首页> 外文会议>International topical meeting on probabilistic safety assessment and analysis >BAYESIAN CALIBRATION OF SAFETY CODES USING DATA FROM SEPARATE-AND INTEGRAL EFFECTS TESTS
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BAYESIAN CALIBRATION OF SAFETY CODES USING DATA FROM SEPARATE-AND INTEGRAL EFFECTS TESTS

机译:使用单独和整体效果测试中的数据进行安全代码的贝叶斯校准

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Large-scale "system" codes for simulation of safety performance of industrial facilities such as nuclear plants may contain parameters whose values are not known very accurately. In order to be able to use the results of these simulation codes with confidence, it is important to learn how the uncertainty on the values of these parameters affects the output of the codes. New information from tests or operating experience is incorporated into safety codes by a process known as "calibration," which reduces uncertainty in the output of the safety code, and thereby improves its support for decision-making. Modern analysis capabilities potentiate very significant improvements on classical ways of doing calibration, and the work reported here implements some of those improvements. The key innovation has come from development of safety code surrogate model (code emulator) construction and prediction algorithms. A surrogate is needed for calibration of plant-scale simulation codes because the multivariate nature of the problem (the need to adjust multiple uncertain parameters at once to fit multiple pieces of new information) calls for multiple evaluations of performance, which makes calibration very computation-intensive in principle. Currently, use of a fast surrogate makes the calibration processes used here with Markov Chain Monte Carlo (MCMC) sampling feasible. Moreover, most traditional surrogates do not provide uncertainty information along with their predictions, but the Gaussian Process (GP) based code surrogates used here do. This improves the soundness of the code calibration process. Results are demonstrated on a simplified scenario with data from Separate and Integral Effect Tests.
机译:用于模拟工业设施(例如核电厂)的安全性能的大规模“系统”代码可能包含其值不太准确的参数。为了能够放心地使用这些仿真代码的结果,重要的是要了解这些参数值的不确定性如何影响代码的输出。来自测试或操作经验的新信息通过称为“校准”的过程合并到安全代码中,该过程可减少安全代码输出中的不确定性,从而改善其对决策的支持。现代分析功能可对经典的校准方法进行非常显着的改进,此处报告的工作实现了其中的一些改进。关键创新来自安全代码替代模型(代码仿真器)构造和预测算法的开发。工厂规模的仿真代码的校准需要一个替代方法,因为问题的多变量性质(需要一次调整多个不确定参数以适应多条新信息)需要对性能进行多次评估,这使得校准非常需要计算,原则上是密集的。当前,使用快速替代方法使此处用于马尔可夫链蒙特卡洛(MCMC)采样的校准过程变得可行。此外,大多数传统的代理人都不会随其预测一起提供不确定性信息,但是此处使用的基于高斯过程(GP)的代码代理人会提供不确定性信息。这提高了代码校准过程的可靠性。在简化的场景中使用来自单独和整体效果测试的数据演示了结果。

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