Reconstruction of the two-dimensional gravitational potential of galaxy clusters from X-ray and Sunyaev-Zel'dovich measurements
C. Tchernin, M. Bartelmann, K. Huber, A. Dekel, G. Hurier, C. L., Majer, S. Meyer, E. Zinger, D. Eckert, M. Meneghetti, J. Merten

TL;DR
This paper presents a method to jointly reconstruct the two-dimensional gravitational potential of galaxy clusters using X-ray, SZ, galaxy velocity, and lensing data, validated on simulations and real cluster observations.
Contribution
It introduces a novel joint reconstruction technique combining multiple observables and their covariances to accurately determine galaxy cluster potentials.
Findings
Reconstructed potentials from synthetic data are consistent with true potentials.
X-ray and SZ data jointly reproduce lensing-inferred potentials in real clusters.
The method effectively handles observational uncertainties through covariance matrices.
Abstract
The mass of galaxy clusters is not a direct observable, nonetheless it is commonly used to probe cosmological models. Based on the combination of all main cluster observables, that is, the X-ray emission, the thermal Sunyaev-Zel'dovich (SZ) signal, the velocity dispersion of the cluster galaxies, and gravitational lensing, the gravitational potential of galaxy clusters can be jointly reconstructed. We derive the two main ingredients required for this joint reconstruction: the potentials individually reconstructed from the observables and their covariance matrices, which act as a weight in the joint reconstruction. We show here the method to derive these quantities. The result of the joint reconstruction applied to a real cluster will be discussed in a forthcoming paper. We apply the Richardson-Lucy deprojection algorithm to data on a two-dimensional (2D) grid. We first test the 2D…
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