首页> 外文期刊>Nuclear Engineering and Design >Reprint of 'Nuclear thermal-hydraulics applications illustrating the key roles of adjoint-computed sensitivities for overcoming the curse of dimensionality in sensitivity analysis, uncertainty quantification and predictive modeling'
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Reprint of 'Nuclear thermal-hydraulics applications illustrating the key roles of adjoint-computed sensitivities for overcoming the curse of dimensionality in sensitivity analysis, uncertainty quantification and predictive modeling'

机译:重印“核热工液压应用,说明伴随计算的灵敏度在克服灵敏度分析,不确定性量化和预测模型中的维数诅咒方面的关键作用”

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摘要

This work is dedicated to the memory of Prof. Bal Raj Sehgal who, while a Program Manager at the Electric Power Institute (EPRI) in Palo Alto, USA, had foresightedly funded during 1979-1984 the author's pioneering work on conceiving the adjoint sensitivity analysis methodology for computing first-order sensitivities of responses of nonlinear systems to imprecisely known system parameters, and applying this methodology to a variety of ground-breaking investigations in nuclear reactor physics, thermal-hydraulics, dynamics, and safety. In the spirit of this dedication, the present original work highlights the application of the first-order adjoint sensitivity analysis methodology (1st-ASAM) to the generic thermal-hydraulics model that underlies the well-known reactor analysis codes COBRA/TRAC, RELAP5/MOD3.2, RELAP5/MOD3.3, and MARS, thus deriving the corresponding adjoint sensitivity model needed for the exact and most efficient computation of model response sensitivities to thermal-hydraulics parameters. This work also presents the fundamental role of the 1st-ASAM as the first step in the quest to overcome the curse of dimensionality in sensitivity analysis, uncertainty quantification and predictive modelling by presenting the concepts of a novel predictive modeling methodology that uses the maximum entropy principle in conjunction with saddle-point techniques to eliminate the widespread current use of arbitrarily defined "functionals to be minimized," thus significantly extending the currently used data assimilations procedures. Since this novel predictive modeling methodology provides best-estimate results with reduced uncertainties for either forward or inverse problems, it has been called the BERRU-PM methodology. This work also indicates the next steps, starting with the complete second-order predictive modeling methodology, currently undertaken by the author in the quest to develop practical high-order procedures that overcome in practice the " curse of dimensionality" in sensitivity analysis, uncertainty quantification, and predictive modelling, thereby enabling the future computation of non-Gaussian features of otherwise intractable distributions of results predicted by large-scale computational model, while using experimental information to reduce the uncertainties in the predicted results and implicitly calibrated model parameters.
机译:这项工作是为了纪念Bal Raj Sehgal教授,他是美国帕洛阿尔托电力研究所(EPRI)的项目经理,曾在1979-1984年期间提供深远的资助,帮助作者构想了伴随灵敏度分析。用于计算非线性系统对不精确的已知系统参数的响应的一阶敏感度的方法,并将该方法应用于核反应堆物理,热工液压,动力学和安全性的各种开创性研究。本着这种奉献精神,本原始工作着重强调了将一阶伴随灵敏度分析方法(1st-ASAM)应用于通用热工液压模型,该模型是众所周知的反应堆分析代码COBRA / TRAC,RELAP5 / MOD3.2,RELAP5 / MOD3.3和MARS,从而得出准确而最有效的模型对热工液压参数的敏感度计算所需的相应的伴随灵敏度模型。这项工作还通过介绍使用最大熵原理的新型预测建模方法的概念,展示了1st-ASAM作为克服灵敏度分析,不确定性量化和预测建模中维数诅咒的第一步的基本作用。结合鞍点技术,消除了当前广泛使用的任意定义的“要最小化的功能”,从而大大扩展了当前使用的数据同化过程。由于这种新颖的预测建模方法可以为正向或逆向问题提供最佳的估计结果,并减少不确定性,因此它被称为BERRU-PM方法。这项工作还表明了下一步的工作,即从作者目前正在寻求开发实用的高阶程序的完整的二阶预测建模方法开始,这些程序可以在实践中克服敏感性分析,不确定性量化中的“维数诅咒”以及预测建模,从而使将来能够计算大规模计算模型预测的否则难以处理的结果分布的非高斯特征,同时使用实验信息来减少预测结果和隐式校准的模型参数的不确定性。

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