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Prediction of in-vessel debris bed properties in BWR severe accident scenarios using MELCOR and neural networks

机译:使用MELCOR和神经网络预测BWR严重事故场景中的船内碎片床特性

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Severe accident management strategy in Nordic boiling water reactors (BWRs) employs ex-vessel corium debris coolability. In-vessel core degradation and relocation provide initial conditions for further accident progression. Outcomes of core relocation depend on the interplay between (i) accident scenarios, e.g. timing and characteristics of failure and recovery of safety systems and (ii) accident phenomena. Uncertainty analysis is necessary for comprehensive risk assessment. However, computational efficiency of system analysis codes such as MELCOR is one of the big obstacles.The goal of this work is to develop a computationally efficient surrogate model (SM) for prediction of main characteristics of corium debris in the vessel lower plenum of a Nordic BWR. The SM has been developed using artificial neural networks (ANNs). The networks were trained with a database of MELCOR solutions. The effect of the noisy data in the full model (FM) database was addressed by introducing scenario classification (grouping) according to the ranges of the output parameters. SMs using different number of scenario groups with/without weighting between predictions of different ANNs were compared. The obtained SM can be used for failure domain and failure probability analysis in the risk assessment framework for Nordic BWRs.
机译:北欧沸水反应堆(BWR)的严重事故管理策略采用了前容器中的皮质残骸可冷却性。船内核心的退化和迁移为进一步的事故发展提供了初始条件。核心搬迁的结果取决于(i)事故场景之间的相互影响,例如安全系统故障和恢复的时间和特征以及(ii)事故现象。不确定性分析对于全面的风险评估是必要的。但是,诸如MELCOR之类的系统分析代码的计算效率是一大障碍。这项工作的目标是开发一种计算效率高的替代模型(SM),以预测北欧船只下腔室中珊瑚碎片的主要特征。 BWR。 SM是使用人工神经网络(ANN)开发的。使用MELCOR解决方案数据库对网络进行了培训。通过根据输出参数的范围引入方案分类(分组),解决了全模型(FM)数据库中嘈杂数据的影响。比较了使用不同数量的场景组的SM在不同ANN的预测之间具有/不具有权重的情况。获得的SM可用于北欧BWR风险评估框架中的故障域和故障概率分析。

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