Data-driven quantification of model-form uncertainty in Reynolds-averaged simulations of wind farms

被引:19
|
作者
Eidi, Ali [1 ]
Zehtabiyan-Rezaie, Navid [2 ]
Ghiassi, Reza [1 ]
Yang, Xiang [3 ]
Abkar, Mahdi [2 ]
机构
[1] Univ Tehran, Coll Engn, Sch Civil Engn, Tehran, Iran
[2] Aarhus Univ, Dept Mech & Prod Engn, DK-8000 Aarhus C, Denmark
[3] Penn State Univ, Dept Mech Engn, State Coll, PA 16802 USA
关键词
QUANTIFYING INFLOW; TURBULENCE; FLOW;
D O I
10.1063/5.0100076
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
Computational fluid dynamics using the Reynolds-averaged Navier-Stokes (RANS) remains the most cost-effective approach to study wake flows and power losses in wind farms. The underlying assumptions associated with turbulence closures are one of the biggest sources of errors and uncertainties in the model predictions. This work aims to quantify model-form uncertainties in RANS simulations of wind farms at high Reynolds numbers under neutrally stratified conditions by perturbing the Reynolds stress tensor through a data-driven machine-learning technique. To this end, a two-step feature-selection method is applied to determine key features of the model. Then, the extreme gradient boosting algorithm is validated and employed to predict the perturbation amount and direction of the modeled Reynolds stress toward the limiting states of turbulence on the barycentric map. This procedure leads to a more accurate representation of the Reynolds stress anisotropy. The data-driven model is trained on high-fidelity data obtained from large-eddy simulation of a specific wind farm, and it is tested on two other (unseen) wind farms with distinct layouts to analyze its performance in cases with different turbine spacing and partial wake. The results indicate that, unlike the data-free approach in which a uniform and constant perturbation amount is applied to the entire computational domain, the proposed framework yields an optimal estimation of the uncertainty bounds for the RANS-predicted quantities of interest, including the wake velocity, turbulence intensity, and power losses in wind farms. Published under an exclusive license by AIP Publishing.
引用
收藏
页数:17
相关论文
共 50 条
  • [1] Quantifying and reducing model-form uncertainties in Reynolds-averaged Navier-Stokes simulations: A data-driven, physics-informed Bayesian approach
    Xiao, H.
    Wu, J. -L.
    Wang, J. -X.
    Sun, R.
    Roy, C. J.
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 2016, 324 : 115 - 136
  • [2] Model-form uncertainty quantification in RANS simulations of wakes and power losses in wind farms
    Eidi, Ali
    Ghiassi, Reza
    Yang, Xiang
    Abkar, Mahdi
    [J]. RENEWABLE ENERGY, 2021, 179 : 2212 - 2223
  • [3] Model-form uncertainty quantification of Reynolds-averaged Navier-Stokes modeling of flows over a SD7003 airfoil
    Chu, Minghan
    Wu, Xiaohua
    Rival, David E. E.
    [J]. PHYSICS OF FLUIDS, 2022, 34 (11)
  • [4] Quantification of Reynolds-averaged-Navier-Stokes model-form uncertainty in transitional boundary layer and airfoil flows
    Chu, Minghan
    Wu, Xiaohua
    Rival, David E.
    [J]. PHYSICS OF FLUIDS, 2022, 34 (10)
  • [5] Data-driven Reynolds-averaged turbulence modeling with generalizable non-linear correction and uncertainty quantification using Bayesian deep learning
    Tang, Hongwei
    Wang, Yan
    Wang, Tongguang
    Tian, Linlin
    Qian, Yaoru
    [J]. PHYSICS OF FLUIDS, 2023, 35 (05)
  • [6] Retrospective cost adaptive Reynolds-averaged Navier-Stokes k-ω model for data-driven unsteady turbulent simulations
    Li, Zhiyong
    Hoagg, Jesse B.
    Martin, Alexandre
    Bailey, Sean C. C.
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 2018, 357 : 353 - 374
  • [7] A data-driven adaptive Reynolds-averaged Navier-Stokes k-ω model for turbulent flow
    Li, Zhiyong
    Zhang, Huaibao
    Bailey, Sean C. C.
    Hoagg, Jesse B.
    Martin, Alexandre
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 2017, 345 : 111 - 131
  • [8] Data-driven RANS for simulations of large wind farms
    Iungo, G. V.
    Viola, F.
    Ciri, U.
    Rotea, M. A.
    Leonardi, S.
    [J]. WAKE CONFERENCE 2015, 2015, 625
  • [9] Model-form and predictive uncertainty quantification in linear aeroelasticity
    Nitschke, C. T.
    Cinnella, P.
    Lucor, D.
    Chassaing, J. -C.
    [J]. JOURNAL OF FLUIDS AND STRUCTURES, 2017, 73 : 137 - 161
  • [10] Quantifying model form uncertainty in Reynolds-averaged turbulence models with Bayesian deep neural networks
    Geneva, Nicholas
    Zabaras, Nicholas
    [J]. JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 383 : 125 - 147