CEAISYDSJul 4, 2024

TwinLab: a framework for data-efficient training of non-intrusive reduced-order models for digital twins

arXiv:2407.03924v110 citationsh-index: 9
Originality Incremental advance
AI Analysis

This work addresses the need for real-time insights in digital twins by enabling faster and more accurate reduced-order models, though it is incremental as it builds on existing neural-ODE methods.

The study tackled the problem of slow computation times in simulation-based digital twins by developing TwinLab, a framework for data-efficient training of reduced-order models using only two data sets, which reduced test errors by up to 49% and achieved prediction speed-ups of up to 36,000 times.

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: 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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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