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Portail > Offres > Offre UMR8029-ANNBLA-005 - Post-doc: Gestion optimale de l'énergie en temps-réel d'un smart grid de grande taille H/F

Optimal energy management in real-time of a large-scale smart grid

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Français - Anglais

Date Limite Candidature : jeudi 29 avril 2021

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General information

Reference : UMR8029-ANNBLA-005
Workplace : BRUZ
Date of publication : Thursday, April 08, 2021
Type of Contract : FTC Scientist
Contract Period : 12 months
Expected date of employment : 14 June 2021
Proportion of work : Full time
Remuneration : Between 2700€ and 3100€ monthly gross (according to CNRS payscale)
Desired level of education : PhD
Experience required : 1 to 4 years

Missions

The proposed research work will consist in conducting optimisation studies regarding the optimal energy management in real-time of a large-scale smart grid, including a high number of electric vehicles for which traditional methods lead to a prohibitive computing time. The post-doctoral researcher will have to extend an existing multi-agents code developed with Python and Java, and coupled to power system simulator PowerFactory, to define simulation scenarios, and to optimise this system. Deterministic studies, but also stochastic studies, are envisaged. In addition, integrating learning capacities (ex: through methods such as deep learning) for the multi-agent system may also be envisaged.

Activities

The post-doctoral researcher's activities will be the following:

- scientific literature review

- extending an existing multi-agent code developed with Python and Java

- defining simulation scenarios and performing these simulations using power system simulator PowerFactory

- results analysis with Matlab

- participating and presenting the work in international and national conferences and seminars

- potentially, depending on the recruited candidate: conducting comparative optimisation studies at smaller scale using traditional methods (e.g. MILP) and tools (e.g. Gurobi).


- potentially, supervising Master 1 and Master 2 interns

Skills

The candidate should hold a PhD (or equivalent) in computer science, applied mathematics, numerical modeling, or electrical engineering with a strong interest in applied mathematics and programming.

Knowledge in object-oriented programming, as well as in Java or Python is required. An experience or background in optimization would be highly appreciated, as well as knowledge on learning techniques (such as deep learning). In addition, strong analytical thinking skills and critical thinking capabilities are required, and teamwork skills would be appreciated.

An interest in smart grids and renewables grid integration would be a plus.

Work Context

The post-doctoral position will be located in SATIE, ENS Rennes. Occasional short stays in the Institut de Recherche en Informatique de Toulouse (IRIT) are planned.

Constraints and risks

The activities consist in numerical simulations on a computer.

Additional Information

This project is led in collaboration with EDF R&D and with the Institut de Recherche en Informatique de Toulouse (IRIT).

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