Uncertainty quantification of unconfined spill fire data by coupling Monte Carlo and artificial neural networks

被引:2
|
作者
Sahin, Elvan [1 ]
Lattimer, Brian [1 ]
Allaf, Mohammad Amer [2 ]
Duarte, Juliana Pacheco [2 ]
机构
[1] Virginia Polytech Inst & State Univ, Mech Engn, Blacksburg, VA USA
[2] Univ Wisconsin, Nucl Engn & Engn Phys, 1500 Engn Dr, Madison, WI 53706 USA
关键词
Spill fire; uncertainty quantification; sensitivity analysis; artificial neural network; Dakota; Monte Carlo; RISK ANALYSIS; HAZARD MODEL; SPREAD; BUILDINGS; FREQUENCY; BEHAVIORS;
D O I
10.1080/00223131.2024.2310564
中图分类号
TL [原子能技术]; O571 [原子核物理学];
学科分类号
0827 ; 082701 ;
摘要
Due to the complexity of spill fire, predicting heat release rate (HRR) is a challenging aspect, therefore, identifying key contributors to uncertainty is essential to develop reliable models for fire risk assessment. We propose a framework that couples Artificial-Neural-Network (ANN) and Monte Carlo Uncertainty Quantification (UQ) to quantify the uncertainties of spill fire parameters on peak HRR variance. The ANN spill fire model, trained on experimental spill fire data, shows good agreement with measured HRR values. By coupling with Dakota for Monte Carlo uncertainty propagation, the framework identifies major contributors to peak HRR uncertainty for fixed and continuous unconfined spill fires. This is achieved by investigating two uncertainty sources: data scarcity and input parameters. UQ results indicate that the confidence intervals widen at points where data are scarcer. Sensitivity analysis shows that in the case of fixed quantity spills, the fuel amount and properties parameters contribute to 54.4% and 22.6% of peak HRR variance, respectively. For continuous spills, the discharge rate and fuel properties parameters account for 41.8% and 39.3% of peak HRR variance, respectively. This work can be utilized in developing more advanced predictive ANN models for spill fire scenarios, ultimately enhancing fire probabilistic safety analysis in nuclear power plants.
引用
收藏
页码:1218 / 1231
页数:14
相关论文
共 50 条
  • [41] Modern Monte Carlo methods for efficient uncertainty quantification and propagation: A survey
    Zhang, Jiaxin
    WILEY INTERDISCIPLINARY REVIEWS-COMPUTATIONAL STATISTICS, 2021, 13 (05)
  • [42] Monte Carlo simulation for uncertainty quantification in reservoir simulation: A convergence study
    Cremon, Matthias A.
    Christie, Michael A.
    Gerritsen, Margot G.
    JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2020, 190 (190)
  • [43] Higher Order Quasi Monte-Carlo Integration in Uncertainty Quantification
    Dick, Josef
    Quoc Thong Le Gia
    Schwab, Christoph
    SPECTRAL AND HIGH ORDER METHODS FOR PARTIAL DIFFERENTIAL EQUATIONS ICOSAHOM 2014, 2015, 106 : 445 - 453
  • [44] Uncertainty quantification through the Monte Carlo method in a cloud computing setting
    Cunha, Americo, Jr.
    Nasser, Rafael
    Sampaio, Rubens
    Lopes, Helio
    Breitman, Karin
    COMPUTER PHYSICS COMMUNICATIONS, 2014, 185 (05) : 1355 - 1363
  • [45] Uncertainty Quantification in Monte Carlo Simulation: Theoretical Foundations and Heuristic Investigations
    Saracco, P.
    Batic, M.
    Pia, M. G.
    SNA + MC 2013 - JOINT INTERNATIONAL CONFERENCE ON SUPERCOMPUTING IN NUCLEAR APPLICATIONS + MONTE CARLO, 2014,
  • [46] Uncertainty Quantification for Porous Media Flow Using Multilevel Monte Carlo
    Mohring, Jan
    Milk, Rene
    Ngo, Adrian
    Klein, Ole
    Iliev, Oleg
    Ohlberger, Mario
    Bastian, Peter
    LARGE-SCALE SCIENTIFIC COMPUTING, LSSC 2015, 2015, 9374 : 145 - 152
  • [47] Refined Stratified Sampling for efficient Monte Carlo based uncertainty quantification
    Shields, Michael D.
    Teferra, Kirubel
    Hapij, Adam
    Daddazio, Raymond P.
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2015, 142 : 310 - 325
  • [48] Uncertainty quantification in the Henry problem using the multilevel Monte Carlo method
    Logashenko, Dmitry
    Litvinenko, Alexander
    Tempone, Raul
    Vasilyeva, Ekaterina
    Wittum, Gabriel
    JOURNAL OF COMPUTATIONAL PHYSICS, 2024, 503
  • [49] Bayesian neural networks for uncertainty quantification in data-driven materials modeling
    Olivier, Audrey
    Shields, Michael D.
    Graham-Brady, Lori
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 386
  • [50] Reinforcement Learning in Card Game Environments Using Monte Carlo Methods and Artificial Neural Networks
    Baykal, Omer
    Alpaslan, Ferda Nur
    2019 4TH INTERNATIONAL CONFERENCE ON COMPUTER SCIENCE AND ENGINEERING (UBMK), 2019, : 618 - 623