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Physics-guided neural networks (PGNNs) to solve differential equations for spatial analysis

Abstract

Numerous examples of physically unjustified neural networks, despite satisfactory performance, generate contradictions with logic and lead to many inaccuracies in the final applications. One of the methods to justify the typical black-box model already at the training stage and lead to many inaccuracies in the final applications. One of the methods to justify the typical black-box model already at the training stage involves extending its cost function by a relationship directly inspired by the physical formula. This publication explains the concept of physics- involves extending its cost function by a relationship directly inspired by the physical formula. This publication explains the concept of Phys- guided neural network (PGNN), makes an overview of already proposed solutions in the field and describes possibilities of implementing ics-guided neural networks (PGNN), makes an overview of already proposed solutions in the field and describes possibilities of implementing physics-based loss functions for spatial analysis. Our approach shows that the model predictions are not only optimal but also scientifically physics-based loss functions for spatial analysis. Our approach shows that the model predictions are not only optimal but also scientifically consistent with domain specific equations. Furthermore, we present two applications of PGNNs and illustrate their advantages in theory by consistent with domain specific equations. Furthermore, we present two applications of PGNNs and illustrate their advantages in theory by solving Poisson’s and Burger’s partial differential equations. The proposed formulas describe various real-world processes and have numerous solving Poisson’s and Burger’s partial differential equations. The proposed formulas describe various real-world processes and have numerous applications in the area of applied mathematics. Eventually, the usage of scientific knowledge contained in the tailored cost functions shows that applications in the area of applied mathematics. Eventually, the usage of scientific knowledge contained in the tailored cost functions shows that our methods guarantee physics-consistent results as well as better generalizability of the model compared to classical, artificial neural networks. our methods guarantee physics-consistent results as well as better generalizability of the model compared to classical, artificial neural networks

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Details

Category:
Articles
Type:
artykuły w czasopismach
Published in:
Bulletin of the Polish Academy of Sciences-Technical Sciences no. 69,
ISSN: 0239-7528
Language:
English
Publication year:
2021
Bibliographic description:
Borzyszkowski B., Damaszke K., Romankiewicz J., Świniarski M., Moszyński M.: Physics-guided neural networks (PGNNs) to solve differential equations for spatial analysis// Bulletin of the Polish Academy of Sciences-Technical Sciences -Vol. 69,iss. 6 (2021), s.139391-
DOI:
Digital Object Identifier (open in new tab) 10.24425/bpasts.2021.139391
Verified by:
Gdańsk University of Technology

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