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CECAV-DNN: Collective Ensemble Comparison and Visualization using Deep Neural Networks

机译:CECAV-DNN:使用深神经网络的集体合奏比较和可视化

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摘要

We propose a deep learning approach to collectively compare two or multiple ensembles, each of which is a collection of simulation outputs. The purpose of collective comparison is to help scientists understand differences between simulation models by comparing their ensemble simulation outputs. However, the collective comparison is non-trivial because the spatiotemporal distributions of ensemble simulation outputs reside in a very high dimensional space. To this end, we choose to train a deep discriminative neural network to measure the dissimilarity between two given ensembles, and to identify when and where the two ensembles are different. We also design and develop a visualization system to help users understand the collective comparison results based on the discriminative network. We demonstrate the effectiveness of our approach with two real-world applications, including the ensemble comparison of the community atmosphere model (CAM) and the rapid radiative transfer model for general circulation models (RRTMG) for climate research, and the comparison of computational fluid dynamics (CFD) ensembles with different spatial resolutions.
机译:我们提出了一种深入的学习方法来集体比较两个或多个集合,每个集合是一系列仿真输出。集体比较的目的是帮助科学家通过比较它们的集合仿真输出来了解模拟模型之间的差异。然而,集体比较是非琐碎的,因为集合仿真输出的时空分布驻留在一个非常高的尺寸空间中。为此,我们选择培训深度鉴别的神经网络来测量两个给定的合奏之间的不相似性,并识别两种集合不同的时间和地点。我们还设计和开发可视化系统,以帮助用户了解基于鉴别网络的集体比较结果。我们展示了我们对两个现实世界应用的方法的有效性,包括社区氛围模型(CAM)的集合比较,以及用于气候研究的一般循环模型(RRTMG)的快速辐射转移模型,以及计算流体动力学的比较(CFD)与不同的空间分辨率合并。

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