Publications Details
Machine-Learned Linear Structural Dynamics
Shelton, Timothy R.; Lindsay, Payton; Pierson, Kendall H.; Kuether, Robert J.; Najera-Flores, David A.; Wilbanks, James J.; Parish, Eric
The tension between accuracy and computational cost is a common thread throughout computational simulation. One such example arises in the modeling of mechanical joints. Joints are typically confined to a physically small domain and yet are computationally expensive to model with a high-resolution finite element representation. A common approach is to substitute reduced-order models that can capture important aspects of the joint response and enable the use of more computationally efficient techniques overall. Unfortunately, such reduced-order models are often difficult to use, error prone, and have a narrow range of application. In contrast, we propose a new type of reduced-order model, leveraging machine learning, that would be both user-friendly and extensible to a wide range of applications.