A Topological Framework for the Interactive Exploration of Large Scale Turbulent Combustion

P. Bremer, G. Weber, Julien Tierny, Valerio Pascucci, M. Day, J. Bell
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引用次数: 16

Abstract

The advent of highly accurate, large scale volumetric simulations has made data analysis and visualization techniques an integral part of the modern scientific process. To develop new insights from raw data, scientists need the ability to define features of interest in a flexible manner and to understand how changes in the feature definition impact the subsequent analysis of the data. Therefore, simply exploring the raw data is not sufficient. This paper presents a new topological framework for the analysis of large scale, time-varying, turbulent combustion simulations. It allows the scientists to interactively explore the complete parameter space of fuel consumption thresholds for an entire time-dependent combustion simulation. By computing augmented merge trees and their corresponding data segmentations, the system allows the user complete flexibility to segment, select, and track burning cells through time thanks to a linked view interface. We developed this technique in the context of low-swirl turbulent pre-mixed same simulation analysis, where the topological abstractions enable an efficient tracking through time of the burning cells and provide new qualitative and quantitative insights into the dynamics of the combustion process.
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大尺度湍流燃烧相互作用探索的拓扑框架
高精度、大规模体积模拟的出现使得数据分析和可视化技术成为现代科学过程中不可或缺的一部分。为了从原始数据中获得新的见解,科学家需要能够以灵活的方式定义感兴趣的特征,并了解特征定义的变化如何影响随后的数据分析。因此,仅仅探索原始数据是不够的。本文提出了一种新的拓扑框架,用于分析大尺度、时变湍流燃烧模拟。它使科学家能够交互式地探索整个时间相关燃烧模拟的油耗阈值的完整参数空间。通过计算增强合并树及其相应的数据分割,该系统允许用户完全灵活地分割、选择和跟踪燃烧细胞,这要归功于一个链接视图界面。我们在低涡流湍流预混合相同模拟分析的背景下开发了这项技术,其中拓扑抽象能够有效地跟踪燃烧细胞的时间,并为燃烧过程的动力学提供新的定性和定量见解。
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