Autores
Aguilar Canto Fernando Javier
Calvo Castro Francisco Hiram
Título Model discovery of compartmental models with Graph-Supported Neural Networks
Tipo Revista
Sub-tipo JCR
Descripción Applied Mathematics and Computation
Resumen In this proposal, our objective is to create a neural network for the discovery of models using compartmental models as systems of Ordinary Differential Equations (ODEs), employing Graph-Supported Neural Networks (GSNN). We design the GSNN as a graph of transition functions of the structure of the model to ensure that the three properties of the ODE solution are satisfied: additivity to one, positivity, and boundness. Rather than directly estimating the solution, these neural networks approximate the transition functions. We present theoretical evidence substantiating that our GSNN maintains these properties, along with approximation outcomes from both simulated and real-world data. These outcomes demonstrate that our GSNN outperforms the non-graph-supported approach for these issues, with instances where it even surpasses full model-based solutions and Recurrent Neural Networks. Furthermore, an evolutionary algorithm successfully generated a consistent model using the data, offering a comprehensive framework for neural network-based model discovery in these scenarios. © 2023 Elsevier Inc.
Observaciones DOI 10.1016/j.amc.2023.128392
Lugar New York
País Estados Unidos
No. de páginas Article number 128392
Vol. / Cap. v. 464
Inicio 2024-03-01
Fin
ISBN/ISSN