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spelling todo:paper_01677055_v36_n7_p135_Diehl2023-10-03T15:05:12Z Albero: A Visual Analytics Approach for Probabilistic Weather Forecasting Diehl, A. Pelorosso, L. Delrieux, C. Matković, K. Ruiz, J. Gröller, M.E. Bruckner, S. Categories and Subject Descriptors (according to ACM CCS) I.3.3 [Computer Graphics]: Picture/Image Generation—Viewing algorithms I.3.6 [Computer Graphics]: Methodology and Techniques—Interaction techniques I.3.8 [Computer Graphics]: Applications—Probabilistic Weather Forecasting Computer graphics Decision making Forecasting Numerical methods Quality control Regression analysis Uncertainty analysis Visualization Analysis capabilities Descriptors Forecast uncertainty Interaction techniques Probabilistic forecasts Probabilistic weather forecasting Statistical information Viewing algorithms Weather forecasting Probabilistic weather forecasts are amongst the most popular ways to quantify numerical forecast uncertainties. The analog regression method can quantify uncertainties and express them as probabilities. The method comprises the analysis of errors from a large database of past forecasts generated with a specific numerical model and observational data. Current visualization tools based on this method are essentially automated and provide limited analysis capabilities. In this paper, we propose a novel approach that breaks down the automatic process using the experience and knowledge of the users and creates a new interactive visual workflow. Our approach allows forecasters to study probabilistic forecasts, their inner analogs and observations, their associated spatial errors, and additional statistical information by means of coordinated and linked views. We designed the presented solution following a participatory methodology together with domain experts. Several meteorologists with different backgrounds validated the approach. Two case studies illustrate the capabilities of our solution. It successfully facilitates the analysis of uncertainty and systematic model biases for improved decision-making and process-quality measurements. © 2017 The Author(s) Computer Graphics Forum © 2017 The Eurographics Association and John Wiley & Sons Ltd. Published by John Wiley & Sons Ltd. JOUR info:eu-repo/semantics/openAccess http://creativecommons.org/licenses/by/2.5/ar http://hdl.handle.net/20.500.12110/paper_01677055_v36_n7_p135_Diehl
institution Universidad de Buenos Aires
institution_str I-28
repository_str R-134
collection Biblioteca Digital - Facultad de Ciencias Exactas y Naturales (UBA)
topic Categories and Subject Descriptors (according to ACM CCS)
I.3.3 [Computer Graphics]: Picture/Image Generation—Viewing algorithms
I.3.6 [Computer Graphics]: Methodology and Techniques—Interaction techniques
I.3.8 [Computer Graphics]: Applications—Probabilistic Weather Forecasting
Computer graphics
Decision making
Forecasting
Numerical methods
Quality control
Regression analysis
Uncertainty analysis
Visualization
Analysis capabilities
Descriptors
Forecast uncertainty
Interaction techniques
Probabilistic forecasts
Probabilistic weather forecasting
Statistical information
Viewing algorithms
Weather forecasting
spellingShingle Categories and Subject Descriptors (according to ACM CCS)
I.3.3 [Computer Graphics]: Picture/Image Generation—Viewing algorithms
I.3.6 [Computer Graphics]: Methodology and Techniques—Interaction techniques
I.3.8 [Computer Graphics]: Applications—Probabilistic Weather Forecasting
Computer graphics
Decision making
Forecasting
Numerical methods
Quality control
Regression analysis
Uncertainty analysis
Visualization
Analysis capabilities
Descriptors
Forecast uncertainty
Interaction techniques
Probabilistic forecasts
Probabilistic weather forecasting
Statistical information
Viewing algorithms
Weather forecasting
Diehl, A.
Pelorosso, L.
Delrieux, C.
Matković, K.
Ruiz, J.
Gröller, M.E.
Bruckner, S.
Albero: A Visual Analytics Approach for Probabilistic Weather Forecasting
topic_facet Categories and Subject Descriptors (according to ACM CCS)
I.3.3 [Computer Graphics]: Picture/Image Generation—Viewing algorithms
I.3.6 [Computer Graphics]: Methodology and Techniques—Interaction techniques
I.3.8 [Computer Graphics]: Applications—Probabilistic Weather Forecasting
Computer graphics
Decision making
Forecasting
Numerical methods
Quality control
Regression analysis
Uncertainty analysis
Visualization
Analysis capabilities
Descriptors
Forecast uncertainty
Interaction techniques
Probabilistic forecasts
Probabilistic weather forecasting
Statistical information
Viewing algorithms
Weather forecasting
description Probabilistic weather forecasts are amongst the most popular ways to quantify numerical forecast uncertainties. The analog regression method can quantify uncertainties and express them as probabilities. The method comprises the analysis of errors from a large database of past forecasts generated with a specific numerical model and observational data. Current visualization tools based on this method are essentially automated and provide limited analysis capabilities. In this paper, we propose a novel approach that breaks down the automatic process using the experience and knowledge of the users and creates a new interactive visual workflow. Our approach allows forecasters to study probabilistic forecasts, their inner analogs and observations, their associated spatial errors, and additional statistical information by means of coordinated and linked views. We designed the presented solution following a participatory methodology together with domain experts. Several meteorologists with different backgrounds validated the approach. Two case studies illustrate the capabilities of our solution. It successfully facilitates the analysis of uncertainty and systematic model biases for improved decision-making and process-quality measurements. © 2017 The Author(s) Computer Graphics Forum © 2017 The Eurographics Association and John Wiley & Sons Ltd. Published by John Wiley & Sons Ltd.
format JOUR
author Diehl, A.
Pelorosso, L.
Delrieux, C.
Matković, K.
Ruiz, J.
Gröller, M.E.
Bruckner, S.
author_facet Diehl, A.
Pelorosso, L.
Delrieux, C.
Matković, K.
Ruiz, J.
Gröller, M.E.
Bruckner, S.
author_sort Diehl, A.
title Albero: A Visual Analytics Approach for Probabilistic Weather Forecasting
title_short Albero: A Visual Analytics Approach for Probabilistic Weather Forecasting
title_full Albero: A Visual Analytics Approach for Probabilistic Weather Forecasting
title_fullStr Albero: A Visual Analytics Approach for Probabilistic Weather Forecasting
title_full_unstemmed Albero: A Visual Analytics Approach for Probabilistic Weather Forecasting
title_sort albero: a visual analytics approach for probabilistic weather forecasting
url http://hdl.handle.net/20.500.12110/paper_01677055_v36_n7_p135_Diehl
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AT delrieuxc alberoavisualanalyticsapproachforprobabilisticweatherforecasting
AT matkovick alberoavisualanalyticsapproachforprobabilisticweatherforecasting
AT ruizj alberoavisualanalyticsapproachforprobabilisticweatherforecasting
AT grollerme alberoavisualanalyticsapproachforprobabilisticweatherforecasting
AT bruckners alberoavisualanalyticsapproachforprobabilisticweatherforecasting
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