Visualizing the uncertainty of ensemble simulations is challenging due to the large size and multivariate and temporal features of ensemble data sets. One popular approach to studying the uncertainty of ensembles is analyzing the positional uncertainty of the level sets. Probabilistic marching cubes is a technique that performs Monte Carlo sampling of multivariate Gaussian noise distributions for positional uncertainty visualization of level sets. However, the technique suffers from high computational time, making interactive visualization and analysis impossible to achieve. This paper introduces a deep-learning-based approach to learning the level-set uncertainty for two-dimensional ensemble data with a multivariate Gaussian noise assumption. We train the model using the first few time steps from time-varying ensemble data in our workflow. We demonstrate that our trained model accurately infers uncertainty in level sets for new time steps and is up to 170X faster than that of the original probabilistic model with serial computation and 10X faster than that of the original parallel computation.
翻译:由于组合数据集的大小大且多变性和时间性特点,对共变模拟的不确定性进行可视化是具有挑战性的。研究共变的不确定性的一种流行方法是分析等级组的定位不确定性。概率进化立方体是一种技术,用来对多变高斯的多变噪音分布进行蒙特卡洛取样,用于水平组的定位不确定性可视化。然而,这种技术存在高计算时间,使得互动可视化和分析无法实现。本文引入了一种深层次的学习方法,用多变高斯噪音假设来学习二维共变共变数据的水平定不确定性。我们从我们工作流程中时间变化的共变共变数据的最初几个步骤来培训模型。我们证明,我们经过训练的模型准确地将等级组的不确定性推导出新的时间步骤,比原序列计算概率模型速度快170X,比最初平行计算速度快10X。