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首页> 外文期刊>Nuclear Instruments & Methods in Physics Research >Signal estimation and change detection in tank data for nuclear safeguards
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Signal estimation and change detection in tank data for nuclear safeguards

机译:用于核保障的储罐数据中的信号估计和变化检测

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Process monitoring (PM) is increasingly important in nuclear safeguards as a complement to mass-balance based nuclear materials accounting (NMA). Typically, PM involves more frequent but lower quality measurements than NMA. While NMA estimates special nuclear material (SNM) mass balances and uncertainties, PM often tracks SNM attributes qualitatively or in the case of solution monitoring (SM) tracks bulk mass and volume.Automatic event marking is used in several nuclear safeguards PM systems. The aims are to locate the start and stop times and signal changes associated with key events. This paper describes results using both real and simulated SM data to quantify the errors associated with imperfect marking of start and stop times of tank events such as receipts and shipments. In the context of safeguards, one can look both forward and backward in modest time intervals to recognize events. Event marking methods evaluated include differencing, multi-scale principal component analysis using wavelets, and piecewise linear regression (PLR). All methods are evaluated on both raw and smoothed data, and several smoothing options are compared, including standard filters, hybrid filters, and local kernel smoothing.The main finding for real and simulated examples considered is that a two-step strategy is most effective. First, any reasonably effective initial smoother is used to provide a good initial guess at change point locations. Second, PLR is applied, looking for one change point at a time. In contrast, PLR that allows for multiple change points simultaneously has worse performance.
机译:作为基于质量平衡的核材料核算(NMA)的补充,过程监控(PM)在核保障中越来越重要。通常,与NMA相比,PM涉及更频繁但质量较低的测量。虽然NMA估计特殊核材料(SNM)的质量平衡和不确定性,但PM经常定性地跟踪SNM属性,或者在溶液监测(SM)的情况下跟踪体积和体积。在几个核保障PM系统中使用自动事件标记。目的是确定与关键事件相关的开始和停止时间以及信号变化。本文使用真实和模拟的SM数据描述了结果,以量化与诸如收据和装运等油箱事件的开始和停止时间标记不完善相关的误差。在保障措施的背景下,人们可以在适当的时间间隔内向前和向后看以识别事件。评估的事件标记方法包括差分,使用小波的多尺度主成分分析以及分段线性回归(PLR)。所有方法都将在原始数据和平滑数据上进行评估,并比较了几种平滑选项,包括标准过滤器,混合过滤器和局部核平滑。考虑到的真实和模拟示例的主要发现是两步策略最有效。首先,任何合理有效的初始平滑器都可用于在更改点位置提供良好的初始猜测。其次,应用PLR,一次查找一个更改点。相反,同时允许多个更改点的PLR的性能较差。

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