Surrogate Modeling
Surrogate modeling aims to create computationally inexpensive approximations of complex simulations, primarily to accelerate design optimization and uncertainty quantification in various scientific and engineering domains. Current research emphasizes developing accurate and efficient surrogate models using diverse architectures, including neural networks (e.g., DeepONets, U-Nets, recurrent neural networks), Gaussian processes, polynomial chaos expansions, and large language models, often incorporating physics-based constraints or multi-fidelity approaches to improve performance. This field is significant because it enables faster exploration of design spaces, more robust uncertainty analysis, and improved decision-making in applications ranging from fluid dynamics and reservoir simulation to materials science and nuclear engineering.
Papers
Investigation of Physics-Informed Deep Learning for the Prediction of Parametric, Three-Dimensional Flow Based on Boundary Data
Philip Heger, Markus Full, Daniel Hilger, Norbert Hosters
Attribute Surrogates Learning and Spectral Tokens Pooling in Transformers for Few-shot Learning
Yangji He, Weihan Liang, Dongyang Zhao, Hong-Yu Zhou, Weifeng Ge, Yizhou Yu, Wenqiang Zhang