AI RESEARCH

Conditional Neural Field based Reduced Order Model for Dynamic Ditching Load Prediction

arXiv CS.LG

ArXi:2605.21499v1 Announce Type: cross Grid-based neural networks such as convolutional autoencoders are widely used in dimension reduction-based surrogate models for computational fluid dynamics. In recent years, the use of coordinate-based approaches like conditional neural fields has emerged. Their independence of the spatial discretization is a beneficial feature for various applications in computational fluid dynamics. This paper discusses the spatio-temporal prediction of aircraft ditching loads using a conditional neural field approach.