A unified deep artificial neural network approach to partial differential equations in complex geometries

November 17, 2017 Β· Declared Dead Β· πŸ› Neurocomputing

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Authors Jens Berg, Kaj NystrΓΆm arXiv ID 1711.06464 Category stat.ML: Machine Learning (Stat) Cross-listed cs.LG Citations 651 Venue Neurocomputing Last Checked 1 month ago
Abstract
In this paper we use deep feedforward artificial neural networks to approximate solutions to partial differential equations in complex geometries. We show how to modify the backpropagation algorithm to compute the partial derivatives of the network output with respect to the space variables which is needed to approximate the differential operator. The method is based on an ansatz for the solution which requires nothing but feedforward neural networks and an unconstrained gradient based optimization method such as gradient descent or a quasi-Newton method. We show an example where classical mesh based methods cannot be used and neural networks can be seen as an attractive alternative. Finally, we highlight the benefits of deep compared to shallow neural networks and device some other convergence enhancing techniques.
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