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Bayi Glacier in Qilian Mountain, China (Credit: Xiaoming Wang, distributed via imaggeo.egu.eu)

Job advertisement PhD on Lagrangian dispersion and clustering in the global ocean

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PhD on Lagrangian dispersion and clustering in the global ocean

Position
PhD on Lagrangian dispersion and clustering in the global ocean

Employer
Université de Mécanique de Lille logo

Université de Mécanique de Lille

Unité de Mécanique de Lille J. Boussinesq (UML), ULR 7512

Homepage: https://uml.univ-lille.fr


Location
Lille, France

Sector
Academic

Relevant divisions
Nonlinear Processes in Geosciences (NP)
Ocean Sciences (OS)

Type
Full time

Level
Student / Graduate / Internship

Salary
25000 - 35000 € / Year

Required education
Master

Application deadline
11 May 2025

Posted
2 February 2025

Job description

Context. Most of the ocean kinetic energy is contained in mesoscale eddies (of O(100) km size). Submesoscale flows (scales below O(10) km), on the other hand, correspond to smaller and faster eddies, filaments and fronts (e.g. of temperature), which are important both for the intense vertical transport of tracers they induce and for their role in the energy transfers across scales. Observing fine features of surface-ocean flows at the planetary scale has now become possible thanks to the satellite SWOT (NASA/CNES), providing sea surface height (SSH) data at an unprecedented effective resolution of 6 km. The innovation brought by this instrument suggests the possibility to characterize the fine-scale properties of tracer transport in the ocean. However, it also raises important scientific challenges related to the interpretation of these new data. Indeed, Eulerian velocities are typically estimated from SSH through geostrophic equilibrium, which is not granted to hold at fine scales. In addition, the resulting velocity fields are nondivergent by construction and, thus, do not allow to detect and quantify the accumulation of particulate materials, such as pollutants or plastic debris, at ocean surface.
Lagrangian approaches can help shed light on these questions, as they reflect the temporal evolution of fluid parcels in the flow and hence sample processes acting on different timescales. In particular, comparing the observed particle dispersion regimes with the predictions from quasi-geostrophic turbulence theory can provide information on the interaction between fast (non-geostrophic) processes, not directly resolved by the satellite, and slower (geostrophic) ones.

Work plan and goal. In this thesis, inscribed in a wider research project on SWOT, we will explore the effect of non- geostrophic motions on tracer dispersion using state-of-the-art, high-resolution global-ocean numerical simulations. Using different statistical Lagrangian indicators we will examine the geographical and seasonal variability of transport and dispersion at the ocean surface. The impact of non-geostrophic motions will be addressed through different filtering strategies of the velocities advecting the tracers. Particular attention will be paid to the phenomenon of particle clustering, caused by ageostrophic dynamics and recently highlighted by real surface drifters in several regions, but whose mechanisms are not fully understood yet. This point will be examined relying on a Lagrangian methodology that we previously developed, and on recent theoretical advancements on the Eulerian statistics of velocity gradients in compressible turbulence. Through this approach we expect to gain insight into the physical processes controlling clustering. The broader aim of the work planned is to assess to what degree of accuracy (in terms of spatial scales) SWOT-derived velocity fields represent real surface-ocean currents, and their turbulent properties. It will then be possible to extend the analysis to compare experimental data from SWOT and from drifting buoys.

Research team. The PhD thesis will be conducted at UML, Lille, in tight collaboration with Guillaume Lapeyre at LMDENS, Paris. It will also benefit from a collaboration with LOPS – Ifremer, Brest, involved in the CNES project “Data and dynamical synergies for SWOT – B” and, more generally, the international SWOT Science Team.


How to apply

Candidate. Candidate having good knowledge of fluid mechanics or dynamical systems and an interest for numerical methods; education: Master in Fluid Mechanics, Physics, Geophysical Fluid Dynamics, Applied Mathematics. Good knowledge of oral and written English is required. Knowing Python, Fortran, or C would be a plus.

Application. Interested candidates should send their CV, a letter of motivation, and contact information of two references.