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Coupled CLASS and DONJON5 3D full-core calculations and comparison with the neural network approach for fuel cycles involving MOX fueled PWRs

机译:耦合类和Donjon5 3D全核计算和与涉及MOX加油PWR的燃料循环的神经网络方法的比较

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The scenario code CLASS relies on infinite assembly simulation to predict fuel actinide inventories at exit burnup. In the current work, we replace these assembly calculations by full-core simulations and evaluate the impact on actinide inventories predicted by CLASS. To achieve this goal, we generate neural network training databanks for CLASS using the lattice code DRAGON5. For UOX fuels, the databanks are sampled stochastically for exit burnup, moderator boron concentration and uranium 235 enrichment while for MOX fuels an eight-dimensional grid is sampled that also accounts for plutonium and americium-241 initial contents. DRAGON5 is used to generate the databases for DONJON5 3D full-core diffusion calculations in CLASS. Results obtained using neural networks CLASS and DONJON5/CLASS calculations are then compared to assess the different assumptions used in classical scenario simulations and determine the major source of errors. A simple UOX scenario involving long-term fuel storage and a more complex scenario involving reprocessed UOX spent fuel and MOX fabrication are then studied. They show that inventories of uranium 235 and minor actinides are sensitive to full-core simulations. Moreover, the neural networks CLASS simulations can be improved using an adapted k(threshold) that depends on the initial fuel composition. (C) 2020 The Author(s). Published by Elsevier Ltd.
机译:方案代码类依赖于无限组装模拟,以预测出燃烧燃烧的燃料滑动性清单。在目前的工作中,我们通过全核模拟更换这些装配计算,并评估课堂上预测的actinide库存的影响。为实现这一目标,我们使用格子代码Dragon5为类生成神经网络培训数据库。对于UOX燃料,数据库被转移地对退出燃烧,主持人硼浓度和铀235件富集,而MOX燃料是一种八维网格,也被取样,该网格也占钚和Americ-241初始内容。 Dragon5用于在类中生成Donjon5 3D全核扩散计算的数据库。然后将使用神经网络类和Donjon5 / Class计算获得的结果来评估经典场景模拟中使用的不同假设,并确定错误的主要误差。然后研究了一个简单的UOX情景,涉及长期燃料储存和更复杂的情景,涉及再加工的UOX花费燃料和MOX制造。他们表明,铀235和轻微的散浮虫的库存对全核模拟敏感。此外,可以使用取决于初始燃料组合的适应性k(阈值)来改善神经网络类模拟。 (c)2020提交人。 elsevier有限公司出版

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