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High-Speed Visualization of Time-Varying Data in Large-Scale Structural Dynamic Analyses with a GPU

机译:使用GPU在大规模结构动态分析中对时变数据进行高速可视化

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摘要

Large-scale structural dynamic analyses generally produce massive amount of time-varying data. Inefficient rendering of these data seriously affects the quality of display of and user interaction with the analysis results. A high-speed visualization solution using a GPU (graphics processing unit) is thus developed in this study. Based on the clustering concept, a key frame extraction algorithm specific to the GPU-based rendering is proposed, which significantly reduces the data size to satisfy the GPU memory requirement. Using the key frames, a GPU-based parallel frame interpolation algorithm is also proposed to reconstruct the complete structural dynamic process. Particularly, a novel data access model considering the features of time-varying data and GPU memory is designed to improve the interpolation efficiency. Two case studies including an arch bridge and a high-rise building are presented, confirming the ability of the proposed solution to provide a high-speed and interactive visualization environment for large-scale structural dynamic analyses.
机译:大型结构动力分析通常会产生大量随时间变化的数据。这些数据的低效渲染严重影响了分析结果的显示质量以及用户与分析结果的交互。因此,在这项研究中开发了使用GPU(图形处理单元)的高速可视化解决方案。基于聚类的概念,提出了一种特定于基于GPU的渲染的关键帧提取算法,该算法可显着减小数据大小,从而满足GPU内存需求。利用关键帧,还提出了基于GPU的并行帧插值算法,以重构完整的结构动力过程。特别是,设计了一种考虑时变数据和GPU内存特征的新颖数据访问模型,以提高插值效率。提出了两个案例研究,包括拱桥和高层建筑,这证实了所提出的解决方案能够为大规模结构动力分析提供高速和交互式可视化环境的能力。

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