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Identifying Nuclear Proliferation Using Inter-facility Material Transportation and Machine Learning Classification

机译:利用设施间材料运输和机器学习分类识别核扩散

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In this paper we discuss a proof-of-concept statistical analysis of a nuclear fuel diversion scenario using only data representing material transportation between facilities. We represent these material transactions between facilities in units of shipping containers, which would be identifiable in the real world via satellite imagery. This approach is potentially advantageous because acquiring satellite data is minimally invasive and available even when IAEA inspectors are denied access to a site. We present a computational model that represents the nuclear fuel cycle for a clandestine nuclear pursuer based on a fuel diversion scenario. This model is built using Cyclus, an agent-based fuel cycle software tool that simulates material transactions based on facility requests. Previous work in Cyclus includes a study of complex fuel diversion pathways involving production of plutonium and highly enriched uranium and a study of machine learning classification for a simple diversion scheme. We expand on this previous work by introducing and limiting analysis to transportation between facilities. Using transportation data, we analyze the performance of various statistical methods in classifying the presence of nuclear material diversion, including simple and more advanced machine learning techniques. In our analysis, we address the following questions: Is it possible to reliably classify diversion using only shipping container unit data? What diversion scenarios are easier to hide relative to others based on this metric? In answering these questions, this study demonstrates the power of statistical analysis for nuclear nonproliferation problems.
机译:在本文中,我们讨论了核燃料转移方案的概念验证统计分析,仅使用代表设施之间材料运输的数据。我们以集装箱为单位表示设施之间的这些重大交易,这些交易在现实世界中可以通过卫星图像识别。这种方法可能是有利的,因为获取卫星数据的侵入性很小,即使国际原子能机构核查人员被拒绝访问某个地点,也可以使用。我们提出了一个计算模型,代表了一个秘密核追踪者基于燃料转移场景的核燃料循环。该模型使用Cyclus构建,Cyclus是一种基于代理的燃料循环软件工具,可根据设施请求模拟材料交易。Cyclus之前的工作包括研究涉及钚和高浓缩铀生产的复杂燃料转移途径,以及研究简单转移方案的机器学习分类。我们通过引入和限制设施间运输的分析来扩展之前的工作。利用运输数据,我们分析了各种统计方法在分类核材料转移方面的性能,包括简单和更先进的机器学习技术。在我们的分析中,我们解决了以下问题:仅使用海运集装箱单元数据是否有可能可靠地对分流进行分类?基于此指标,相对于其他情况,哪些转移场景更容易隐藏?在回答这些问题时,这项研究证明了统计分析对核不扩散问题的威力。

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