CIFRE PhD offer: Analysis and modeling of the ageing of Li ion batteries using AI F/H

EDF

Job title:

CIFRE PhD offer: Analysis and modeling of the ageing of Li ion batteries using AI F/H

Company:

EDF

Job description

Détail de l’offreInformations généralesRéférence 2024-112759Date de début de diffusion 04/07/2024Date de modification 04/07/2024Description du posteFamille professionnelle / MétierELECTRICITE COURANTS FORTS – Ingénierie / Expertise / RechercheIntitulé du posteCIFRE PhD offer: Analysis and modeling of the ageing of Li ion batteries using AI F/HType de contratThèseDescription de la missionContext
In the context of the energy transition, battery storage systems are playing an increasingly important role for both electric mobility and stationary applications. The EDF Group has positioned itself as a major player both in France and worldwide in this field, thanks to numerous storage projects installed and operated by the EDF Group.The subject of ageing of Li ion batteries is a major technological issue on which EDF’s R&D has been working for many years. This work is based in particular on a rich history of experimental data collected on dozens of distinct commercial cell references for a total of nearly 15,000 individual tests carried out in EDF’s R&D laboratories. These time series data are centralized on a datalake from which data processing can be carried out with tools adapted to the big data context. Today these data are, among other things, used to build analytical ageing models, but these models only exploit a small portion of the collected data today.Objectives
The objective of this thesis is to strengthen both our understanding of the ageing of Li ion batteries and our ability to model it by using artificial intelligence. In particular, this thesis sets itself the double objective of using machine learning approaches in order to:1. Exploit all the diversity of the experimental database to highlight new links between causes and manifestations of ageing.2. Design and test new AI-based ageing models that would bring an advantage compared to classical analytical models. This could for example correspond to the development of light, embeddable and adaptive models, updating their parameters continuously, as new data arrives. One of the final objectives is to optimize the performance and lifespan of batteries according to specific usage conditions.Organization
This CIFRE thesis will be co-supervised by EDF R&D and the ICube-CNRS laboratory of INSA Strasbourg:– Within EDF R&D, experts from the Electrical Equipement Laboratory (Laboratoire des Matériels Electriques – LME) and the Services, Economy, Human Questions, Innovative Tools and AI (Services, Economie, Questions hUmaines, Outils innovants et IA – SEQUOIA) departments will be mobilized to provide both battery and data science expertise.The ICube laboratory, which is joint laboratory bringing together the CNRS, the University of Strasbourg, ENGEES and INSA Strasbourg.The PhD student will be working both at the EDF Lab Les Renardières (accessible by public transport from Paris Gare de Lyon and by company shuttle from the surrounding towns) and at INSA Strasbourg.Profil souhaitéStudents with an engineering degree or a Master 2 with a specialization in Machine Learning or electrical engineering with a minor in data science.Ideally, the candidate will have a general engineering degree or an initial training in chemistry, physics, electrochemistry, materials science or computer science.A strong interest in the field of batteries is essential and a first experience on this subject would be a plus.Note : a second thesis on AI and battery ageing at EDF R&D with a scope complementary to this one will be published soon.Date souhaitée de début de mission01/10/2024SociétéEDFLocalisation du posteLocalisation du posteEurope, France, Ile-de-France, Seine et Marne (77)VilleEDF lab RenardieresLangue de l’offreFrançais – EnglishCritères candidatNiveau de formation05 – BAC +8Spécialisation du diplôme

  • Chimie / Pétrole
  • DATA – Mathématiques appliquées – Statistiques
  • Electricité
  • Electrotechnique
  • Numérique et DATA

Expérience minimum souhaitéeDébutantCompétences transverses

  • Capacité d’adaptation
  • Sens du résultat
  • Autonomie
  • Capacité d’analyse / Esprit de synthèse
  • Collaboration

LanguesAnglais (C1 – Utilisateur expérimenté)

Expected salary

Location

Seine-et-Marne

Job date

Fri, 05 Jul 2024 04:01:39 GMT

To help us track our recruitment effort, please indicate in your email/cover letter where (vacanciesineu.com) you saw this job posting.

To apply for this job please visit jobviewtrack.com.

Job Location