We welcome you back in-person to the HiFiLeD Symposium 2022!
The HiFiLed Symposium will focus on topics ranging from issues concerning the complexity, reliability, accuracy, and uncertainties in generating high-fidelity LES/DNS data, to their application towards turbulence and transition modeling. It will include progress on the underlying high-order numerical methods (HOMs), innovative approaches for CPU acceleration for LES and DNS, exploitation of massive parallel architectures, efficient post-processing on massive parallel hardware, and innovative machine learning (ML) methods, as well as experimental data. Moreover, the symposium offers the opportunity to communicate and exchange knowledge for academic researchers, graduate students, and industrial engineers, as well as industrial R&D managers and consultants working in the fields of turbulent flow modeling, simulations, measurements, and multidisciplinary CFD applications.
Please visit the HiFiLeD Symposium webpagefor further information.
Accepted authors will be expected to travel to the symposium to present in person.
Details are available here: https://events.cadence.com/HIFILED2022
Contributions by participants are expected on the following topics:
We are pleased to present our keynote speakers for the symposium:
Mini-symposia are organized on the following topics:
Questions? Email us
HiFiLeD Symposium objectives:
The simulation of turbulent flows using CFD methods has progressed rapidly over the last decades and has given rise to significant changes in the design processes of many areas of fluid mechanics. However, despite over a century of research, the modelling of turbulence and transition in industrial relevant configurations is still far from being achieved successfully.
With the advent and growing availability of large scale computing power and facilities, a new area of turbulence research is opening with the ability to perform reliable high-fidelity large-eddy simulations (LES) and direct numerical simulations (DNS) for industrial relevant flow configurations.
This availability is opening exciting new avenues towards understanding and modeling turbulence and transition by:
This novel approach of High-Fidelity LES/DNS data has attracted many researchers in recent years, stimulated by other emerging areas, as Big Data, Artificial Intelligence (AI) and Machine Learning (ML), providing new efficient methodologies for interrogating and investigating very large data sets.
The HiFiLeD Symposium will be focusing on all aspects related to these objectives, ranging from issues concerning the complexity, reliability, accuracy and uncertainties in generating the High-Fidelity LES/DNS data, to their application towards turbulence and transition modelling. It will include progress on the underlying high-order numerical methods (HOMs), innovative approaches for CPU acceleration for LES and DNS, exploitation of massive parallel architectures, efficient post-processing on massive parallel hardware, innovative machine learning methods, as well as experimental data. Moreover, the Symposium offers the opportunity to communicate and exchange knowledge for academic researchers, graduate students, industrial engineers, as well as industrial R&D managers and consultants working in the fields of turbulent flow modelling, simulations, measurements and multidisciplinary CFD applications.
Hotel and Travel:
Hotel and travel information will be available on the Symposium web site (coming soon)
HiFiLeD Symposium fee:
Registration:
Submit your intention to attend to info@hifiled-conference.eu
For further information, please contact the Local Organising Committee members under: info@hifiled-conference.eu
Please download the leaflets: