Noema formIng Cluster survEy (NICE): A Census of Star Formation and Cold Gas Properties in Massive protoclusters at 1.5<z<4
Luwenjia Zhou, Tao Wang, Emanuele Daddi, Rosemary Coogan, Hanwen Sun, Ke Xu, Vinodiran Arumugam, Shuowen Jin, Daizhong Liu, Shiying Lu, Nikolaj Sillassen, Sicen Guo, Guillaume Elias, Yijun Wang, Yong Shi, Zhi-Yu Zhang, Qinghua Tan, Qiusheng Gu, David Elbaz, Aurelien Henry

TL;DR
This study systematically investigates star formation and cold gas properties in eight high-redshift protoclusters, revealing that increased star formation rates are driven by gas-rich, massive galaxies concentrated in cores, shedding light on early galaxy formation.
Contribution
First homogeneous, large-sample analysis of protocluster galaxies at z~1.5-4, linking gas content and star formation to cluster core assembly.
Findings
Star formation rate per halo mass increases steeply with redshift.
Massive protocluster galaxies have higher gas fractions than field counterparts.
Star-forming galaxies in protoclusters are mainly concentrated in cores.
Abstract
Massive protoclusters at z~1.5-4, the peak of the cosmic star formation history, are key to understanding the formation mechanisms of massive galaxies in today's clusters. However, studies of protoclusters at these high redshifts remain limited, primarily due to small sample sizes and heterogeneous selection criteria. In this work, we conduct a systematic investigation of the star formation and cold gas properties of member galaxies of eight massive protoclusters in the COSMOS field, using the statistical and homogeneously selected sample from the Noema formIng Cluster survEy (NICE). Our analysis reveals a steep increase in the star formation rates per halo mass () with redshifts in these intensively star-forming protoclusters, reaching values one to two orders of magnitude higher than those observed in the field at z>2. We further show that, instead of…
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