AJKFED 2023 (ASME-JSME-KSME Joint Fluids Engineering Conference)

Presentation information

Technical session

V. Data-based Simulations and Machine Learning

4-10-2

Thu. Jul 13, 2023 9:40 AM - 11:00 AM Room 10 (10F 1009)

Chair:Susumu Goto(Osaka University)

10:00 AM - 10:20 AM

[4-10-2-02] Hydrogen production flow optimization via physics-driven deep learning framework

*Klemens Katterbauer1, Abdulaziz Al Qasim1, Abdallah Al Shehri1, Ali Yousif1 (1. Saudi Aramco)

Keywords:Hydrogen production flow, deep learning, physics-driven machine learning, sustainability

Abstract password authentication.
Password is required to view the abstract. Please enter a password to authenticate.

Password