Improving GNSS measurements of Australia’s deformation using machine learning
Project overview
Project title
Improving GNSS measurements of Australia’s deformation using machine learning.
Project description
This Project will improve the accuracy of estimates of Australia’s 3D motion and deformation using machine learning methods. This will apply new methods to hundreds of Global Navigation Satellite System (GNSS) sites to improve understanding of Australia’s vertical land motion and sea level research. This may improve satellite positioning products used by Australian industry, government and researchers.
Supervisory team
University
Name of university supervisor | Matt King |
Name of university | University of Tasmania |
Email address | Matt.King@utas.edu.au |
Faculty | College of Sciences and Engineering |
CSIRO
Name of CSIRO supervisor | Daniel Smith |
Email address | Daniel.V.Smith@data61.csiro.au |
CSIRO Research Unit | Data61 |
Industry
Name of industry supervisor | Anna Riddell |
Name of business/organisation | Geoscience Australia |
Email address | Anna.Riddell@ga.gov.au |
Further details
Primary location of student | University of Tasmania, Churchill Avenue, Sandy Bay TAS 7001, Australia |
Industry engagement component location | Geoscience Australia, Corner of Jerrabomberra Avenue and Hindmarsh Drive, Symonston ACT 2609, Australia |
Other locations | CSIRO Sandy Bay, 15 College Road, Sandy Bay TAS 7005, Australia |
Ideal student skillset | Prior experience with machine learning or statistical techniques. Coding experience, ideally in python. Strong quantitative background in undergraduate studies, such as maths, computer science, engineering, or geodesy. Experience of working in a team environment. A strong background in research as indicated by Honours or Masters results or equivalent industry experience. |
Application close date | Open until position filled |
Apply | UTAS |
Previous post:
Coming up next:
End of list