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Dr PC Cowan

Top university

1 year ago

Untangling Minor Planet Families University of Auckland in New Zealand

Degree Level

PhD

Field of study

Computer Science

Funding

Fully Funded

Deadline

Expired

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Country

New Zealand

University

University of Auckland

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Where to contact

Official Email

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Keywords

Computer Science
Data Science
Machine Learning
Signal Processing
Mathematics
Mathematical Modeling
Astronomy
Astrophysics
Computational Physics
Python Programming
Fourier Analysis
Statistical Modelling
Physics

About this position

The Japan/New Zealand/US Microlensing Observations in Astrophysics (MOA) collaboration has been engaged with the detection of exoplanets via gravitational microlensing of over 25 years. This work has resulted in a large data archive of high cadence lightcurves of millions of objects. Many minor planets are also observed in the MOA fields. A sample of minor planet light curves has been derived from the MOA image data archive. This sample is ready for analysis. A starting point would be to perform an unsupervised classification process on this sample. This will result in the lightcurves being sorted into a number of distinct classes. The lightcurves in each class can be inspected for evidence of one or more interesting physical phenomena. These include: Active asteroids, where the asteroid's trajectory and/or rotation is modified by outgassing; slow-rotating asteroids, which are rare and poorly understood; asteroids displaying evidence of the YORP effect.

The candidate must have experience in:

  • Python programming
  • Basic astronomy and astrophysics
  • Experimental physics

Ideally, the candidate would have experience in:

  • Machine Learning
  • Signal processing, especially time series analysis, fourier analysis
  • Data modelling

The PhD candidate will undertake one or more of the following tasks.

  • Unsupervised clustering of asteroid and minor planet lightcurves in the MOA data archive
  • Categorisation of lightcurve classes based on class characteristics
  • Identification of slow rotator asteroids
  • Identification of active asteroids
  • Kinematic and positional investigation of solar system objects found.

Funding details

Fully Funded

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