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Practical considerations in modeling the low light response of photomultiplier tubes in large batch testing

机译:在大批量测试中对光电倍增管的低光响应建模的实际考虑

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Photomultiplier tubes continue to be a reliable, cost-effective means of detecting light produced by the interaction of subatomic particles with detectors. For detectors where the expected light yield is modest, characterizing the low light response of the tube is of paramount importance. Several phenomenological models addressing this issue exist. This paper presents side-by-side comparison between three such approaches as they arose from a large scale testing of tubes to be used by a Ring Imaging Cherenkov detector at Jefferson Lab. The main characteristics of the tubes, such as the gain, were found to be consistent within the expected uncertainties for all models considered. Leveraging the extensive nature of the study, a machine learning algorithm based on an artificial neural network capable of obtaining the tube characteristics directly from the raw ADC data was developed and trained. The trained neural network produced results fully compatible with the three models considered, with substantial savings in both computation time and experimenter overhead.
机译:光电倍增管仍然是检测亚原子粒子与检测器相互作用产生的光的可靠,具有成本效益的手段。对于预期的光通量适中的检测器,表征灯管的低光响应至关重要。存在一些解决此问题的现象学模型。本文对这三种方法进行了并排比较,它们是由杰斐逊实验室的环形成像Cherenkov检测器使用的试管大规模测试引起的。对于所有考虑的模型,发现管的主要特性(例如增益)在预期的不确定性范围内是一致的。利用这项研究的广泛性,开发并训练了一种基于人工神经网络的机器学习算法,该算法能够直接从原始ADC数据中获得电子管特性。经过训练的神经网络所产生的结果与所考虑的三个模型完全兼容,同时大大节省了计算时间和实验者的开销。

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