Detection of Dipole Modulation in CMB Temperature Anisotropy Maps from WMAP and Planck using Artificial Intelligence
Md Ishaque Khan, Rajib Saha

TL;DR
This paper introduces a novel AI-based method using neural networks to detect dipole modulation in CMB temperature maps, achieving high accuracy and robustness across various datasets and cleaning methods, thus confirming the presence of statistical anisotropy.
Contribution
The study pioneers the use of artificial neural networks with local variance features to detect dipolar modulation in CMB maps, providing a new, independent approach to analyze cosmic anisotropy.
Findings
Neural networks predict dipole amplitude and direction with high accuracy (R^2 > 0.97).
Detected dipole modulation signals are statistically significant (97.21%-99.38% C.L.).
Results are consistent across different datasets, sky coverages, and cleaning methods.
Abstract
Breakdown of rotational invariance of the primordial power spectrum manifests in the statistical anisotropy of the observed Cosmic Microwave Background (CMB) radiation. Hemispherical power asymmetry in the CMB may be caused due to a dipolar modulation, indicating the presence of a preferred direction. Appropriately re-scaled local variance maps of the CMB temperature anisotropy data effectively encapsulate this dipolar pattern. As a first-of-its-kind method, we train Artificial Neural Networks (ANNs) with such local variances as input features to distinguish statistically isotropic CMB maps from dipole modulated ones. Our trained ANNs are able to predict components of the amplitude times the unit vector of the preferred direction for mixed sets of modulated and unmodulated maps, with goodness of fit () scores for full sky, and for partial sky coverage. On all…
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Taxonomy
TopicsGeomagnetism and Paleomagnetism Studies · Earthquake Detection and Analysis · Statistical and numerical algorithms
