Galaxy cluster characterization with machine learning techniques
Maria Sadikov, Julie Hlavacek-Larrondo, Laurence Perreault Levasseur,, Carter Lee Rhea, Michael McDonald, Michelle Ntampaka, John ZuHone

TL;DR
This paper demonstrates that machine learning techniques, including clustering, regression, and simulation-based inference, can effectively classify and analyze galaxy clusters using X-ray data from simulations, aiding future large-scale surveys.
Contribution
The study introduces a neural network approach to classify galaxy clusters and predict their properties from X-ray images, showing high accuracy and viability for upcoming surveys.
Findings
Unsupervised clustering aligns with traditional classification metrics.
ResNet achieves 1.8% error in predicting cooling time.
Neural network accurately predicts multiple cluster properties simultaneously.
Abstract
We present an analysis of the X-ray properties of the galaxy cluster population in the z=0 snapshot of the IllustrisTNG simulations, utilizing machine learning techniques to perform clustering and regression tasks. We examine five properties of the hot gas (the central cooling time, the central electron density, the central entropy excess, the concentration parameter, and the cuspiness) which are commonly used as classification metrics to identify cool core (CC), weak cool core (WCC) and non cool core (NCC) clusters of galaxies. Using mock Chandra X-ray images as inputs, we first explore an unsupervised clustering scheme to see how the resulting groups correlate with the CC/WCC/NCC classification based on the different criteria. We observe that the groups replicate almost exactly the separation of the galaxy cluster images when classifying them based on the concentration parameter. We…
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Taxonomy
TopicsGrey System Theory Applications · Geochemistry and Geologic Mapping · Advanced Clustering Algorithms Research
