Optimization of passive modular molten salt microreactor geometric perturbations using machine learning

被引:0
|
作者
Larsen, Andrew [1 ]
Lee, Ross [1 ]
Clayton, Braden [1 ]
Mercado, Edward [1 ]
Wright, Ethan [1 ]
Edgerton, Brent [2 ]
Gonda, Brian [1 ]
Memmott, Matthew [1 ]
机构
[1] Department of Chemical Engineering, Engineering Building (EB), Brigham Young University, Room 330, Provo,UT,84604, United States
[2] Department of Mechanical Engineering, Engineering Building (EB), Brigham Young University, Room 350, Provo,UT,84604, United States
关键词
Optimization;
D O I
10.1016/j.nucengdes.2024.113307
中图分类号
学科分类号
摘要
Nuclear reactors are vital to the global economy due to the large amounts of baseload power they can provide with minimal intermittence. However, these reactors are extremely complicated to design and build. Therefore, any improvement in the design process and timeline of nuclear reactor development would have a significant impact on the reactor design community and the world. In recent years, machine learning (ML) algorithms have gained popularity in handling difficult problems that previously required too much data or computational power to effectively solve. These include natural language processing, computer vision, and advanced process optimization. ML algorithms present a potentially powerful tool in the realm of reactor design and have already been implemented in some specific reactor design and operational optimization applications by researchers around the world. While these previous uses of ML algorithms are effective, they are very specific and a more generalized, and easily applied framework could potentially be used to accelerate the design of Gen IV reactors, reducing the workload of reactor designers and researchers. The development of such a versatile framework for reactor optimization using ML, CFD, and neutronic codes, and the validation of such, was the purpose of this work. The baseline reactor to be optimized was the BYU Molten Salt Micro-Reactor (Larsen et al., 2023). To establish this ML optimization, 35 training runs were completed using STARCCM + CFD software, and OpenMC neutronic modeling to generate data. The 3-dimensional cartesian data were extracted for each run, providing up to several million data points per training run. Moderator thickness, salt thickness, and moderator housing (plate) thickness were variables in the geometric optimization, and regressor type, data quantity per run, and training run quantity were variables in the model optimization. The model was first optimized by weighing model variables against train and test accuracy. This optimal model was then given 4096 geometric reactor iterations, and a temperature profile was predicted for each. The lowest-temperature option was chosen as lower temperature results in longer structural material life and less required secondary cooling expense, as well as more favorable neutronics. This result was then validated in CFD. The optimal reactor design surpassed all training runs by at least 220 K in maximum temperature, 85 K in average temperature, and 49 K in standard deviation of temperature. These represent significant improvement over all training designs and the baseline design. © 2024 Elsevier B.V.
引用
收藏
相关论文
共 50 条
  • [31] Heart disease prediction using machine learning, deep Learning and optimization techniques-A semantic review
    Bhavekar G.S.
    Das Goswami A.
    Vasantrao C.P.
    Gaikwad A.K.
    Zade A.V.
    Vyawahare H.
    Multimedia Tools and Applications, 2024, 83 (39) : 86895 - 86922
  • [32] Levelized Cost of Energy-Oriented Modular String Inverter Design Optimization for PV Generation System Using Geometric Programming
    Son, Yeongrack
    Mukherjee, Satyaki
    Mallik, Rahul
    Majmunovi'c, Branko
    Dutta, Soham
    Johnson, Brian
    Maksimovic, Dragan
    Seo, Gab-Su
    IEEE ACCESS, 2022, 10 : 27561 - 27578
  • [33] OPTIMIZATION OF THE DISTRIBUTOR SETUP IN AN AXIAL TURBINE AT SPEED-NO-LOAD USING MACHINE LEARNING
    Kranenbarg, Jelle
    Jonsson, Pontus P.
    Mulu, Berhanu G.
    Sundstrom, Joel
    Cervantes, Michel J.
    PROCEEDINGS OF ASME 2024 FLUIDS ENGINEERING DIVISION SUMMER MEETING, VOL 1, FEDSM 2024, 2024,
  • [34] Refined Software Defect Prediction Using Enhanced JAYA Optimization and Extreme Learning Machine
    Pradhan, Debasish
    Muduli, Debendra
    Zamani, Abu Taha
    Yaqoob, Syed Irfan
    Alanazi, Sultan M.
    Kumar, Rakesh Ranjan
    Parveen, Nikhat
    Shameem, Mohammad
    IEEE ACCESS, 2024, 12 : 141559 - 141579
  • [35] Dynamic Population on Bio-Inspired Algorithms Using Machine Learning for Global Optimization
    Caselli, Nicolas
    Soto, Ricardo
    Crawford, Broderick
    Valdivia, Sergio
    Chicata, Elizabeth
    Olivares, Rodrigo
    BIOMIMETICS, 2024, 9 (01)
  • [36] Fully coupled end-to-end drilling optimization model using machine learning
    Hegde, Chiranth
    Pyrcz, Michael
    Millwater, Harry
    Daigle, Hugh
    Gray, Ken
    JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2020, 186
  • [37] Airfoil Analysis and Optimization Using a Petrov-Galerkin Finite Element and Machine Learning
    Areias, Pedro
    Correia, Rodrigo
    Melicio, Rui
    AEROSPACE, 2023, 10 (07)
  • [38] Cloud Workload and Data Center Analytical Modeling and Optimization Using Deep Machine Learning
    Daradkeh, Tariq
    Agarwal, Anjali
    NETWORK, 2022, 2 (04): : 643 - 669
  • [39] Color optimization of a core-shell nanoparticles layer using machine learning techniques
    Urquia, G. M.
    Inchaussandague, M. E.
    Skigin, D. C.
    RESULTS IN OPTICS, 2023, 10
  • [40] Artificial intelligence-based radiotherapy machine parameter optimization using reinforcement learning
    Hrinivich, William Thomas
    Lee, Junghoon
    MEDICAL PHYSICS, 2020, 47 (12) : 6140 - 6150