Honorable Mention

ProWis: A Visual Approach for Building, Managing, and Analyzing Weather Simulation Ensembles at Runtime

Carolina Veiga Ferreira de Souza, Suzanna Maria Bonnet, Daniel de Oliveira, Marcio Cataldi, Fabio Miranda, Marcos Lage

Room: 103

2023-10-25T22:36:00ZGMT-0600Change your timezone on the schedule page
2023-10-25T22:36:00Z
Exemplar figure, described by caption below
We present the Provenance-enabled Weather Visualization (ProWis) system, a visual analytics system to assist weather professionals to work with the Weather Research and Forecasting model (WRF). The interactive and provenance-oriented system was designed to help weather experts build, manage, and analyze simulation ensembles at runtime. Our system follows a human-in-the-loop approach to enable the exploration of multiple atmospheric variables and weather scenarios. In collaboration with weather experts, we demonstrate its effectiveness by presenting two case studies of rainfall events in Brazil.
Fast forward
Full Video
Keywords

Weather visualization, Ensemble visualization, Provenance management, WRF visual setup

Abstract

Weather forecasting is essential for decision-making and is usually performed using numerical modeling. Numerical weather models, in turn, are complex tools that require specialized training and laborious setup and are challenging even for weather experts. Moreover, weather simulations are data-intensive computations and may take hours to days to complete. When the simulation is finished, the experts face challenges analyzing its outputs, a large mass of spatiotemporal and multivariate data. From the simulation setup to the analysis of results, working with weather simulations involves several manual and error-prone steps. The complexity of the problem increases exponentially when the experts must deal with ensembles of simulations, a frequent task in their daily duties. To tackle these challenges, we propose ProWis: an interactive and provenance-oriented system to help weather experts build, manage, and analyze simulation ensembles at runtime. Our system follows a human-in-the-loop approach to enable the exploration of multiple atmospheric variables and weather scenarios. ProWis was built in close collaboration with weather experts, and we demonstrate its effectiveness by presenting two case studies of rainfall events in Brazil.