Enhancing Elasticity Models: A Novel Corrective Source Term Approach for Accurate Predictions
With the recent wave of digitalization, specifically in the context of safety-critical applications, there has been a growing need for computationally efficient, accurate, generalizable, and trustworthy models. Physics-based models have traditionally been used extensively for simulating and understa...
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Zusammenfassung: | With the recent wave of digitalization, specifically in the context of
safety-critical applications, there has been a growing need for computationally
efficient, accurate, generalizable, and trustworthy models. Physics-based
models have traditionally been used extensively for simulating and
understanding complex phenomena. However, these models though trustworthy and
generalizable to a wide array of problems, are not ideal for real-time. To
address this issue, the physics-based models are simplified. Unfortunately,
these simplifications, like reducing the dimension of the problem (3D to 2D) or
linearizing the highly non-linear characteristics of the problem, can degrade
model accuracy. Data-driven models, on the other hand, can exhibit better
computational efficiency and accuracy. However, they fail to generalize and
operate as blackbox, limiting their acceptability in safety-critical
applications. In the current article, we demonstrate how we can use a
data-driven approach to correct for the two kinds of simplifications in a
physics-based model. To demonstrate the methodology's effectiveness, we apply
the method to model several elasticity problems. The results show that the
hybrid approach, which we call the corrective source term approach, can make
erroneous physics-based models more accurate and certain. The hybrid model also
exhibits superior performance in terms of accuracy, model uncertainty, and
generalizability when compared to its end-to-end data-driven modeling
counterpart. |
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DOI: | 10.48550/arxiv.2309.10181 |