Multi-fidelity regression using artificial neural networks: efficient approximation of parameter-dependent output quantities
Mengwu Guo, Andrea Manzoni, Maurice Amendt, Paolo Conti, Jan S., Hesthaven

TL;DR
This paper introduces neural network architectures for multi-fidelity regression, effectively combining high- and low-cost data sources to accurately approximate parameter-dependent outputs in engineering applications.
Contribution
The paper proposes new neural network models for multi-fidelity regression and demonstrates their superiority over co-kriging through benchmarks and an engineering case study.
Findings
Neural networks outperform co-kriging in multi-fidelity regression tasks.
Cross-validation with Bayesian optimization enhances model performance.
Multi-fidelity models achieve high accuracy with limited high-fidelity data.
Abstract
Highly accurate numerical or physical experiments are often time-consuming or expensive to obtain. When time or budget restrictions prohibit the generation of additional data, the amount of available samples may be too limited to provide satisfactory model results. Multi-fidelity methods deal with such problems by incorporating information from other sources, which are ideally well-correlated with the high-fidelity data, but can be obtained at a lower cost. By leveraging correlations between different data sets, multi-fidelity methods often yield superior generalization when compared to models based solely on a small amount of high-fidelity data. In this work, we present the use of artificial neural networks applied to multi-fidelity regression problems. By elaborating a few existing approaches, we propose new neural network architectures for multi-fidelity regression. The introduced…
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