Flux dependence of redshift distribution and clustering of LOFAR radio sources
Nitesh Bhardwaj, Dominik J. Schwarz, Catherine L. Hale, Kenneth J., Duncan, Stefano Camera, Caroline S. Heneka, Szymon J. Nakoneczny, Huub J. A., R\"ottgering, Thilo M. Siewert, Prabhakar Tiwari, Jinglan Zheng, George, Miley, and Cyril Tasse

TL;DR
This study investigates how the flux density of LOFAR radio sources affects their redshift distribution and clustering properties, providing new insights into the large-scale structure of the universe at low frequencies.
Contribution
It presents the first flux-dependent analysis of redshift distribution and clustering length of LOFAR radio sources using deep field data and applies these findings to wide-area surveys.
Findings
Radio sources above 1 mJy have median redshift ≥ 0.9
Clustering length at 2 mJy is approximately 10.1 Mpc/h
Results agree with higher flux and frequency measurements
Abstract
In this work we study the flux density dependence of the redshift distribution of low-frequency radio sources observed in the LOFAR Two-metre Sky Survey (LoTSS) deep fields and apply it to estimate the clustering length of the large-scale structure of the Universe, examining flux density limited samples (1 mJy, 2 mJy, 4 mJy and 8 mJy) of LoTSS wide field radio sources. We utilise and combine the posterior probability distributions of photometric redshift determinations for LoTSS deep field observations from three different fields (Bo\"otes, Lockman hole and ELAIS-N1, together about square degrees of sky), which are available for between to of all sources above the studied flux density thresholds and observed in the area covered by multi-frequency data. We estimate uncertainties by a bootstrap method. We apply the inferred redshift distribution on the LoTSS wide area…
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