TwinLab: a framework for data-efficient training of non-intrusive reduced-order models for digital twins
Maximilian Kannapinn, Michael Sch\"afer, Oliver Weeger

TL;DR
TwinLab offers a novel framework for efficiently training accurate neural-ODE reduced-order models for digital twins using minimal data, significantly reducing training time and computational costs.
Contribution
It introduces a data-efficient training method that uses only two datasets and a systematic approach to select the second dataset for improved model accuracy.
Findings
Adding a second, dissimilar dataset reduces test error by up to 49%.
Prediction speed-ups of up to 36,000 times are achieved.
The framework is independent of simulation software and automates model extraction.
Abstract
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…
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Taxonomy
MethodsSparse Evolutionary Training · Balanced Selection
