The GREAT triggerless total data readout method

I. Lazarus, D. Appelbe, P. Butler, P. Coleman-Smith, J. Cresswell, S. Freeman, R. Herzberg, I. Hibbert, D. Joss, S. Letts, R. Page, V. Pucknell, P. Regan, J. Sampson, J. Simpson, J. Thornhill, R. Wadsworth
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引用次数: 137

Abstract

Recoil Decay Tagging (RDT) is a very powerful method for the spectroscopy of exotic nuclei. RDT is a delayed coincidence technique between detectors usually at the target position and at the focal plane of a spectrometer. Such measurements are often limited by dead time. This paper describes a novel triggerless data acquisition method which is being developed for the Gamma Recoil Electron Alpha Tagging (GREAT) spectrometer that overcomes this limitation by virtually eliminating dead time. Our solution is a Total Data Readout (TDR) method where all channels run independently and are associated in software to reconstruct events. The TDR method allows all the data from both target position and focal plane to be collected with practically no dead time losses. Each data word is associated with a timestamp generated from a global 100 MHz clock. Events are then reconstructed in real time in the event builder using temporal and spatial associations defined by the physics of the experiment.
GREAT无触发总数据读出方法
反冲衰变标记(RDT)是研究外来核光谱的一种非常有效的方法。RDT是探测器之间的延迟重合技术,通常在目标位置和光谱仪的焦平面上。这种测量常常受到死区时间的限制。本文介绍了一种新的无触发数据采集方法,该方法正在为伽马反冲电子α标记(GREAT)光谱仪开发,克服了这一限制,几乎消除了死区时间。我们的解决方案是总数据读出(TDR)方法,其中所有通道独立运行,并在软件中关联以重建事件。TDR方法允许从目标位置和焦平面收集所有数据,几乎没有死区时间损失。每个数据字都与从全局100mhz时钟生成的时间戳相关联。然后在事件构建器中使用实验物理定义的时间和空间关联实时重建事件。
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