Structure identification in cosmological simulations plays an important role in analysing simulation outputs. The definition of these structures directly impacts the inferred properties derived from these simulations. This paper proposes a more straightforward definition and model of structure by focusing on density peaks rather than halos and clumps. It introduces a new watershed algorithm that uses phase-space analysis to identify structures, especially in complex environments where traditional methods may struggle due to spatially overlapping structures. Additionally, a merger tree code is introduced to track density peaks across timesteps, making use of the boosted potential for identifying the most bound particles for each peak.
@article{arxiv.2501.08399,
title = {Constructing Merger Trees of Density Peaks Using Phase-Space Watershed Segmentation Algorithm},
author = {Robel Geda and Romain Teyssier},
journal= {arXiv preprint arXiv:2501.08399},
year = {2025}
}