Exploring physics-enhanced neural operators for predicting vehicle-bridge dynamics: From 1-DOF to 13- DOF vehicle models
Key Points
Vehicle-bridge dynamics prediction shows significant accuracy improvements over traditional models, indicating high relevance for engineering applications.
The analysis involved transitioning from 1-DOF to 13-DOF models, demonstrating the flexibility and precision of the neural operators employed in the study.
Using physics-enhanced neural operators allowed for more dynamic response considerations, integrating complex interactions between vehicles and structures.
This method supports future investigations into more intricate models, highlighting potential for better structural integrity assessments.