Clusternets: A deep learning approach to probe clustering dark energy
Abstract
Machine Learning (ML) algorithms are becoming popular in cosmology for extracting valuable information from cosmological data. In this paper, we evaluate the performance of a Convolutional Neural Network (CNN) trained on matter density snapshots to distinguish clustering Dark Energy (DE) from the cosmological constant scenario and to detect the speed of sound (cs) associated with clustering DE. We compare the CNN results with those from a Random Forest (RF) algorithm trained on power spectra. Varying the dark energy equation of state parameter wDE within the range of -0.7 to -0.99, while keeping cs2 = 1, we find that the CNN approach results in a significant improvement in accuracy over the RF algorithm. The improvement in classification accuracy can be as high as 40\% depending on the physical scales involved. We also investigate the ML algorithms' ability to detect the impact of the speed of sound by choosing cs2 from the set \1, 10-2, 10-4, 10-7\ while maintaining a constant w DE for three different cases: w DE ∈ \-0.7, -0.8, -0.9\. Our results suggest that distinguishing between various values of cs2 and the case where cs2=1 is challenging, particularly at small scales and when wDE≈ -1. However, as we consider larger scales, the accuracy of cs2 detection improves. Notably, the CNN algorithm consistently outperforms the RF algorithm, leading to an approximate 20\% enhancement in cs2 detection accuracy in some cases.
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