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

We have 8 Biological Sciences (aerospace engineering) PhD Projects, Programmes & Scholarships

Discipline

Discipline

Biological Sciences

Location

Location

All locations

Institution

Institution

All Institutions

PhD Type

PhD Type

All PhD Types

Funding

Funding

All Funding


Biological Sciences (aerospace engineering) PhD Projects, Programmes & Scholarships

We have 8 Biological Sciences (aerospace engineering) PhD Projects, Programmes & Scholarships

17 Graduate Teaching Assistants (GTAs) in the Institute of Industry and Innovation

The Institute of Industry and Innovation (I2RI) at Sheffield Hallam University intends to appoint up to 17 GTAs on 3.5 year fixed-term, full-time studentships from October 2024, with annual stipend at the living wage foundation rate (currently £19,722 in the academic year 23/24). Read more

Data-driven optimal prediction of bacteria growth

This project is devoted to an AI-based prediction of bacteria growth and its control by antibiotics. In synthetic biology, an improved understanding of bacterial regulatory circuits is required to develop complex biological systems with functionalities beyond existing in nature [1, 2]. Read more

Utilize Martian resources for future exploration: Develop a game-changing plasma-based ISRU system

Supervisory Team.   Min Kwan Kim (80%) / Alexander Wittig (20%). Project description. This exciting PhD project offers a unique opportunity to develop a high-efficiency, all-in-one in-situ resource utilization (ISRU) system for future crewed Mars missions. Read more

Flight mechanics and stability in birds during extreme manoeuvres of take-off and landing

During take-off birds accelerate primarily through from the ground reaction force, with aerodynamics playing a lesser role. In landing things are quite different; birds use mainly aerodynamic drag on the wings to decelerate, with the legs bringing them finally to rest after touchdown. Read more

Data-driven optimal prediction of bacteria growth

This project is devoted to an AI-based prediction of bacteria growth and its control by antibiotics. In synthetic biology, an improved understanding of bacterial regulatory circuits is required to develop complex biological systems with functionalities beyond existing in nature [1, 2]. Read more
  • 1

Filtering Results