TL;DR
This paper investigates how non-Gaussian features of the epoch of reionization 21-cm signal affect the error covariance of its power spectrum, revealing significant contributions from the trispectrum and correlations between different scales.
Contribution
It provides a comprehensive analytical and simulation-based analysis of the error covariance matrix, highlighting the importance of non-Gaussianity and trispectrum effects in EoR 21-cm power spectrum measurements.
Findings
Trispectrum significantly increases error variance at certain scales.
Off-diagonal covariance terms are non-zero due to trispectrum.
Errors at large k are strongly correlated, small k errors are weakly correlated.
Abstract
The non-Gaussian nature of the epoch of reionization (EoR) 21-cm signal has a significant impact on the error variance of its power spectrum . We have used a large ensemble of semi-numerical simulations and an analytical model to estimate the effect of this non-Gaussianity on the entire error-covariance matrix . Our analytical model shows that has contributions from two sources. One is the usual variance for a Gaussian random field which scales inversely of the number of modes that goes into the estimation of . The other is the trispectrum of the signal. Using the simulated 21-cm signal ensemble, an ensemble of the randomized signal and ensembles of Gaussian random ensembles we have quantified the effect of the trispectrum on the error variance . We find that its relative contribution…
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