← Volver a resultados
Ficha bibliográfica · Consulta y acceso
Artículo

Transfer learning enhanced deep neural network surrogate model for rapid multiphysics simulation of alkaline water electrolyzers

Jingwen Yan et al · Nature Portfolio · 2026

Material complementario disponible
Lectura rápida. Revisá los datos básicos del recurso y luego accedé al contenido desde el botón principal. En esta ficha solo se muestra la información necesaria para identificar la obra, citarla y abrirla.

Acceso al recurso

Entrá al contenido desde la opción principal o elegí otra fuente disponible.

Acceso principal

Material complementario disponible

DOAJ DOAJ - Open Access Journals
El enlace apunta a material asociado, anexos, tablas, datos o página complementaria. No se marca como libro/texto completo.
Abrir material

Resumen

Descripción general del contenido del recurso.

Abstract Alkaline water electrolysis represents a promising pathway for green hydrogen production, yet comprehensive multi-physics simulation remains computationally prohibitive for practical design optimization. This study presents a methodological framework combining transfer learning with deep neural network surrogate modeling, rather than introducing new physical models, to achieve rapid performance prediction for alkaline electrolyzers. The primary contribution lies in demonstrating how cross-fidelity knowledge transfer can dramatically reduce computational costs while preserving predictive accuracy. An encoder-decoder architecture incorporating physics-informed loss functions was developed to predict spatial distributions of current density, temperature, and gas volume fraction. Transfer learning strategies leveraging low-fidelity simulation data as the source domain reduced high-fidelity training data requirements by approximately 70% while improving prediction accuracy by 35% compared with training from scratch. The surrogate model achieved coefficient of determination values exceeding 0.98 for principal physical quantities with mean relative errors below 2%. Computational acceleration ratios approaching six orders of magnitude relative to finite element methods potentially enable previously intractable applications. These prospective applications include exhaustive parameter optimization and, with further development, real-time control integration. Systematic validation across varying current densities, temperatures, and pressures confirmed robust multi-condition prediction capability. The proposed methodological framework demonstrates significant potential for accelerating electrolyzer design workflows in grid-integrated renewable hydrogen production systems.

Cómo citar

Elegí el formato que necesitás y copiá la referencia al portapapeles.

APA 7

al, J. Y. E. (2026). Transfer learning enhanced deep neural network surrogate model for rapid multiphysics simulation of alkaline water electrolyzers. https://doi.org/10.1038/s41598-026-43905-x

MLA

al, Jingwen Yan et. "Transfer learning enhanced deep neural network surrogate model for rapid multiphysics simulation of alkaline water electrolyzers." 2026. https://doi.org/10.1038/s41598-026-43905-x.

Chicago

al, Jingwen Yan et. 2026. "Transfer learning enhanced deep neural network surrogate model for rapid multiphysics simulation of alkaline water electrolyzers.". https://doi.org/10.1038/s41598-026-43905-x.

Harvard

al, J. Y. E. 2026, Transfer learning enhanced deep neural network surrogate model for rapid multiphysics simulation of alkaline water electrolyzers, Nature Portfolio, available at: https://doi.org/10.1038/s41598-026-43905-x [Accessed 22 Jun. 2026].

Compartir e imprimir

Guardá la ficha, copiá su enlace permanente o imprimila como PDF.

Exportar referencia

Si usás un gestor bibliográfico, podés exportar el registro en los formatos más comunes.

Detalles del recurso

Información bibliográfica útil para confirmar que se trata del material correcto.

Título
Transfer learning enhanced deep neural network surrogate model for rapid multiphysics simulation of alkaline water electrolyzers
Autor / colaboradores
Jingwen Yan et al
Editorial
Nature Portfolio
Año de publicación
2026
ISSN
2045-2322
ISSN
2045-2322
Idioma
eng

Materias

Explorá otros recursos relacionados a partir de estas materias.

Copiado