Project Oyster uses physics-informed neural networks, which combines real life physics constraints into neural networks. There is a breakthrough in studying the way in which particles are carried through substances that could be used for our project.
More InfoThrough modelling the whole ocean, maximum error bound is 2%
Training can occur with smaller datasets, and without extensive sensor infrastructure
Current simulations require supercomputers, but our neural network can be runned on a household computer