, in the form of multivariate measurements or of ...