315 algorithm-development-"Multiple"-"Simons-Foundation"-"Prof"-"UCL" positions at University of Sheffield
Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
using electric, hydrogen and hybrid power sources have seen rapid developments. This leads to many interesting control challenges. This project will focus on the use of the latest development of numerical
-
to the Phase-field research and growing knowledge by: (1) using already developed codes to assess pros and cons of Phase-field in interesting benchmark problems. The subroutines -already tested for Abaqus- will
-
to greater energy absorption capabilities. The development of new generation AHSS requires better understanding of damage development in the microstructure of the material leading to final fracture. This is
-
Funded Dr J L Curiel Sosa Application Deadline: Applications accepted all year round Details The development of new advanced composite materials offers plenty of possibilities to implement these new
-
Deadline: Applications accepted all year round Details The aim of this PhD programme is to develop efficient numerical strategies for the prediction and assessment of fracture. Our group has got success in
-
Nature, we have developed a number of porphyrin containing biomimetic macromolecules. These have included a porphyrin cored polymer capable of reversibly binding oxygen. As such, these molecules have the
-
modelling and simulation of complex systems in diverse science and engineering disciplines including civil engineering, biomechanics and life science. However, the exciting developments in obtaining highly
-
Deadline: Applications accepted all year round Details Composite airframe panels are subjected to extreme loads and impacts. Cracks can develop at microstructure at an early stage and then propagate due
-
; in particular medicine and the development of new pharmaceutical compounds. This project will involve the synthesis of functionalised magnetic Nano-particles designed to bind a single target protein
-
round Details The future of machining lies in the fully autonomous machine tool. New technologies must be developed that predict, sense and action intelligent decisions autonomously. Digital twins are one