In this work we propose an application of physics informed supervised learning strategies to parametric partial differential equations. Indeed, even if the latter are indisputably useful in many research fields, they can be computationally expensive most of all in a real-time and many-query setting. Thus, our main goal is to provide a physics informed learning paradigm to simulate parametrized phenomena in a small amount of time. The physics information will be exploited in many ways, in the loss function (standard physics informed neural networks), as an augmented input (extra feature employment) and as a guideline to build an effective structure for the neural network (physics informed architecture). These three aspects, combined together, will lead to a faster training phase and to a more accurate parametric prediction. The methodology has been tested for several equations and also in an optimal control framework.

An extended physics informed neural network for preliminary analysis of parametric optimal control problems / Demo, N; Strazzullo, M; Rozza, G. - In: COMPUTERS & MATHEMATICS WITH APPLICATIONS. - ISSN 0898-1221. - 143:(2023), pp. 383-396. [10.1016/j.camwa.2023.05.004]

An extended physics informed neural network for preliminary analysis of parametric optimal control problems

Strazzullo, M;Rozza, G
2023

Abstract

In this work we propose an application of physics informed supervised learning strategies to parametric partial differential equations. Indeed, even if the latter are indisputably useful in many research fields, they can be computationally expensive most of all in a real-time and many-query setting. Thus, our main goal is to provide a physics informed learning paradigm to simulate parametrized phenomena in a small amount of time. The physics information will be exploited in many ways, in the loss function (standard physics informed neural networks), as an augmented input (extra feature employment) and as a guideline to build an effective structure for the neural network (physics informed architecture). These three aspects, combined together, will lead to a faster training phase and to a more accurate parametric prediction. The methodology has been tested for several equations and also in an optimal control framework.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2984064