Abstract:
Ensemble sensitivity analysis (ESA) has been established in the atmospheric sciences as a correlation-based approach to determine the sensitivity of a scalar forecast qua...Show MoreMetadata
Abstract:
Ensemble sensitivity analysis (ESA) has been established in the atmospheric sciences as a correlation-based approach to determine the sensitivity of a scalar forecast quantity computed by a numerical weather prediction model to changes in another model variable at a different model state. Its applications include determining the origin of forecast errors and placing targeted observations to improve future forecasts. We—a team of visualization scientists and meteorologists—present a visual analysis framework to improve upon current practice of ESA. We support the user in selecting regions to compute a meaningful target forecast quantity by embedding correlation-based grid-point clustering to obtain statistically coherent regions. The evolution of sensitivity features computed via ESA are then traced through time, by integrating a quantitative measure of feature matching into optical-flow-based feature assignment, and displayed by means of a swipe-path showing the geo-spatial evolution of the sensitivities. Visualization of the internal correlation structure of computed features guides the user towards those features robustly predicting a certain weather event. We demonstrate the use of our method by application to real-world 2D and 3D cases that occurred during the 2016 NAWDEX field campaign, showing the interactive generation of hypothesis chains to explore how atmospheric processes sensitive to each other are interrelated.
Published in: IEEE Transactions on Visualization and Computer Graphics ( Volume: 25, Issue: 1, January 2019)
Funding Agency:
Citations are not available for this document.
Cites in Papers - |
Cites in Papers - IEEE (5)
Select All
1.
Alexander Straub, Nikolaos Karadimitriou, Guido Reina, Steffen Frey, Holger Steeb, Thomas Ertl, "Visual Analysis of Displacement Processes in Porous Media using Spatio-Temporal Flow Graphs", IEEE Transactions on Visualization and Computer Graphics, vol.30, no.1, pp.759-769, 2024.
2.
Christoph Neuhauser, Josef Stumpfegger, Rüdiger Westermann, "Adaptive Sampling of 3D Spatial Correlations for Focus+Context Visualization", IEEE Transactions on Visualization and Computer Graphics, vol.30, no.2, pp.1608-1623, 2024.
3.
Emma Nilsson, Jonas Lukasczyk, Wito Engelke, Talha Bin Masood, Gunilla Svensson, Rodrigo Caballero, Christoph Garth, Ingrid Hotz, "Exploring Cyclone Evolution with Hierarchical Features", 2022 Topological Data Analysis and Visualization (TopoInVis), pp.92-102, 2022.
4.
Gleb Tkachev, Steffen Frey, Thomas Ertl, "S4: Self-Supervised Learning of Spatiotemporal Similarity", IEEE Transactions on Visualization and Computer Graphics, vol.28, no.12, pp.4713-4727, 2022.
5.
Juraj Palenik, Thomas Spengler, Helwig Hauser, "IsoTrotter: Visually Guided Empirical Modelling of Atmospheric Convection", IEEE Transactions on Visualization and Computer Graphics, vol.27, no.2, pp.775-784, 2021.
Cites in Papers - Other Publishers (14)
1.
Mai Dahshan, Nicholas Polys, Leanna House, Chris North, Ryan M. Pollyea, Terece L. Turton, David H. Rogers, "Human–machine partnerships at the exascale: exploring simulation ensembles through image databases", Journal of Visualization, 2024.
2.
BABITHA GEORGE, Govindan Kutty, , 2023.
3.
Ji Ma, Jinjin Chen, Chang Yang, "Using optimized gaussian mixture model rules and global tracking graph for feature extraction and tracking in time-varying data", The Visual Computer, 2022.
4.
Christopher Kappe, Michael Böttinger, Heike Leitte, "Topology-based feature analysis of scalar field ensembles: An application to climate (change) analysis", Computers & Graphics, vol.104, pp.59, 2022.
5.
Steffen Frey, Stefan Scheller, Nikolaos Karadimitriou, Dongwon Lee, Guido Reina, Holger Steeb, Thomas Ertl, "Visual Analysis of Two?Phase Flow Displacement Processes in Porous Media", Computer Graphics Forum, vol.41, no.1, pp.243, 2022.
6.
Alexandra Diehl, Rodrigo Pelorosso, Juan Ruiz, Renato Pajarola, M. Eduard Groller, Stefan Bruckner, "Hornero: Thunderstorms Characterization using Visual Analytics", Computer Graphics Forum, vol.40, no.3, pp.299, 2021.
7.
Hamid Gadirov, Gleb Tkachev, Thomas Ertl, Steffen Frey, "Evaluation and Selection of Autoencoders for Expressive Dimensionality Reduction of Spatial Ensembles", Advances in Visual Computing, vol.13017, pp.222, 2021.
8.
Marina Evers, Karim Huesmann, Lars Linsen, "Uncertainty‐aware Visualization of Regional Time Series Correlation in Spatio‐temporal Ensembles", Computer Graphics Forum, vol.40, no.3, pp.519, 2021.
9.
Zhihui Bai, Yubo Tao, Hai Lin, "Time-varying volume visualization: a survey", Journal of Visualization, vol.23, no.5, pp.745, 2020.
10.
Tobias Kremer, Elmar Schömer, Christian Euler, Michael Riemer, "Cluster Analysis Tailored to Structure Change of Tropical Cyclones Using a Very Large Number of Trajectories", Monthly Weather Review, vol.148, no.10, pp.4209, 2020.
11.
S. Afzal, M.M. Hittawe, S. Ghani, T. Jamil, O. Knio, M. Hadwiger, I. Hoteit, "The State of the Art in Visual Analysis Approaches for Ocean and Atmospheric Datasets", Computer Graphics Forum, vol.38, no.3, pp.881, 2019.
12.
Cui Xie, Mingkui Li, Haoying Wang, Junyu Dong, "A survey on visual analysis of ocean data", Visual Informatics, vol.3, no.3, pp.113, 2019.
13.
Marlene Baumgart, Michael Riemer, "Processes governing the amplification of ensemble spread in a medium‐range forecast with large forecast uncertainty", Quarterly Journal of the Royal Meteorological Society, vol.145, no.724, pp.3252, 2019.
14.
Julia H. Keller, Christian M. Grams, Michael Riemer, Heather M. Archambault, Lance Bosart, James D. Doyle, Jenni L. Evans, Thomas J. Galarneau, Kyle Griffin, Patrick A. Harr, Naoko Kitabatake, Ron McTaggart-Cowan, Florian Pantillon, Julian F. Quinting, Carolyn A. Reynolds, Elizabeth A. Ritchie, Ryan D. Torn, Fuqing Zhang, " The Extratropical Transition of Tropical Cyclones. Part II: Interaction with the Midlatitude Flow, Downstream Impacts, and Implications for Predictability", Monthly Weather Review, vol.147, no.4, pp.1077, 2019.