论文标题
带有Subaru HSC第二公共数据发布的光学选择簇的飞溅半径
The splashback radius of optically selected clusters with Subaru HSC Second Public Data Release
论文作者
论文摘要
文献中,来自RedMapper群集捕获算法的光学选择的星系簇的溅射半径的最新限制表明,观察到的飞溅半径为$ \ sim 20 \%$ $均小于N-Bodo仿真所预测的。 We present analyses on the splashback features around $\sim 3000$ optically selected galaxy clusters detected by the independent cluster-finding algorithm CAMIRA over a wide redshift range of $0.1<z_{\rm cl}<1.0$ from the second public data release of the Hyper Suprime-Cam (HSC) Subaru Strategic Program covering $\sim 427~{\rm群集目录的DEG}^2 $。我们从宽红移范围内的簇和光度星系之间的投影互相关测量中检测到飞溅功能,其中包括高红移簇的$ 0.7 <z _ {\ rm cl} <1.0 $,得益于深HSC图像。我们发现,来自红色银河系的约束仅比没有任何颜色的限制更精确,从而导致$ \ sim 15 \%$ $ 0.4 <z _ {\ rm cl} <0.7 $和$ 0.7 <z _ {\ rm cl} <1.0 $。这些约束与模型预测($ \ lyssim1σ$)更一致,其$ 20 \%$ $较小的值如先前对Redmapper的研究($ \ sim2σ$)所建议。我们还通过创建来自Halo占用分布模型的模拟星系目录,研究光聚集捕获算法对观察到的飞溅特征的选择效果,并发现这种效应是Camira群集互定算法的亚优势。我们还发现,类似Redmapper的聚类捕获算法在我们的模拟目录中诱导了较小的推断溅射半径,尤其是在较低的丰富度下,这可以很好地解释文献中较小的Splashback Radii。相反,在增加孔径大小时,这些偏见会大大减少。
Recent constraints on the splashback radius around optically selected galaxy clusters from the redMaPPer cluster-finding algorithm in the literature have shown that the observed splashback radius is $\sim 20\%$ smaller than that predicted by N-body simulations. We present analyses on the splashback features around $\sim 3000$ optically selected galaxy clusters detected by the independent cluster-finding algorithm CAMIRA over a wide redshift range of $0.1<z_{\rm cl}<1.0$ from the second public data release of the Hyper Suprime-Cam (HSC) Subaru Strategic Program covering $\sim 427~{\rm deg}^2$ for the cluster catalog. We detect the splashback feature from the projected cross-correlation measurements between the clusters and photometric galaxies over the wide redshift range, including for high redshift clusters at $0.7<z_{\rm cl}<1.0$, thanks to deep HSC images. We find that constraints from red galaxy populations only are more precise than those without any color cut, leading to $1σ$ precisions of $\sim 15\%$ at $0.4<z_{\rm cl}<0.7$ and $0.7<z_{\rm cl}<1.0$. These constraints are more consistent with the model predictions ($\lesssim 1σ$) than their $20\%$ smaller values as suggested by the previous studies with the redMaPPer ($\sim 2σ$). We also investigate selection effects of the optical cluster-finding algorithms on the observed splashback features by creating mock galaxy catalogs from a halo occupation distribution model, and find that such effects to be sub-dominant for the CAMIRA cluster-finding algorithm. We also find that the redMaPPer-like cluster-finding algorithm induces a smaller inferred splashback radius in our mock catalog, especially at lower richness, which can well explain the smaller splashback radii in the literature. In contrast, these biases are significantly reduced when increasing its aperture size.