“…First, despite the reduced accuracy due to domain shift, the NN inference can remain more accurate than that of baselines, making domain‐generalization methods less necessary. Second, loss functions that include physics‐based terms, such as the residuals of the governing equations, can act as regularizers that improve generalizability (e.g., Bao et al., 2022; Hammoud et al., 2022; Jiang et al., 2020; C. Wang et al., 2020). Third, incorporating geometric symmetries as prior knowledge can enhance the generalization performance (e.g., Chattopadhyay et al., 2022; Ling et al., 2016; R. Wang et al., 2021; Yasuda & Onishi, 2023a).…”