doctoral contract : Flood prediction at large scales 36 month

Updated: 13 days ago
Location: Montpellier, LANGUEDOC ROUSSILLON
Job Type: FullTime
Deadline: 17 May 2024

17 Apr 2024
Job Information
Organisation/Company

IRD Occitanie
Research Field

Environmental science » Water science
Researcher Profile

First Stage Researcher (R1)
Country

France
Application Deadline

17 May 2024 - 00:00 (Europe/Paris)
Type of Contract

Temporary
Job Status

Full-time
Offer Starting Date

1 Oct 2024
Is the job funded through the EU Research Framework Programme?

Not funded by an EU programme
Is the Job related to staff position within a Research Infrastructure?

No

Offer Description

Context 

The vulnerability of populations to flooding is increasing worldwide under the combined effect of climatic and socio-economic changes. It is more pronounced in the Southern countries because of the lack of protection measures, monitoring data and forecasting tools to anticipate extreme events.

Cambodia, for example, is regularly hit by major flooding on the Mekong River and Tonle Sap lake. These floods are both beneficial to agriculture in terms of water supply and soil enrichment, but also harmful when they are exceptional and responsible for long, large-scale floods that represent a challenge in terms of human, health and food safetý. In this context, predicting and assessing flood risk is essential. However, flood risk forecasting at high resolution and over large areas remains a challenge due to (i) the lack of in situ hydrological data in many parts of the world, (ii) the high computation times of large-scale numerical models and (iii) the (often significant) model uncertainty. Indeed, although 2D Shallow Water models are a priori well suited to modelling free-surface flows, their application to risk forecasting is still hampered by the uncertainties affecting them, linked in particular to a lack of knowledge of the topography, or of their boundary conditions.

Cambodia's floodplains are a good illustration. Indeed, the topography is strongly influenced by the small-scale drainage networks (Preks) build for agriculture. These are poorly mapped, and their geometry is poorly observed, even though they play an important role in the propagation of water during inundation periods. The missing or partial data we have to feed the models makes simulations highly uncertain or even erroneous, which greatly hampers decision-making based on model results.

Objective of the thesis

This PhD is funded in the framework of the SWIFT project (funded by the French national research agency) will focus on one main research question:

How can large collections of in situ and satellite-derived flood information be optimally integrated to parameterize and control large-scale hydraulic models in data-scarce areas?

You will therefore build on recently developed innovative hydraulic modelling approaches (shallow water models with porosity) that enable large-scale applications. In particular, one of the main objectives of the PhD will be to develop an efficient framework for assimilating satellite-derived flood extent maps, in order to compensate for the lack of observations relating to riverbed bathymetry and discharge, as well as floodplain topography.

The hydraulic model that will be used (SW2D-DDP) is based on an unstructured mesh and integrates porosity concepts in combination with traditional shallow-water equations. In such a model, the definition of porosity as a function of water depth enables the detailed representation of the floodplain and riverbed geometry, when adopting relatively large mesh cells. Moreover, the effective integration of remotely sensed flood information into hydraulic models remains a crucial issue. The candidate will therefore investigate new ways of using Earth observation data (i.e., flooded areas and water levels derived from satellite image collections) to recover uncertain model parameters and boundary conditions. The method will be developed and validated using synthetically generated datasets as well as real event data extracted from Copernicus satellite image archives. Extensive testing will be carried out on several high-magnitude floodplain events in Cambodia and France.

Your main activities will include :

  • Programming in Python, Fortran and/or C++
  • Image Processing
  • Shallow water Modelling
  • Data Assimilation

Conduct and supervision of the thesis

 

Under the supervision of Renaud Hostache (UMR Espace-Dev) and Carole Delenne (UMR HSM), you will be enrolled in the Gaia doctoral school at the University of Montpellier

The thesis will be carried out at UMR EspaceDev (IRD), in collaboration with UMR HydroSciences, UMR G-EAU and the Cambodian Institute of Technology (KHEOBS laboratory).

Several field campaigns in Cambodia are planned to collect validation data.


Requirements
Research Field
Environmental science » Water science
Education Level
Master Degree or equivalent

Skills/Qualifications

The profile we are looking for

You have developed the following competences:

  • Very good command of Python in general and using geographic data.
  • Advanced skills in applied mathematics.
  • Experience in shallow water, image/signal processing will be considered as an asset.
  • Very good oral and written communication skills

You have the following skills :

  • Strong motivation to carrying out a PhD.
  • Team working hability.
  • Very good sense of organization.

 

You hold a level 6 diploma, master degree or equivalent in the following areas: applied mathematics or environmental modelling with a strong background in mathematics, ideally with a focus on hydraulics.


Languages
FRENCH
Level
Good

Languages
ENGLISH
Level
Good

Additional Information
Work Location(s)
Number of offers available
1
Company/Institute
Institut de Recherche pour le Développement
Country
France
City
Montpellier
Geofield


Where to apply
Website

https://emploi-recrutement.ird.fr/offre-de-emploi/emploi-contrat-doctoral-previ…

Contact
State/Province

Occitanie
City

Montpellier
Website

https://emploi-recrutement.ird.fr/accueil.aspx?LCID=1036
Street

911 Avenue Agropolis, 34394 Montpellier
Postal Code

34000
E-Mail

[email protected]

STATUS: EXPIRED