Towards robust prediction of material properties for nuclear reactor design under scarce data -- a study in creep rupture property
Advances in Deep Learning bring further investigation into credibility and robustness, especially for safety-critical engineering applications such as the nuclear industry. The key challenges include the availability of data set (often scarce and sparse) and insufficient consideration of the uncerta...
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Zusammenfassung: | Advances in Deep Learning bring further investigation into credibility and
robustness, especially for safety-critical engineering applications such as the
nuclear industry. The key challenges include the availability of data set
(often scarce and sparse) and insufficient consideration of the uncertainty in
the data, model, and prediction. This paper therefore presents a meta-learning
based approach that is both uncertainty- and prior knowledge-informed, aiming
at trustful predictions of material properties for the nuclear reactor design.
It is suited for robust learning under limited data. Uncertainty has been
accounted for where a distribution of predictor functions are produced for
extrapolation. Results suggest it achieves superior performance than existing
empirical methods in rupture life prediction, a case which is typically under a
small data regime. While demonstrated herein with rupture properties, this
learning approach is transferable to solve similar problems of data scarcity
across the nuclear industry. It is of great importance to boosting the AI
analytics in the nuclear industry by proving the applicability and robustness
while providing tools that can be trusted. |
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DOI: | 10.48550/arxiv.2405.17862 |