Uncategorized

Deep-Learning System Explores Materials Interiors From The Outside

A new method could provide detailed information about internal structures, voids, and cracks, based solely on data about exterior conditions. Maybe you can’t tell a book from its cover, but according to researchers at MIT you may now be able to do the equivalent for materials of all sorts, from an airplane part to a medical implant. Their new approach allows engineers to figure out what’s going on inside simply by observing properties of the material’s surface. The team used a type of machine learning known as deep learning to compare a large set of simulated data about materials’ external force fields and the corresponding internal structure, and used that to generate a system that could make reliable predictions of the interior from the surface data.

Leave a comment