Facility activity inference using networks of radiation detectors based on SPRT

N. Rao, C. Ramirez
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Abstract

We consider the problem of inferring the operational status of a reactor facility using measurements from a radiation sensor network deployed around the facility's ventilation off-gas stack. The intensity of stack emissions decays with distance, and the sensor counts or measurements are inherently random with parameters determined by the intensity at the sensor's location. We utilize the measurements to estimate the intensity at the stack, and use it in a one-sided Sequential Probability Ratio Test (SPRT) to infer on/off status of the reactor. We demonstrate the superior performance of this method over conventional majority fusers and individual sensors using (i) test measurements from a network of 21 NaI detectors, and (ii) effluence measurements collected at the stack of a reactor facility. We also analytically establish the superior detection performance of the network over individual sensors with fixed and adaptive thresholds by utilizing the Poisson distribution of the counts. We quantify the performance improvements of the network detection over individual sensors using the packing number of the intensity space.
基于SPRT的辐射探测器网络的设施活动推断
我们考虑了利用部署在反应堆通风废气烟囱周围的辐射传感器网络的测量来推断反应堆设施运行状态的问题。堆栈发射强度随距离衰减,传感器计数或测量本身是随机的,其参数由传感器位置的强度决定。我们利用测量值来估计堆栈处的强度,并将其用于单侧顺序概率比测试(SPRT)来推断反应器的开/关状态。我们使用(i)来自21个NaI探测器网络的测试测量,以及(ii)在反应堆设施堆栈收集的流出物测量,证明了该方法优于传统的大多数熔断器和单个传感器的性能。我们还利用计数的泊松分布,分析地建立了网络对具有固定阈值和自适应阈值的单个传感器的优越检测性能。我们使用强度空间的包装数来量化网络检测对单个传感器的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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