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Accident diagnosis of a PWR fuel pin during unprotected loss of flow accident with support vector machine

机译:支持向量机在无保护的流量损失事故中对PWR燃料销的事故诊断

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摘要

In this study, we conducted various flow rate change simulations for a fuel pin during unprotected LOFA using MARS. The obtained transient outlet temperature profiles were used to establish a relationship with peak fuel temperatures and flow rate changes, using Support Vector Machine (SVM). Unless the number of training data is scarce, the SVM trained with the core outlet temperature gives an accurate prediction (R-2 > 0.9) for peak cladding surface temperature, and mass flow rate changes in the early phase of LOFA transience (similar to 0.5 s). It illuminates that key accident characteristics are well reflected in the early response of reactor core behavior (i.e., core outlet temperature). This implies that the possibility of (1) realizing an accident diagnosis framework different from today's practice which relies on the accumulated response of reactor behavior over an extended accident progression, and (2) providing an effective guideline for accident mitigation strategies in the early phase of accident progression. The high predictability (i.e., R-2 > 0.9) presented in the early phase of unprotected LOFA indicates core outlet temperature is strongly correlated to both flow rate change, and peak cladding surface temperature during the entire transience. With these strong correlations between different physical parameters, the traditional boundaries of physical locations and physical quantities in detecting accident response and progression may be reduced, allowing the possibility of interdependent detector systems.
机译:在这项研究中,我们使用MARS对无保护的LOFA期间的燃料销进行了各种流速变化模拟。使用支持向量机(SVM),将获得的瞬态出口温度曲线用于与峰值燃料温度和流量变化建立关系。除非缺乏训练数据,否则用核心出口温度训练的SVM可以准确预测(R-2> 0.9)峰值包层表面温度,以及LOFA瞬态早期的质量流率变化(约0.5) s)。它说明了关键事故特征已很好地反映在反应堆堆芯行为的早期响应(即堆芯出口温度)中。这意味着(1)实现与当今实践不同的事故诊断框架的可能性,该框架依赖于反应堆行为在扩展的事故发展过程中的累积响应,并且(2)为早期阶段的事故缓解策略提供有效的指导事故进展。未保护的LOFA的早期阶段具有较高的可预测性(即R-2> 0.9),这表明纤芯出口温度与整个瞬态过程中的流量变化以及包层表面峰值温度均密切相关。通过不同物理参数之间的这些强相关性,可以减少检测事故响应和进展时物理位置和物理量的传统边界,从而允许相互依赖的检测器系统的可能性。

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