MAMPOSSt: Modelling Anisotropy and Mass Profiles of Observed Spherical Systems. I. Gaussian 3D velocities
Gary A. Mamon (1), Andrea Biviano (2), Gwena\"el Bou\'e (3) ((1), IAP, Paris, (2) OATS, Trieste, (3) Univ. of Chicago)

TL;DR
MAMPOSSt is a fast, maximum likelihood method for modeling mass profiles and velocity anisotropy in spherical systems, effectively overcoming degeneracies and applicable to various astrophysical systems.
Contribution
It introduces a new rapid technique, MAMPOSSt, that models mass and anisotropy profiles assuming Gaussian 3D velocities without binning or extrapolation, outperforming existing methods in speed and accuracy.
Findings
MAMPOSSt accurately recovers key parameters with small bias.
The method is up to 1000 times faster than previous techniques.
It performs well even with different interloper removal schemes.
Abstract
Mass modelling of spherical systems through internal motions is hampered by the mass/velocity anisotropy (VA) degeneracy inherent in the Jeans equation, as well as the lack of techniques that are both fast and adaptable to realistic systems. A new fast method, called MAMPOSSt, which performs a maximum likelihood fit of the distribution of observed tracers in projected phase space, is developed and thoroughly tested. MAMPOSSt assumes a shape for the gravitational potential, but instead of postulating a shape for the distribution function in terms of energy and angular momentum, or supposing Gaussian line-of-sight velocity distributions, MAMPOSSt assumes a VA profile and a shape for the 3D velocity distribution, here Gaussian. MAMPOSSt requires no binning, differentiation, nor extrapolation of the observables. Tests on cluster-mass haloes from LambdaCDM cosmological simulations show that,…
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