TwinLab:数字双胞胎非侵入式降阶模型的数据高效训练框架

IF 1.5 4区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Engineering Computations Pub Date : 2024-07-05 DOI:10.1108/ec-11-2023-0855
Maximilian Kannapinn, Michael Schäfer, Oliver Weeger
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引用次数: 0

摘要

目的 以仿真为基础的数字孪生代表着一种努力,为操作物理过程提供高精度的实时洞察。然而,许多多物理仿真模型的计算时间远非实时。它甚至可能超过合理的时间范围,无法产生足够的数据来训练数据驱动的低阶模型。本研究提出了 TwinLab,这是一个仅用两组数据就能高效、准确地训练神经-ODE 类型降阶模型的框架。研究结果在训练过程中添加合适的第二组训练数据,与仅用一组数据训练的最佳基础降阶模型相比,测试误差最多可减少 49%。这样的第二组训练数据至少应能产生一个良好的降阶模型,并在各自的激励信号方面与基础训练数据集表现出更高的相似度。此外,基础降阶模型在第二组数据上的测试误差也应增大。时间序列的相对误差在 0.18% 到 0.49% 之间。原创性/价值所提出的计算框架有助于从现有的仿真模型中自动、高效地提取数字双胞胎的非侵入式降阶模型,且不受仿真软件的影响。
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TwinLab: a framework for data-efficient training of non-intrusive reduced-order models for digital twins

Purpose

Simulation-based digital twins represent an effort to provide high-accuracy real-time insights into operational physical processes. However, the computation time of many multi-physical simulation models is far from real-time. It might even exceed sensible time frames to produce sufficient data for training data-driven reduced-order models. This study presents TwinLab, a framework for data-efficient, yet accurate training of neural-ODE type reduced-order models with only two data sets.

Design/methodology/approach

Correlations between test errors of reduced-order models and distinct features of corresponding training data are investigated. Having found the single best data sets for training, a second data set is sought with the help of similarity and error measures to enrich the training process effectively.

Findings

Adding a suitable second training data set in the training process reduces the test error by up to 49% compared to the best base reduced-order model trained only with one data set. Such a second training data set should at least yield a good reduced-order model on its own and exhibit higher levels of dissimilarity to the base training data set regarding the respective excitation signal. Moreover, the base reduced-order model should have elevated test errors on the second data set. The relative error of the time series ranges from 0.18% to 0.49%. Prediction speed-ups of up to a factor of 36,000 are observed.

Originality/value

The proposed computational framework facilitates the automated, data-efficient extraction of non-intrusive reduced-order models for digital twins from existing simulation models, independent of the simulation software.

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来源期刊
Engineering Computations
Engineering Computations 工程技术-工程:综合
CiteScore
3.40
自引率
6.20%
发文量
61
审稿时长
5 months
期刊介绍: The journal presents its readers with broad coverage across all branches of engineering and science of the latest development and application of new solution algorithms, innovative numerical methods and/or solution techniques directed at the utilization of computational methods in engineering analysis, engineering design and practice. For more information visit: http://www.emeraldgrouppublishing.com/ec.htm
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