Machine learning techniques for astrophysical modelling and photometric redshift estimation of quasars in optical sky surveys
N. Daniel Kumar

TL;DR
This paper explores machine learning methods like neural networks and genetic algorithms to analyze astronomical phenomena and estimate quasar distances, enhancing astrophysical research and large sky survey analysis.
Contribution
It demonstrates the effectiveness of ML techniques such as GAs, PSO, ANNs, and RBFNs in modeling complex astrophysical problems and estimating quasar redshifts from survey data.
Findings
GAs and PSO efficiently model non-linear functions.
ANNs and RBFNs effectively predict quasar redshifts.
ML techniques improve understanding of cosmic structures.
Abstract
Machine learning techniques are utilised in several areas of astrophysical research today. This dissertation addresses the application of ML techniques to two classes of problems in astrophysics, namely, the analysis of individual astronomical phenomena over time and the automated, simultaneous analysis of thousands of objects in large optical sky surveys. Specifically investigated are (1) techniques to approximate the precise orbits of the satellites of Jupiter and Saturn given Earth-based observations as well as (2) techniques to quickly estimate the distances of quasars observed in the Sloan Digital Sky Survey. Learning methods considered include genetic algorithms, particle swarm optimisation, artificial neural networks, and radial basis function networks. The first part of this dissertation demonstrates that GAs and PSO can both be efficiently used to model functions that are…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research · Astronomical Observations and Instrumentation
