Constraining the X-ray heating and reionization using 21-cm power spectra with Marginal Neural Ratio Estimation

Author:

Saxena Anchal1ORCID,Cole Alex2,Gazagnes Simon3ORCID,Meerburg P Daniel1,Weniger Christoph2,Witte Samuel J24

Affiliation:

1. Van Swinderen Institute, University of Groningen , Nijenborgh 4, NL-9747 AG Groningen , the Netherlands

2. Gravitation Astroparticle Physics Amsterdam (GRAPPA), Institute for Theoretical Physics Amsterdam and Delta Institute for Theoretical Physics, University of Amsterdam , Science Park 904, NL-1098 XH Amsterdam , the Netherlands

3. Department of Astronomy, The University of Texas at Austin , 2515 Speedway, Stop C1400, Austin, TX 78712-1205 , USA

4. Departament de Física Quàntica i Astrofísica and Institut de Ciencies del Cosmos Universitat de Barcelona , Diagonal 647, E-08028 Barcelona , Spain

Abstract

ABSTRACT Cosmic Dawn (CD) and Epoch of Reionization (EoR) are epochs of the Universe which host invaluable information about the cosmology and astrophysics of X-ray heating and hydrogen reionization. Radio interferometric observations of the 21-cm line at high redshifts have the potential to revolutionize our understanding of the Universe during this time. However, modelling the evolution of these epochs is particularly challenging due to the complex interplay of many physical processes. This makes it difficult to perform the conventional statistical analysis using the likelihood-based Markov-Chain Monte Carlo (mcmc) methods, which scales poorly with the dimensionality of the parameter space. In this paper, we show how the Simulation-Based Inference through Marginal Neural Ratio Estimation (mnre) provides a step towards evading these issues. We use 21cmFAST to model the 21-cm power spectrum during CD–EoR with a six-dimensional parameter space. With the expected thermal noise from the Square Kilometre Array, we are able to accurately recover the posterior distribution for the parameters of our model at a significantly lower computational cost than the conventional likelihood-based methods. We further show how the same training data set can be utilized to investigate the sensitivity of the model parameters over different redshifts. Our results support that such efficient and scalable inference techniques enable us to significantly extend the modelling complexity beyond what is currently achievable with conventional mcmc methods.

Funder

NWO

European Research Council

Netherlands eScience Center

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

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