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DTSTART;VALUE=DATE:20260306
DTEND;VALUE=DATE:20260307
DTSTAMP:20260507T092055
CREATED:20250128T133245Z
LAST-MODIFIED:20260129T082952Z
UID:7360-1772755200-1772841599@blog.rwth-aachen.de
SUMMARY:[:en]NHR4CES - Machine Learning in Combustion[:]
DESCRIPTION:Name: Machine Learning in Combustion \nDate: March 6\, 2026 \nFormat: online \nMore information & registeration \n  \n\n  \nDescription\n\n\nShort abstract:\nBig data and Machine Learning (ML) are driving comprehensive economic and social transformations and are rapidly becoming a core technology for scientific computing\, with numerous opportunities to advance different research areas\, such as combustion modeling. The combination of combustion applications with ML has already been applied to several Computational Fluid Dynamics (CFD) configurations. It is a promising research direction with the potential to enable the advancement of so far unsolved problems\, thanks to the ability of deep models to learn hierarchically with little to no need for prior knowledge. However\, this approach presents a paradigm shift to change the focus of CFD from time-consuming feature detection to in-depth examinations of relevant features\, enabling deeper insight into the physics involved in complex natural processes. \nThis training is designed to provide a basic background on machine learning applications\, highlighting some of the areas of the highest potential impact. Emerging ML areas that are promising for combustion modeling\, such as reduced-order modeling advancements\, versatile neural network architecture developments\, as well as some potential limitations\, will be discussed. The workshop aims to gather different research groups\, providing a venue to exchange new ideas\, discuss challenges\, and expose this new research field to a broader community. \nInformation about SDL Energy Conversion
URL:https://blog.rwth-aachen.de/itc-events/en/event/nhr4ces-machine-learning-in-combustion-2/
LOCATION:Online\, Deutschland
CATEGORIES:HPC Events,NHR4CES Events
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