TL;DR
This paper introduces a new differentiable empirical model, Diffmah, for the mass assembly of dark matter halos that accurately captures individual and population growth, including assembly bias, using a simple power-law approach.
Contribution
The paper presents Diffmah, a novel 3-parameter, differentiable model that approximates halo growth with high accuracy and captures assembly diversity and bias, integrating seamlessly into analytical frameworks.
Findings
Achieves 0.1 dex accuracy for halos >10^11Msun
Replicates halo assembly bias accurately
Provides a differentiable implementation for integration into models
Abstract
We present a new empirical model for the mass assembly of dark matter halos. We approximate the growth of individual halos as a simple power-law function of time, where the power-law index smoothly decreases as the halo transitions from the fast-accretion regime at early times, to the slow-accretion regime at late times. Using large samples of halo merger trees taken from high-resolution cosmological simulations, we demonstrate that our 3-parameter model, Diffmah, can approximate halo growth with a typical accuracy of 0.1 dex for t > 1 Gyr for all halos of present-day mass greater than 10^11Msun, including subhalos and host halos in gravity-only simulations, as well as in the TNG hydrodynamical simulation. We additionally present a new model for the assembly of halo populations, DiffmahPop, which not only reproduces average mass growth across time, but also faithfully captures the…
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