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首页> 外文期刊>Progress in Nuclear Energy >Optimization of regression model using principal component regression method in passive system reliability assessment
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Optimization of regression model using principal component regression method in passive system reliability assessment

机译:被动系统可靠性评估中主成分回归法的回归模型优化。

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The estimation of reliability of a passive system employed in innovative nuclear reactors has been a challenging assignment due to substantial involvement of natural convection and gravity in its function. This involvement warrants phenomenological failures to cast major influence on probabilistic safety assessment (PSA) of passive system. The phenomenological failures associated with passive systems cannot be evaluated directly by deterministic approach. Probabilistic method deploys thermal-hydraulic codes to evaluate availability of the system and generates simulated response surfaces comprising of large amount of data, which eventually consumes improbable computation time. Regression models can be used to generate large amount of data with limited number of thermal hydraulic code runs. To make regression models more effective, it is necessary to evaluate effect of each input parameter that goes into them. Isolated condenser system (ICS) is one of the passive systems used in nuclear reactors. The performance of ICS is evaluated by measuring a parameter called integrated power ratio (IPR) with use of regression models. In present study, these regression models are optimized using principal component regression (PCR) method. PCR method eliminates multi-collinearity present within input parameters and thus retains only those parameters which significantly affect the output. Results obtained by PCR method are compared to the outcome of hypothesis testing. The exercise indicates that under given design conditions, at least one input parameter can be omitted from the regression model without any significant effect on IPR. This makes ICS snore reliable due to reduction in its probability of failure owing to omission of a redundant input parameter.
机译:由于自然对流和重力极大地参与了其功能,因此对创新型核反应堆所采用的无源系统的可靠性进行估算是一项具有挑战性的任务。这种参与保证了现象学上的失败会对被动系统的概率安全评估(PSA)产生重大影响。与被动系统相关的现象学失败不能通过确定性方法直接评估。概率方法部署热工液压代码以评估系统的可用性,并生成包含大量数据的模拟响应面,这最终会耗费不可思议的计算时间。回归模型可用于生成数量有限的热液压代码运行次数的数据。为了使回归模型更有效,有必要评估其中每个输入参数的效果。隔离式冷凝器系统(ICS)是核反应堆中使用的无源系统之一。 ICS的性能是通过使用回归模型测量称为集成功率比(IPR)的参数来评估的。在本研究中,使用主成分回归(PCR)方法对这些回归模型进行了优化。 PCR方法消除了输入参数中存在的多重共线性,因此仅保留那些对输出有重大影响的参数。将通过PCR方法获得的结果与假设检验的结果进行比较。练习表明,在给定的设计条件下,可以从回归模型中忽略至少一个输入参数,而对IPR没有任何重大影响。由于减少了由于冗余输入参数而导致的故障可能性,因此使ICS打sn变得可靠。

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