Thèse CIFRE - Modèle vieillissement batterie via Machine Learning (F/H)
- マシンラーニング
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- 06/12/2024
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Job Title: Thèse CIFRE - Battery Aging Model via Machine Learning (F/H)
Company: Renault Group
Join Renault Group's collaborative project with the renowned Solid Reactivity and Chemistry Laboratory (LRCS) in Amiens, under the guidance of Prof. Alejandro FRANCO. This partnership aims to leverage cutting-edge multiphysical modeling research, supported by our advanced testing facilities and high-quality supervision. Regular progress meetings will be held monthly, either face-to-face or remotely, involving the doctoral student and advisors.
As a doctoral candidate, you will engage in a range of research activities including:
You will use statistical methods to cover all use cases for training Machine Learning models, define precision levels for model calculations across different stages of aging, and employ electrochemical cycling and storage methods for aging cells until their end-of-life to correlate predictive model results.
Required knowledge:
General Engineer, Computer Science, Applied Mathematics, or Big Data Engineering degrees preferred.
Autonomy, diligence, initiative, synthesis skills, and the ability to work collaboratively.
Transverse
36 months
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