Uncertainty quantification and sensitivity analysis of a nuclear thermal propulsion reactor startup sequence
The research presented in this article describes progress in applying stochastic methods, uncertainty quantification, parametric studies, and variance-based sensitivity analysis (also known as Sobol sensitivity analysis) to a full-core model of a nuclear thermal propulsion (NTP) system simulated via...
| 出版年: | Frontiers in Nuclear Engineering |
|---|---|
| 主要な著者: | , |
| フォーマット: | 論文 |
| 言語: | 英語 |
| 出版事項: |
Frontiers Media S.A.
2025-10-01
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| 主題: | |
| オンライン・アクセス: | https://www.frontiersin.org/articles/10.3389/fnuen.2025.1628866/full |
| _version_ | 1848763421598679040 |
|---|---|
| author | Jackson R. Harter Mark D. DeHart |
| author_facet | Jackson R. Harter Mark D. DeHart |
| author_sort | Jackson R. Harter |
| collection | DOAJ |
| container_title | Frontiers in Nuclear Engineering |
| description | The research presented in this article describes progress in applying stochastic methods, uncertainty quantification, parametric studies, and variance-based sensitivity analysis (also known as Sobol sensitivity analysis) to a full-core model of a nuclear thermal propulsion (NTP) system simulated via the radiation transport code Griffin to simulate neutronics. Our goal is to develop a reduced-order (surrogate) model that can be rapidly sampled with perturbations to multiple input parameters. In this NTP system, reactivity and power feedback affect the rotation of control drums (CDs), which is itself controlled by a hybrid proportional-integral-derivative (PID) controller actuated by the power demand and reactivity feedback from the numerical model. This model uses reactor kinetic feedback (mean generation time [Λ] and effective delayed neutron fraction [βeff] from a transient Griffin simulation executed via Griffin’s improved quasi-static solver to provide the kinetic parameters) as inputs to functions that control the CD rotation angle. By investigating numerous stochastic approaches, we developed a dual-purpose surrogate model of the NTP system, using polynomial regression in the Multiphysics Object-Oriented Simulation Environment (MOOSE) Stochastic Tools Module (STM). The trained model can be rapidly sampled while simultaneously perturbing various input parameters, such as coefficients on the PID control or temperature (directly affecting the neutron cross section). The surrogate model delivers accurate (within 5%) results at speeds orders of magnitude faster (minutes, not days of computational time) than the base model. Once the surrogate model has been trained, distributions of the uncertain parameters can be changed at will to investigate the effects of perturbing multiple inputs as well as the effects of these inputs on the model output. For example, coefficients used in the PID control system may vary due to some type of physical interference, or uncertainty may exist in the temperature of the neutron cross sections in various regions of the reactor. A distribution can be placed on these parameters, and operational boundaries can be determined. The goal of this work is to support development of an advanced control system for operating CDs in a functioning NTP system. This work is a scoping study of the MOOSE STM. |
| format | Article |
| id | doaj-art-bfa3fcd43f974123adccdb74ef5a083b |
| institution | Directory of Open Access Journals |
| issn | 2813-3412 |
| language | English |
| publishDate | 2025-10-01 |
| publisher | Frontiers Media S.A. |
| record_format | Article |
| spelling | doaj-art-bfa3fcd43f974123adccdb74ef5a083b2025-10-08T11:48:41ZengFrontiers Media S.A.Frontiers in Nuclear Engineering2813-34122025-10-01410.3389/fnuen.2025.16288661628866Uncertainty quantification and sensitivity analysis of a nuclear thermal propulsion reactor startup sequenceJackson R. Harter0Mark D. DeHart1Reactor Physics and Shielding, Idaho National Laboratory, Idaho Falls, ID, United StatesDepartment of Nuclear Science and Engineering, Abilene Christian University, Abilene, TX, United StatesThe research presented in this article describes progress in applying stochastic methods, uncertainty quantification, parametric studies, and variance-based sensitivity analysis (also known as Sobol sensitivity analysis) to a full-core model of a nuclear thermal propulsion (NTP) system simulated via the radiation transport code Griffin to simulate neutronics. Our goal is to develop a reduced-order (surrogate) model that can be rapidly sampled with perturbations to multiple input parameters. In this NTP system, reactivity and power feedback affect the rotation of control drums (CDs), which is itself controlled by a hybrid proportional-integral-derivative (PID) controller actuated by the power demand and reactivity feedback from the numerical model. This model uses reactor kinetic feedback (mean generation time [Λ] and effective delayed neutron fraction [βeff] from a transient Griffin simulation executed via Griffin’s improved quasi-static solver to provide the kinetic parameters) as inputs to functions that control the CD rotation angle. By investigating numerous stochastic approaches, we developed a dual-purpose surrogate model of the NTP system, using polynomial regression in the Multiphysics Object-Oriented Simulation Environment (MOOSE) Stochastic Tools Module (STM). The trained model can be rapidly sampled while simultaneously perturbing various input parameters, such as coefficients on the PID control or temperature (directly affecting the neutron cross section). The surrogate model delivers accurate (within 5%) results at speeds orders of magnitude faster (minutes, not days of computational time) than the base model. Once the surrogate model has been trained, distributions of the uncertain parameters can be changed at will to investigate the effects of perturbing multiple inputs as well as the effects of these inputs on the model output. For example, coefficients used in the PID control system may vary due to some type of physical interference, or uncertainty may exist in the temperature of the neutron cross sections in various regions of the reactor. A distribution can be placed on these parameters, and operational boundaries can be determined. The goal of this work is to support development of an advanced control system for operating CDs in a functioning NTP system. This work is a scoping study of the MOOSE STM.https://www.frontiersin.org/articles/10.3389/fnuen.2025.1628866/fullnuclear thermal propulsionsensitivity analysisuncertainty quantificationinstrumentation and controlautonomous controlnuclear systems |
| spellingShingle | Jackson R. Harter Mark D. DeHart Uncertainty quantification and sensitivity analysis of a nuclear thermal propulsion reactor startup sequence nuclear thermal propulsion sensitivity analysis uncertainty quantification instrumentation and control autonomous control nuclear systems |
| title | Uncertainty quantification and sensitivity analysis of a nuclear thermal propulsion reactor startup sequence |
| title_full | Uncertainty quantification and sensitivity analysis of a nuclear thermal propulsion reactor startup sequence |
| title_fullStr | Uncertainty quantification and sensitivity analysis of a nuclear thermal propulsion reactor startup sequence |
| title_full_unstemmed | Uncertainty quantification and sensitivity analysis of a nuclear thermal propulsion reactor startup sequence |
| title_short | Uncertainty quantification and sensitivity analysis of a nuclear thermal propulsion reactor startup sequence |
| title_sort | uncertainty quantification and sensitivity analysis of a nuclear thermal propulsion reactor startup sequence |
| topic | nuclear thermal propulsion sensitivity analysis uncertainty quantification instrumentation and control autonomous control nuclear systems |
| url | https://www.frontiersin.org/articles/10.3389/fnuen.2025.1628866/full |
| work_keys_str_mv | AT jacksonrharter uncertaintyquantificationandsensitivityanalysisofanuclearthermalpropulsionreactorstartupsequence AT markddehart uncertaintyquantificationandsensitivityanalysisofanuclearthermalpropulsionreactorstartupsequence |
