灵敏度分析在DYMOND/Dakota燃料循环转换情景中的应用

IF 0.9 Q3 NUCLEAR SCIENCE & TECHNOLOGY EPJ Nuclear Sciences & Technologies Pub Date : 2021-01-01 DOI:10.1051/epjn/2021024
S. Richards, B. Feng
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引用次数: 1

摘要

通过与设计和分析工具包Dakota的耦合,核燃料循环模拟器DYMOND能够执行灵敏度分析。为了测试和演示这些新功能,设计了一个过渡场景和多参数研究。过渡方案代表了美国核舰队部分过渡到封闭燃料循环,使用小型模块化轻水堆和由后处理的乏燃料提供燃料的快堆。研究了这一转变中的四个不确定参数——后处理的开始日期、总后处理能力、核能需求增长和快堆部署速度——以及它们对四个响应指标的影响。所消耗的天然铀总量、所需的最大年浓缩能力、处置的总质量和核燃料循环的总成本等响应是根据已知与过渡情景[2]有关的措施选择的,这些措施受到不同参数的显著影响。本研究通过直接抽样和在达科他开发的替代模型进行分析,以计算全球敏感性测量Sobol指数。这个新功能的示例应用表明,对于大多数指标来说,最重要的参数是快速反应堆的新构建能力的份额。然而,对于成本指标,能源需求增长的比例因子显著,并与快堆新建份额具有协同行为。
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Application of sensitivity analysis in DYMOND/Dakota to fuel cycle transition scenarios
The ability to perform sensitivity analysis has been enabled for the nuclear fuel cycle simulator DYMOND through its coupling with the design and analysis toolkit Dakota. To test and demonstrate these new capabilities, a transition scenario and multi-parameter study were devised. The transition scenario represents a partial transition from the US nuclear fleet to a closed fuel cycle with small modular LWRs and fast reactors fueled by reprocessed used nuclear fuel. Four uncertain parameters in this transition were studied – start date of reprocessing, total reprocessing capacity, the nuclear energy demand growth, and the rate at which the fast reactors are deployed – with respect to their impact on four response metrics. The responses – total natural uranium consumed, maximum annual enrichment capacity required, total disposed mass, and total cost of the nuclear fuel cycle – were chosen based on measures known to be of interest in transition scenarios [2] and to be significantly impacted by the varying parameters. Analysis of this study was performed both from the direct sampling and through surrogate models developed in Dakota to calculate the global sensitivity measures Sobol’ indices. This example application of this new capability showed that the most consequential parameter to most metrics was the share of new build capacity that is fast reactors. However, for the cost metric, the scaling factor of the energy demand growth was significant and had synergistic behavior with the fast reactor new build share.
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来源期刊
EPJ Nuclear Sciences & Technologies
EPJ Nuclear Sciences & Technologies NUCLEAR SCIENCE & TECHNOLOGY-
CiteScore
1.00
自引率
20.00%
发文量
18
审稿时长
10 weeks
期刊最新文献
Technical note: stable and unstable reactors Templates of expected measurement uncertainties for neutron-induced capture and charged-particle production cross section observables Templates of expected measurement uncertainties for (n, xn) cross sections Templates of expected measurement uncertainties for total neutron cross-section observables Templates of expected measurement uncertainties for prompt fission neutron spectra
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