Demonstrating Large Low Noise Transition Edge Sensor Arrays for Future FIR Space Missions

Johannes Staguhn,Elmer Sharp,Ari D. Brown, Archana Devasia, W. B. Doriese,Malcolm Durkin, D. J. Fixsen,Suzanne T. Staggs, Felipe Colazo Petit,Kevin Denis,Mike DiPirro,Shannon M. Duff, J. Glenn, B. Harrop, Stephen F. Maher,Vilem Mikula,Peter C. Nagler,Edward J. Wollack

Research Square (Research Square)(2023)

引用 0|浏览10
暂无评分
摘要
Abstract The Astrophysics 2020 Decadal Report recommended a line of Probe missions with far-infrared imaging or spectroscopy capabilities. The achievable sensitivity of these FIR missions will be enabled by advanced cryogenic detector technologies, potentially resulting in up to three orders of magnitude improvement in sensitivity and mapping speeds up to more than a million times of those achieved so far with past missions. We have obtained NASA funding to build and demonstrate Transition Edge Sensor (TES) based kilopixel arrays with the properties that match the requirements for cryogenic far-infrared space missions: the arrays are very closely tileable in one direction and with a moderate gap in the other direction. This array architecture can meet the sampling- and pixel number requirement of a few 10 4 pixels. Many details of the architecture have already been demonstrated individually, and the detector board will be optimized for the use of the latest cryogenic NIST 2-D time domain SQUID readout multiplexers with a high density fanout scheme. Additionally, we will use flex-lines that are very similar to those developed at Princeton University for the ACT project. This method allows virtually unlimited tileability of the detector arrays and thus a compact detector/readout design for future FIR instrumentation requiring large pixel counts. We already have a pixel design which, if implemented with TES operating at less than 100mK, will meet the continuum sensitivity requirements for a cryogenic space mission. Furthermore, our array design will be compatible with lower noise TES designs for spectroscopy that already have been demonstrated.
更多
查看译文
关键词
sensor
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要