A MAPS Based Micro-Vertex Detector for the STAR Experiment

探测器 物理 CMOS芯片 像素 消散 条状物 点间距 图像分辨率 CMOS传感器 电气工程 光学 计算机科学 光电子学 算法 工程类 热力学
作者
Joachim Schambach,E. Anderssen,Giacomo Contin,L. Greiner,J. Silber,T. Stezelberger,Xiangming Sun,Michal Szelezniak,F. Videbæk,C. Vu,H. H. Wieman,Sam Woodmansee
出处
期刊:Physics Procedia [Elsevier]
卷期号:66: 514-519 被引量:9
标识
DOI:10.1016/j.phpro.2015.05.067
摘要

For the 2014 heavy ion run of RHIC a new micro-vertex detector called the Heavy Flavor Tracker (HFT) was installed in the STAR experiment. The HFT consists of three detector subsystems with various silicon technologies arranged in 4 approximately concentric cylinders close to the STAR interaction point designed to improve the STAR detector's vertex resolution and extend its measurement capabilities in the heavy flavor domain. The two innermost HFT layers are placed at radii of 2.8 cm and 8 cm from the beam line. These layers are constructed with 400 high resolution sensors based on CMOS Monolithic Active Pixel Sensor (MAPS) technology arranged in 10-sensor ladders mounted on 10 thin carbon fiber sectors to cover a total silicon area of 0.16 m2. Each sensor of this PiXeL ("PXL") sub-detector combines a pixel array of 928 rows and 960 columns with a 20.7 μm pixel pitch together with front-end electronics and zero-suppression circuitry in one silicon die providing a sensitive area of ∼3.8 cm2. This sensor architecture features 185.6 μs readout time and 170 mW/cm2 power dissipation. This low power dissipation allows the PXL detector to be air-cooled, and with the sensors thinned down to 50 μm results in a global material budget of only 0.4% radiation length per layer. A novel mechanical approach to detector insertion allows us to effectively install and integrate the PXL sub-detector within a 12 hour period during an on-going multi-month data taking period. The detector requirements, architecture and design, as well as the performance after installation, are presented in this paper.
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