An Interactive Framework for Visualization of Weather Forecast Ensembles.

Bo Ma, Alireza Entezari
Author Information

Abstract

Numerical Weather Prediction (NWP) ensembles are commonly used to assess the uncertainty and confidence in weather forecasts. Spaghetti plots are conventional tools for meteorologists to directly examine the uncertainty exhibited by ensembles, where they simultaneously visualize isocontours of all ensemble members. To avoid visual clutter in practical usages, one needs to select a small number of informative isovalues for visual analysis. Moreover, due to the complex topology and variation of ensemble isocontours, it is often a challenging task to interpret the spaghetti plot for even a single isovalue in large ensembles. In this paper, we propose an interactive framework for uncertainty visualization of weather forecast ensembles that significantly improves and expands the utility of spaghetti plots in ensemble analysis. Complementary to state-of-the-art methods, our approach provides a complete framework for visual exploration of ensemble isocontours, including isovalue selection, interactive isocontour variability exploration, and interactive sub-region selection and re-analysis. Our framework is built upon the high-density clustering paradigm, where the mode structure of the density function is represented as a hierarchy of nested subsets of the data. We generalize the high-density clustering for isocontours and propose a bandwidth selection method for estimating the density function of ensemble isocontours. We present novel visualizations based on high-density clustering results, called the mode plot and the simplified spaghetti plot. The proposed mode plot visually encodes the structure provided by the high-density clustering result and summarizes the distribution of ensemble isocontours. It also enables the selection of subsets of interesting isocontours, which are interactively highlighted in a linked spaghetti plot for providing spatial context. To provide an interpretable overview of the positional variability of isocontours, our system allows for selection of informative isovalues from the simplified spaghetti plot. Due to the spatial variability of ensemble isocontours, the system allows for interactive selection and focus on sub-regions for local uncertainty and clustering re-analysis. We examine a number of ensemble datasets to establish the utility of our approach and discuss its advantages over state-of-the-art visual analysis tools for ensemble data.

Word Cloud

Created with Highcharts 10.0.0isocontoursensembleplotselectionspaghetticlusteringensemblesuncertaintyvisualinteractivehigh-densityanalysisframeworkvariabilitymodeWeatherweatherplotstoolsexaminenumberinformativeisovaluesisovalueproposeutilitystate-of-the-artapproachexplorationre-analysisstructuredensityfunctionsubsetsdatasimplifiedspatialsystemallowsNumericalPredictionNWPcommonlyusedassessconfidenceforecastsSpaghetticonventionalmeteorologistsdirectlyexhibitedsimultaneouslyvisualizemembersavoidclutterpracticalusagesoneneedsselectsmallMoreoverduecomplextopologyvariationoftenchallengingtaskinterpretevensinglelargepapervisualizationforecastsignificantlyimprovesexpandsComplementarymethodsprovidescompleteincludingisocontoursub-regionbuiltuponparadigmrepresentedhierarchynestedgeneralizebandwidthmethodestimatingpresentnovelvisualizationsbasedresultscalledproposedvisuallyencodesprovidedresultsummarizesdistributionalsoenablesinterestinginteractivelyhighlightedlinkedprovidingcontextprovideinterpretableoverviewpositionalDuefocussub-regionslocaldatasetsestablishdiscussadvantagesInteractiveFrameworkVisualizationForecastEnsembles

Similar Articles

Cited By