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Robust on-line diagnosis tool for the early accident detection in nuclear power plants

机译:用于核电厂早期事故检测的强大在线诊断工具

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摘要

Any loss of coolant accident mitigation strategy is necessarily bound by the promptness of the break detection as well as the accuracy of its diagnosis. The availability of on-line monitoring tools is then crucial for enhancing safety of nuclear facilities. The requirements of robustness and short latency implied by the necessity for fast and effective actions are undermined by the challenges associated with break prediction during transients.This study presents a novel approach to tackle the challenges associated with the on-line diagnostics of loss of coolant accidents and the limitations of the current state of the art. Based on the combination of a set of artificial neural network architectures through the use of Bayesian statistics, it allows to robustly absorb different sources of uncertainty without requiring their explicit characterization in input. It provides the quantification of the output confidence bounds but also enhances of the model response accuracy. The implemented methodology allows to relax the need for model selection as well as to limit the demand for user-defined analysis parameters. A numerical case-study entailing a 220 MWe heavy-water reactor is analysed in order to test the efficiency of the developed computational tool.
机译:冷却液事故缓解策略的任何损失都必须由中断检测的及时性及其诊断的准确性来约束。因此,在线监测工具的可用性对于增强核设施的安全至关重要。快速和有效动作的必要性所隐含的对鲁棒性和短等待时间的要求被瞬态过程中中断预测所带来的挑战所破坏。本研究提出了一种新颖的方法来应对与冷却剂事故损失在线诊断相关的挑战以及当前技术水平的局限性。基于一组使用贝叶斯统计量的人工神经网络体系结构的组合,它可以可靠地吸收不同的不确定性源,而无需在输入中进行明确的表征。它提供了输出置信范围的量化,还增强了模型响应的准确性。实施的方法可以放宽对模型选择的需求,并限制对用户定义的分析参数的需求。为了验证开发的计算工具的效率,对一个需要220 MWe重水反应堆的数值案例研究进行了分析。

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