We propose a machine learning framework to accelerate numerical computations of time-dependent ODEs and PDEs. Our method is based on recasting (generalizations of) existing numerical methods as artificial neural networks, with a set of trainable parameters. These parameters are determined in an offline training process by (approximately) minimizing suitable (possibly non-convex) loss functions by (stochastic) gradient descent methods. The proposed algorithm is designed to be always consistent with the underlying differential equation. Numerical experiments involving both linear and non-linear ODE and PDE model problems demonstrate a significant gain in computational efficiency over standard numerical methods.ISSN:2640-350
In this paper we present a holistic software approach based on the FEAT3 software for solving multid...
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Defence is held on 18.2.2022 12:15 – 16:15 (Zoom), https://aalto.zoom.us/j/61873808631Mechanistic...
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Pattern recognition has its origins in engineering while machine learning developed from computer sc...
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In an unconventional approach to combining the very successful Finite Element Methods (FEM) for PDE-...
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In this paper we present a holistic software approach based on the FEAT3 software for solving multid...
This work presents a method for the solution of partial diferential equations (PDE’s) using neural n...
Neural ordinary differential equations (ODEs) have recently emerged as a novel ap- proach to deep le...
We propose a data-driven Model Order Reduction (MOR) technique, based on Artificial Neural Networks ...
Defence is held on 18.2.2022 12:15 – 16:15 (Zoom), https://aalto.zoom.us/j/61873808631Mechanistic...
Numerical methods for approximately solving partial differential equations (PDE) are at the core of ...
Pattern recognition has its origins in engineering while machine learning developed from computer sc...
We study the meta-learning of numerical algorithms for scientific computing, which combines the math...
International audienceNeural ordinary differential equations (NODEs) -- parametrizations of differen...
In an unconventional approach to combining the very successful Finite Element Methods (FEM) for PDE-...
We propose a machine learning-based method to build a system of differential equations that approxim...
We present a new paradigm for Neural ODE algorithms, called ODEtoODE, where time-dependent parameter...
Artificial Neural Networks are known as powerful models capable of discovering complicated patterns ...
Ordinary Differential Equations (ODEs) play a key role in describing the physical, chemical, and bio...
We revisit the original approach of using deep learning and neural networks to solve differential eq...
In this paper we present a holistic software approach based on the FEAT3 software for solving multid...
This work presents a method for the solution of partial diferential equations (PDE’s) using neural n...
Neural ordinary differential equations (ODEs) have recently emerged as a novel ap- proach to deep le...