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Cognitive R-Tree for stabilizing temperature and load induced gain shifts of scintillation detectors

机译:用于稳定温度和负载引起的闪烁探测器增益漂移的认知R树

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A stabilization concept based on a self-learning R-Tree index method is presented and demonstrated with measurements from a 1.5×1.5 cerium bromide detector. The concept uses a cognitive filter, a digital filter for nuclear signals that continuously updates itself to the current temperature by adjusting the filter components. The R-Tree combines the information from this cognitive filter together with (a) data about the temperature gradient, (b) the current load on the detector in terms of counts per second and (c) the current gain shift, which is determined from the spectrum. This technique consequently belongs to the so-called supervised learning algorithms, because the source is known in advance. The method is characterised by two operational phases. First a training in an industrial grade climate chamber and with selected strong radiation fields are conducted, which is a common procedure for producing spectroscopic equipment, building a base set of data points in the R-Tree. Second, the R-Tree learning does not stop here. It continues during the whole instrument lifetime. Each time a manual calibration is launched with a known (pre-selected) source, all data for adding new training information is available and the R-Tree is updated. The instrument learns while being in the field. Tests with a cerium bromide and a sodium iodide detector are shown for a prototype system and for a complete commercial radio-isotope identification device. Limits of the stabilization are determined.
机译:提出了一种基于自学习R树索引方法的稳定概念,并通过1.5×1.5溴化铈检测器的测量结果进行了演示。该概念使用认知过滤器,一种用于核信号的数字过滤器,通过调整过滤器组件将其自身不断更新为当前温度。 R-Tree将来自此认知过滤器的信息与(a)有关温度梯度的数据,(b)以每秒计数为单位的检测器上的当前负载和(c)当前增益偏移结合在一起,该值由频谱。因此,该技术属于所谓的监督学习算法,因为其来源是事先已知的。该方法的特征在于两个操作阶段。首先,在工业级气候箱中进行训练,并选择强辐射场,这是生产光谱设备的通用程序,在R树中建立基本的数据点集。其次,R-Tree学习不止于此。它会在整个仪器寿命期内持续。每次使用已知的(预先选择的)来源启动手动校准时,用于添加新训练信息的所有数据均可用,并且R-Tree被更新。仪器在野外学习。显示了使用溴化铈和碘化钠检测器进行的原型系统和完整的商用放射性同位素识别设备的测试。确定稳定的极限。

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