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Nonlinear Regression Operating on Microstructures Described from Topological Data Analysis for the Real-Time Prediction of Effective Properties

机译:基于拓扑数据分析的微观结构上的非线性回归用于有效特性的实时预测

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摘要

Real-time decision making needs evaluating quantities of interest (QoI) in almost real time. When these QoI are related to models based on physics, the use of Model Order Reduction techniques allows speeding-up calculations, enabling fast and accurate evaluations. To accommodate real-time constraints, a valuable route consists of computing parametric solutions—the so-called computational vademecums—that constructed off-line, can be inspected on-line. However, when dealing with shapes and topologies (complex or rich microstructures) their parametric description constitutes a major difficulty. In this paper, we propose using Topological Data Analysis for describing those rich topologies and morphologies in a concise way, and then using the associated topological descriptions for generating accurate supervised classification and nonlinear regression, enabling an almost real-time evaluation of QoI and the associated decision making.
机译:实时决策需要几乎实时地评估兴趣量(QoI)。当这些QoI与基于物理的模型相关时,使用模型降阶技术可以加快计算速度,从而实现快速准确的评估。为了适应实时约束,一条有价值的路线是由离线构建的计算参数解决方案(即所谓的计算变量)组成,可以进行在线检查。但是,当处理形状和拓扑(复杂或丰富的微观结构)时,其参数描述构成了主要困难。在本文中,我们建议使用“拓扑数据分析”以简明的方式描述那些丰富的拓扑和形态,然后使用相关的拓扑描述生成精确的监督分类和非线性回归,从而实现对QoI和相关参数的几乎实时评估做决定。

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