“…However, to find solutions for unseen parameter values, projection of the high-fidelity system onto the basis functions is replaced by interpolating between snapshots (or snapshots that have themselves been projected onto the basis functions). Although cubic interpolation 26 or radial basis functions 7 were originally used for the interpolation, NIROM methods have since embraced machine learning, using a variety of neural networks for this purpose, including autoencoders in combination with long short-term memory networks, 27,28 multilayer perceptrons, 29 and Gaussian process regression. 22,30 When using neural networks, the offline stage involves training a neural network to learn how the solutions depend on various model parameters, and the online stage involves evaluating the neural network for an unseen parameter value or values.…”