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首页> 外文期刊>Annals of nuclear energy >Quantifying Uncertainties In The Estimation Of Safety Parameters By Using Bootstrapped Artificial Neural Networks
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Quantifying Uncertainties In The Estimation Of Safety Parameters By Using Bootstrapped Artificial Neural Networks

机译:通过自举神经网络量化安全参数估计中的不确定性

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摘要

For licensing purposes, safety cases of Nuclear Power Plants (NPPs) must be presented at the Regulatory Authority with the necessary confidence on the models used to describe the plant safety behavior. In principle, this requires the repetition of a large number of model runs to account for the uncertainties inherent in the model description of the true plant behavior. The present paper propounds the use of bootstrapped Artificial Neural Networks (ANNs) for performing the numerous model output calculations needed for estimating safety margins with appropriate confidence intervals. Account is given both to the uncertainties inherent in the plant model and to those introduced by the ANN regression models used for performing the repeated safety parameter evaluations. The proposed framework of analysis is first illustrated with reference to a simple analytical model and then to the estimation of the safety margin on the maximum fuel cladding temperature reached during a complete group distribution header blockage scenario in a RBMK-1500 nuclear reactor. The results are compared with those obtained by a traditional parametric approach.
机译:为了获得许可,必须向监管机构提交核电厂(NPP)的安全案例,并对描述电厂安全行为的模型具有必要的信心。原则上,这需要重复大量模型运行,以解决真实工厂行为的模型描述中固有的不确定性。本文提出使用自举人工神经网络(ANN)进行大量模型输出计算,以估计具有适当置信区间的安全裕度所需的模型。既考虑了工厂模型固有的不确定性,又考虑了用于执行重复安全参数评估的ANN回归模型引入的不确定性。首先参考一个简单的分析模型,然后参考一个RBMK-1500核反应堆的完整组分配集管堵塞情况下达到的最大燃料包壳温度的安全裕度的估算,来说明拟议的分析框架。将结果与通过传统参数方法获得的结果进行比较。

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