High-Fidelity Digital Twin Data Models by Randomized Dynamic Mode Decomposition and Deep Learning with Applications in Fluid Dynamics

D. Bistrian
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Abstract

The purpose of this paper is the identification of high-fidelity digital twin data models from numerical code outputs by non-intrusive techniques (i.e., not requiring Galerkin projection of the governing equations onto the reduced modes basis). In this paper the author defines the concept of the digital twin data model (DTM) as a model of reduced complexity that has the main feature of mirroring the original process behavior. The significant advantage of a DTM is to reproduce the dynamics with high accuracy and reduced costs in CPU time and hardware for settings difficult to explore because of the complexity of the dynamics over time. This paper introduces a new framework for creating efficient digital twin data models by combining two state-of-the-art tools: randomized dynamic mode decomposition and deep learning artificial intelligence. It is shown that the outputs are consistent with the original source data with the advantage of reduced complexity. The DTMs are investigated in the numerical simulation of three shock wave phenomena with increasing complexity. The author performs a thorough assessment of the performance of the new digital twin data models in terms of numerical accuracy and computational efficiency.
基于随机动态模态分解和深度学习的高保真数字孪生数据模型及其在流体动力学中的应用
本文的目的是通过非侵入式技术(即,不需要将控制方程的伽辽金投影到降模基上)从数值代码输出中识别高保真数字孪生数据模型。在本文中,作者将数字孪生数据模型(DTM)的概念定义为一种降低复杂性的模型,其主要特征是反映原始过程的行为。DTM的显著优势是能够以高精度再现动态,并减少CPU时间和硬件成本,因为动态随着时间的推移而变得复杂,因此难以探索。本文介绍了一个新的框架,通过结合两种最先进的工具:随机动态模式分解和深度学习人工智能,创建高效的数字孪生数据模型。结果表明,该算法的输出结果与原始源数据一致,并且降低了算法的复杂度。在三种日益复杂的激波现象的数值模拟中,研究了dtm。作者在数值精度和计算效率方面对新的数字孪生数据模型的性能进行了全面的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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