דילוג לניווט ראשי דילוג לחיפוש דילוג לתוכן הראשי

Inferring IGM parameters from the redshifted 21-cm power spectrum using Artificial Neural Networks

  • Madhurima Choudhury
  • , Raghunath Ghara
  • , Saleem Zaroubi
  • , Benedetta Ciardi
  • , Leon V.E. Koopmans
  • , Garrelt Mellema
  • , Abinash Kumar Shaw
  • , Anshuman Acharya
  • , T. Iliev
  • , Qing Bo Ma
  • , Sambit K. Giri

פרסום מחקרי: פרסום בכתב עתמאמרביקורת עמיתים

תקציר

The high redshift 21-cm signal promises to be a crucial probe of the state of the intergalactic medium (IGM). Understanding the connection between the observed 21-cm power spectrum and the physical quantities intricately associated with the IGM is crucial to fully understand the evolution of our Universe. In this study, we develop an emulator using artificial neural network (ANN) to predict the 21-cm power spectrum from a given set of IGM properties, namely, the bubble size distribution and the volume averaged ionization fraction. This emulator is implemented within a standard Bayesian framework to constrain the IGM parameters from a given 21-cm power spectrum. We compare the performance of the Bayesian method to an alternate method using ANN to predict the IGM parameters from a given input power spectrum, and find that both methods yield similar levels of accuracy, while the ANN is significantly faster. We also use this ANN method of parameter estimation to predict the IGM parameters from a test set contaminated with noise levels expected from the SKA-LOW instrument after 1000 hours of observation. Finally, we train a separate ANN to predict the source parameters from the IGM parameters directly, at a redshift of z = 9.1, demonstrating the possibility of a non-analytic inference of the source parameters from the IGM parameters for the first time. We achieve high accuracies, with R2-scores ranging between 0.898-0.978 for the ANN emulator and between 0.966-0.986 and 0.817-0.981 for the predictions of IGM parameters from 21-cm power spectrum and source parameters from IGM parameters, respectively. The predictions of the IGM parameters from the Bayesian method incorporating the ANN emulator leads to tight constraints on the IGM parameters.

שפה מקוריתאנגלית
מספר המאמר003
כתב עתJournal of Cosmology and Astroparticle Physics
כרך2025
מספר גיליון6
מזהי עצם דיגיטלי (DOIs)
סטטוס פרסוםפורסם - 1 יוני 2025

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