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[Sponsors] |
Job Record #19403 | |
Title | Intern CFD extreme scale data analyst |
Category | Internship |
Employer | Ecole Centrale de Nantes |
Location | France, Nantes |
International | Yes, international applications are welcome |
Closure Date | Thursday, January 30, 2025 |
Description: | |
ContextThe accurate reconstruction of turbulent flows from simulation data is a key challenge in computational fluid dynamics (CFD). Traditional numerical methods, while robust, often face significant computational limitations when applied to high-resolution, extreme-scale simulations, such as those of Rayleigh-Taylor Instabilities (RTI) or free surface flows (waves). Turbulent flow is inherently chaotic and complex, involving multi-scale interactions that are difficult to capture with direct numerical simulations (DNS) alone. However, machine learning (ML) has emerged as a promising alternative or complement to traditional methods for modeling and reconstructing turbulent flows, offering potential improvements in both accuracy and computational efficiency. This new opportunity to improve turbulent simulation has led to an exponential increase in the number of publications related to this subject as shown in figure 1. In the past few years, multiple review papers as [1,2] have tried to categorize the various works and explore their potential use and challenges. Among the most promising ML techniques, convolutional neural networks (CNNs) and autoencoders have been successfully applied in various areas of CFD. Recent studies have demonstrated the feasibility of using ML techniques to predict and reconstruct high-fidelity turbulent flows from low-resolution or incomplete data. In the meantime, companies are also looking to develop ML-based solutions [3] This internship will explore the application of machine learning to two specific types of fluid dynamics simulations: Rayleigh-Taylor Instabilities (RTI) and free surface flows. RTI, a phenomenon occurring when fluids of different densities interact under gravitational forces, results in complex, highly unstable turbulent patterns. Similarly, free surface flows, such as waves interacting with structures or other fluid interfaces, are characterized by intricate turbulent behavior that is difficult to model accurately with traditional CFD approaches. Presentation of the team and work environmentThis internship is part of a broader international project funded by CEFIPRA (Indo-French Centre for the Promotion of Advanced Research) Data reduction and surrogate modeling of transition to turbulence of Rayleigh-Taylor instability data obtained by DNS. The project is headed by Associate Professor Lucas Lestandi at Ecole Centrale de Nantes (ECN) and Assistant Professor Aditi Sengupta (IIT-ISM Dhanbad, Mechanical engineering dpt.) who has provided data and DNS solvers [4]. The internship will take place at Ecole Centrale de Nantes (France) in collaboration with Lucas Lestandi and Yassin Ajanif who is currently in his 2nd year PhD studies. Goals of the internshipFor this project, the Indian team has provided high accuracy simulation tool (DNS) and produced 4Pb of data. Such large data is hard to handle and Yassin has developed data decomposition algorithms (SVD) tailored for out-of-core processing. However powerful this technique might be, it relies on linear algebra which cannot capture all of the flow turbulent properties (non-linear). Your role will be to explore the literature and apply the most promising techniques for turbulent flow data reconstruction. This will be done under direct supervision of Professor Lestandi who has co-authored 3 articles in the field of ML applied to simulation of mechanics and wishes to apply similar strategies for this project. Main tasks are:
What you will learn
Intern profileThe ideal candidate is looking for a 5 or 6-month internship in a research lab to complete his masters or engineering degree in either of the following major: machine learning, scientific computing, applied math, mechanical engineering. Required skills
References: [1] Y. Zhang, D. Zhang, and H. Jiang, “Review of Challenges and Opportunities in Turbulence Modeling: A Comparative Analysis of Data-Driven Machine Learning Approaches,” Journal of Marine Science and Engineering, vol. 11, no. 7, Art. no. 7, Jul. 2023, doi: 10.3390/jmse11071440. [2] S. L. Brunton, B. R. Noack, and P. Koumoutsakos, “Machine Learning for Fluid Mechanics,” Annu. Rev. Fluid Mech., vol. 52, no. 1, pp. 477–508, Jan. 2020, doi: 10.1146/annurev-fluid-010719-060214. [3] https://www.monolithai.com/blog/machine-learning-for-turbulence-modeling [4] A. Sengupta, P. Sundaram, V. K. Suman, and T. K. Sengupta, “Three-dimensional direct numerical simulation of Rayleigh-Taylor instability triggered by acoustic excitation,” Physics of Fluids, vol. 34, no. 5, May 2022, doi: 10.1063/5.0091109. |
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Contact Information: | |
Please mention the CFD Jobs Database, record #19403 when responding to this ad. | |
Name | Lucas Lestandi |
lucas.lestandi@ec-nantes.fr | |
Email Application | Yes |
Record Data: | |
Last Modified | 09:45:09, Wednesday, October 09, 2024 |
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