快速洞察高维参数化仿真数据

D. Butnaru, B. Peherstorfer, H. Bungartz, D. Pflüger
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引用次数: 9

摘要

在大多数工业产品开发过程中,数值模拟已经成为一种不可避免的工具,模拟被用来理解设计决策(参数配置)对产品结构和性能的影响。然而,为了允许工程师彻底探索设计空间和微调参数,许多(通常非常耗时)模拟运行是必要的。此外,如果没有适当工具的支持,就无法以有效的方式分析大量数据。在本文中,我们解决了两个问题:首先,如果参数配置发生变化,立即提供仿真结果;其次,确定设计空间中变化集中的特定区域,从而确定其重要性。我们建议使用基于稀疏网格插值或回归的分层方法,作为模拟的有效而廉价的替代品。此外,我们还基于层次基础中固有的衍生信息开发了新的视觉表示。它们可以直观地让用户识别有趣的参数区域,即使是在更高维度的设置中。该工作流结合在交互式可视化和探索框架中。我们讨论了来自计算科学和工程不同领域的例子,并展示了基于稀疏网格的技术如何使参数依赖性变得明显,以及如何使用它们来微调参数配置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Insight into High-Dimensional Parametrized Simulation Data
Numerical simulation has become an inevitable tool in most industrial product development processes with simulations being used to understand the influence of design decisions (parameter configurations) on the structure and properties of the product. However, in order to allow the engineer to thoroughly explore the design space and fine-tune parameters, many -- usually very time-consuming -- simulation runs are necessary. Additionally, this results in a huge amount of data that cannot be analyzed in an efficient way without the support of appropriate tools. In this paper, we address the two-fold problem: First, instantly provide simulation results if the parameter configuration is changed, and, second, identify specific areas of the design space with concentrated change and thus importance. We propose the use of a hierarchical approach based on sparse grid interpolation or regression which acts as an efficient and cheap substitute for the simulation. Furthermore, we develop new visual representations based on the derivative information contained inherently in the hierarchical basis. They intuitively let a user identify interesting parameter regions even in higher-dimensional settings. This workflow is combined in an interactive visualization and exploration framework. We discuss examples from different fields of computational science and engineering and show how our sparse-grid-based techniques make parameter dependencies apparent and how they can be used to fine-tune parameter configurations.
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