首页> 外文会议>IEEE Nuclear Science Symposium;Medical Imaging Conference >Machine Learning Applications for the Detection of Missing Radioactive Sources
【24h】

Machine Learning Applications for the Detection of Missing Radioactive Sources

机译:机器学习在检测放射源丢失中的应用

获取原文

摘要

The detection of missing radioactive material within a particular sample is advantageous for various applications of Materials Accountancy and Non-Destructive Assay. Examples of these applications include the monitoring of spent fuel pools and casks, as well as the inspection of fresh fuel assemblies. Currently employed methods for these processes include the use of passive or active gamma ray detection, where variation in detector responses are used to deduce if there is missing material and determine its expected location. This work investigates the feasibility of using machine learning algorithms for processing detection data in these scenarios to improve overall sensitivity. Preliminary simulated trials with a grid of nine 137Cs point sources and two NaI detectors show that a k-nearest neighbor algorithm can successfully predict the location of a missing source with 100% accuracy. Similar preliminary trials with up to two missing sources yielded an accuracy of 99%, suggesting that machine learning has promise for this application. These initial studies, as well as results with larger grids of sources, and trials with measurements taken in a laboratory setting are included.
机译:检测特定样品中缺少的放射性物质对于材料核算和非破坏性测定的各种应用是有利的。这些应用的例子包括对乏燃料池和桶的监控,以及对新燃料组件的检查。用于这些过程的当前采用的方法包括使用被动或主动伽马射线检测,其中检测器响应的变化用于推断是否缺少材料并确定其预期位置。这项工作研究了在这些情况下使用机器学习算法处理检测数据以提高整体灵敏度的可行性。包含9个网格的初步模拟试验 137 Cs点源和两个NaI检测器表明,k近邻算法可以100%准确地成功预测丢失源的位置。在多达两个缺失源的情况下进行的相似的初步试验得出的准确度为99%,这表明机器学习已为该应用程序带来了希望。这些初步研究,以及更大范围的光源结果,以及在实验室环境下进行测量的试验均包括在内。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号