Characterizing Structure Formation through Instance Segmentation
Daniel L\'opez-Cano, Jens St\"ucker, Marcos Pellejero Iba\~nez, Ra\'ul, E. Angulo, Daniel Franco-Barranco

TL;DR
This paper introduces a machine learning framework that predicts the emergence and properties of dark matter haloes from initial density fields, enhancing understanding of cosmic structure formation.
Contribution
It presents a novel neural network-based instance segmentation approach to identify protohalo regions and predict their properties from initial conditions.
Findings
Accurately predicts halo masses and shapes
Reaches near-optimal information extraction compared to N-body simulations
Provides an open-source model for further research
Abstract
Dark matter haloes form from small perturbations to the almost homogeneous density field of the early universe. Although it is known how large these initial perturbations must be to form haloes, it is rather poorly understood how to predict which particles will end up belonging to which halo. However, it is this process that determines the Lagrangian shape of protohaloes and is therefore essential to understand their mass, spin and formation history. Here, we present a machine-learning framework to learn how the protohalo regions of different haloes emerge from the initial density field. This involves one neural network to distinguish semantically which particles become part of any halo and a second neural network that groups these particles by halo membership into different instances. This instance segmentation is done through the Weinberger method, in which the network maps particles…
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Taxonomy
TopicsDark Matter and Cosmic Phenomena · Astronomy and Astrophysical Research · Galaxies: Formation, Evolution, Phenomena
