利用卫星星系观测对恒星与光环质量关系的低质量端进行约束

J. Sebastian Monzon, Frank C. van den Bosch and Kaustav Mitra
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摘要

卫星星系的丰度是由其宿主光环的分级组合决定的。我们利用这一点来研究恒星-光环质量关系(SHMR)的低质量端(MH < 1011M⊙),这是约束星系形成和宇宙学理论的关键。我们认为,最近对本星系群环境中卫星星系的分析没有充分模拟卫星恒星质量函数散射的主要来源:固定宿主光环质量下吸积历史的差异。我们提出了一个新颖的推理框架,它不仅能正确地解释这种光环间的差异,还能自然地识别通常未知的主光环质量混合量。具体地说,我们使用半解析 SatGen 模型来构建与第三次银河系类似卫星巡天观测数据发布相一致的模拟卫星星系群。我们证明,即使在最理想化的情况下,光环与光环之间的差异也使得我们几乎不可能对SHMR的散度做出任何有意义的限制。即使是由100个宿主星系组成的卫星星系调查,也最多只能对散度给出0.5 dex的上限(置信度为95%)。这是因为在SHMR中,光环组装历史的巨大变异要比散度大。这个问题可以通过将巡天的样本量增加一个数量级(1000 个主星系)来解决,这在即将进行的光谱巡天中应该是相当直接的。
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Constraining the Low-mass End of the Stellar-to-halo Mass Relation with Surveys of Satellite Galaxies
The abundance of satellite galaxies is set by the hierarchical assembly of their host halo. We leverage this to investigate the low-mass end (MH < 1011M⊙) of the stellar-to-halo mass relation (SHMR), which is key to constraining theories of galaxy formation and cosmology. We argue that recent analyses of satellite galaxies in the Local Group environment have not adequately modeled the dominant source of scatter in satellite stellar mass functions: the variance in accretion histories for a fixed host halo mass. We present a novel inference framework that not only properly accounts for this halo-to-halo variance but also naturally identifies the amount of host halo mass mixing, which is generally unknown. Specifically, we use the semianalytical SatGen model to construct mock satellite galaxy populations consistent with the third data release of the Satellites Around Galactic Analogs survey. We demonstrate that even under the most idealized circumstances, the halo-to-halo variance makes it virtually impossible to put any meaningful constraints on the scatter in the SHMR. Even a satellite galaxy survey made up 100 hosts can at best only place an upper limit of ∼0.5 dex on the scatter (at the 95% confidence level). This is because the large variance in halo assembly histories dominates over the scatter in the SHMR. This problem can be overcome by increasing the sample size of the survey by an order of magnitude (∼1000 host galaxies), something that should be fairly straightforward with forthcoming spectroscopic surveys.
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