Radio Halo Detection in MWA Data using Deep Neural Networks and Generative Data Augmentation
Detecting diffuse radio emission, such as from halos, in galaxy clusters is crucial for understanding large-scale structure formation in the universe. Traditional methods, which rely on X-ray and Sunyaev-Zeldovich (SZ) cluster pre-selection, introduce biases that limit our understanding of the full...
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Zusammenfassung: | Detecting diffuse radio emission, such as from halos, in galaxy clusters is
crucial for understanding large-scale structure formation in the universe.
Traditional methods, which rely on X-ray and Sunyaev-Zeldovich (SZ) cluster
pre-selection, introduce biases that limit our understanding of the full
population of diffuse radio sources. In this work, we provide a possible
resolution for this astrophysical tension by developing a machine learning (ML)
framework capable of unbiased detection of diffuse emission, using a limited
real dataset like those from the Murchison Widefield Array (MWA). We generate
for the first time radio halo images using Wasserstein Generative Adversarial
Networks (WGANs) and Denoising Diffusion Probabilistic Models (DDPMs), and
apply them to train a neural network classifier independent of pre-selection
methods. The halo images generated by DDPMs are of higher quality than those
produced by WGANs. The diffusion-supported classifier with a multi-head
attention block achieved the best average validation accuracy of 95.93% over 10
runs, using 36 clusters for training and 10 for testing, without further
hyperparameter tuning. Using our classifier, we rediscovered 9/12 halos (75%
detection rate) from the MeerKAT Galaxy Cluster Legacy Survey (MGCLS)
Catalogue, and 5/8 halos (63% detection rate) from the Planck Sunyaev-Zeldovich
Catalogue 2 (PSZ2) within the GaLactic and Extragalactic All-sky MWA (GLEAM)
survey. In addition, we identify 11 potential new halos, minihalos, or
candidates in the COSMOS field using XMM-chandra-detected clusters in GLEAM
data. This work demonstrates the potential of ML for unbiased detection of
diffuse emission and provides labeled datasets for further study. |
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DOI: | 10.48550/arxiv.2411.15559 |