Don't miss our weekly PhD newsletter | Sign up now Don't miss our weekly PhD newsletter | Sign up now

We have 487 dynamics PhD Projects, Programmes & Scholarships

Discipline

Discipline

All disciplines

Location

Location

All locations

Institution

Institution

All Institutions

PhD Type

PhD Type

All PhD Types

Funding

Funding

All Funding


dynamics PhD Projects, Programmes & Scholarships

We have 487 dynamics PhD Projects, Programmes & Scholarships

Multi-Phase Fluid Dynamics of Medicines During Transit

Supervisory Team: Ivo Peters, Tim Waters. Project description. The increasing use of drones and electric bikes offers exciting new opportunities for bespoke and efficient transportation of medical products. Read more

Data-driven modeling for crowd dynamics

Predicting the behaviors of pedestrian crowds is of critical importance for a variety of real-world problems. Data driven modeling, which aims to learn the mathematical models from observed data, is a promising tool to construct models that can make accurate predictions of such systems. Read more

PhD Studentship in “Multi-scale mathematical models to predict prostate cancer progression and treatment response.” (2024)

PhD studentship in the Groups of “Mathematics Applied to Biology” and “Numerical Analysis and Scientific Computing” at the University of Sussex (UK), with the collaboration of the “Group of Numerical Methods in Engineering” at the University of A Coruña (Spain). Read more

Control of Nonlinear Engineering Systems

These projects are open to students worldwide, but have no funding attached. Therefore, the successful applicant will be expected to fund tuition fees at the relevant level (home or international) and any applicable additional research costs. Read more

CDT-QTE: Quantum Spin Dynamics and How to Make it Faster

Supervisory Team: Prof Ilya Kuprov, Dr Marina Carravetta. Project description: This project is part of the EPSRC Centre for Doctoral Training in Quantum Technology Engineering at the University of Southampton. Read more

Machine Learning and Domain Decomposition methods for Fluid Dynamics

Modelling of many modern applications leads to linear systems whose size is too large to allow the use of direct solvers. Thus, parallel solvers are becoming increasingly important in scientific computing. Read more

Filtering Results