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Complete Deep Computer-Vision Methodology for Investigating Hydrodynamic Instabilities

机译:完整的深层计算机视觉方法,用于调查水动力稳定性

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In fluid dynamics, one of the most important research fields is hydrodynamic instabilities and their evolution in different flow regimes. The investigation of said instabilities is concerned with highly non-linear dynamics. Currently, three main methods are used for understanding of such phenomena - namely analytical and statistical models, experiments, and simulations - and all of them are primarily investigated and correlated using human expertise. This work demonstrates how a major portion of this research effort could and should be analysed using recent breakthrough advancements in the field of Computer Vision with Deep Learning (CVDL, or Deep Computer-Vision). Specifically, this work targets and evaluates specific state-of-the-art techniques - such as Image Retrieval, Template Matching, Parameters Regression and Spatiotem-poral Prediction - for the quantitative and qualitative benefits they provide. In order to do so, this research focuses mainly on one of the most representative instabilities, the Rayleigh-Taylor instability (RTI). We include an annotated database of images returned from simulations of RTI (RayleAI). Finally, adjusted experimental results and novel physical loss methodologies were used to validate the correspondence of the predicted results to actual physical reality to evaluate the model efficiency. The techniques which were developed and proved in this work can serve as essential tools for physicists in the field of hydrodynamics for investigating a variety of physical systems. Some of them can be easily applied on already existing simulation results, while others could be used via Transfer Learning to other instabilities research.
机译:在流体动力学中,最重要的研究领域之一是流体动力学稳定性及其在不同流动制度中的演变。对所述不稳定性的调查涉及高度线性动态。目前,三种主要方法用于理解这种现象 - 即分析和统计模型,实验和模拟 - 所有这些都是使用人类专业知识来研究和相关的。这项工作展示了这项研究的主要部分如何,并且应该使用最近的计算机愿景领域与深层学习(CVDL或Deep Computer-Vision)进行分析。具体而言,这项工作目标和评估特定的最先进的技术 - 例如图像检索,模板匹配,参数回归和Spatiotem-Poral预测 - 对于它们提供的定量和定性益处。为此,这项研究主要集中在最具代表性范围之一,瑞利 - 泰勒不稳定(RTI)。我们包括从RTI(Rayleai)的模拟返回的图像的注释数据库。最后,使用调整后的实验结果和新颖的物理损失方法来验证预测结果对实际物理现实的对应关系,以评估模型效率。在这项工作中开发和证明的技术可以作为用于研究各种物理系统的流体动力学领域的物理学家的基本工具。其中一些可以很容易地应用于已经存在的仿真结果,而其他人可以通过转移学习来使用其他稳定性研究。

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