Spatially resolved star formation and fuelling in galaxy interactions
Jorge Moreno, Paul Torrey, Sara L. Ellison, David R. Patton, Connor, Bottrell, Asa F. L. Bluck, Maan H. Hani, Christopher C. Hayward, James S., Bullock, Philip F. Hopkins, Lars Hernquist

TL;DR
This study uses high-resolution galaxy merger simulations to analyze how interactions influence the spatial distribution of star formation and gas, revealing that close encounters enhance central and extended star formation depending on gas availability and efficiency.
Contribution
It provides detailed, spatially-resolved predictions of star formation and gas dynamics during galaxy interactions using advanced simulations with realistic feedback models.
Findings
Close encounters increase cold gas and star formation, especially in the centers.
Star formation enhancement is mainly fuel-driven, while suppression is efficiency-driven.
Galaxies with higher SFR show intense nuclear star formation, linked to gas availability and efficiency.
Abstract
We investigate the spatial structure and evolution of star formation and the interstellar medium (ISM) in interacting galaxies. We use an extensive suite of parsec-scale galaxy merger simulations (stellar mass ratio = 2.5:1), which employs the "Feedback In Realistic Environments-" model (fire-2). This framework resolves star formation, feedback processes, and the multi-phase structure of the ISM. We focus on the galaxy-pair stages of interaction. We find that close encounters substantially augment cool (HI) and cold-dense (H2) gas budgets, elevating the formation of new stars as a result. This enhancement is centrally-concentrated for the secondary galaxy, and more radially extended for the primary. This behaviour is weakly dependent on orbital geometry. We also find that galaxies with elevated global star formation rate (SFR) experience intense nuclear SFR enhancement, driven by high…
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