利用边界监测伽马传感器探测低水平辐射源

S. Sen, N. Rao, C. Wu, R. Brooks, Christopher Temples
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引用次数: 1

摘要

我们考虑使用放置在监测区域外围的伽马光谱传感器网络检测低水平辐射源的问题。我们提出了一种计算轻量级的、基于关联的方法,主要用于计算能力有限的系统。传感器测量在融合时首先在每个时间步产生决策,然后在一个时间寡妇内进行多数投票。在每个时间步,使用两种策略生成决策:(i)基于从所有传感器测量得出的相关统计量的阈值决策的SUM方法,以及(ii)基于基于单个传感器测量的相关统计量的阈值决策的逻辑或或方法。我们推导了SUM和OR方法的虚警率的分析性能界限,并表明在一个时间窗口内多数投票的时间平滑提高了它们的性能。使用测试活动的测量结果,我们生成了一个边界监测场景,其中12个2“×2”NaI Gamma传感器部署在42 × 42 m2室外区域的外围。铯-137源沿着直线穿过这个区域,从几米外开始,最终远离这个区域。我们举例说明了两种基于相关性的检测方法的性能,并比较了它们之间的性能以及与粒子滤波方法的性能。总的来说,在较小的虚警条件下,OR融合具有更好的检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Low-level Radiation Sources Using Border Monitoring Gamma Sensors
We consider a problem of detecting a low-level radiation source using a network of Gamma spectral sensors placed on the periphery of a monitored region. We propose a computationally light-weight, correlation-based method which is primarily intended for systems with limited computing capacity. Sensor measurements are combined at the fusion by first generating decisions at each time step and then taking their majority vote within a time widow. At each time step, decisions are generated using two strategies: (i) SUM method based on a threshold decision on a correlation statistic derived from measurements from all sensors, and (ii) OR method based on logical-OR of threshold decisions based on correlations statistics of individual sensor measurements. We derive analytical performance bounds for false alarm rates of SUM and OR methods, and show that their performance is enhanced by the temporal smoothing of majority vote within a time window. Using measurements from a test campaign, we generate a border monitoring scenario with twelve 2" ×2" NaI Gamma sensors deployed on the periphery of 42 × 42 m2 outdoor region. A Cs-137 source is moved in a straight-line across this region, starting several meters outside and finally moving away from it. We illustrate the performance of both correlation-based detection methods, and compare their performances with each other and with a particle filter method. Overall, under small false-alarm conditions, the OR fusion is found to produce better detection performance.
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