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Bayesian approach to parameter estimation and model validation for nuclear fusion reactor mean-field edge turbulence modelling

机译:贝叶斯估算参数估计方法核融合反应堆叶片场边缘湍流建模的模型验证

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This paper presents a Bayesian approach to infer about two mean-field plasma turbulence models, a first based on the turbulent kinetic energy k_⊥, and a second based on k_⊥ and the turbulent enstrophy ζ_⊥. These models contain several closure terms with unknown constants that have to be determined through fitting to reference data from turbulence simulations or experiments. In this paper, we compare two techniques to solve the Bayesian inference problem: the Laplace approximation and the adaptive Metropolis-Hastings (AMH) algorithm. Our Bayesian inference allows for parameter uncertainty quantification, identification of parameter cross-correlations and model comparison through the Bayesian evidence. Our results indicate that while a diffusive k_⊥-ζ_⊥ scaling for the anomalous diffusion coefficient provides a better approximation to the turbulent particle flux when based on exact turbulence simulation data, at present large modelling uncertainties and parameter cross-correlations in the full k_⊥-ζ_⊥ model make it less performant than the more simple k_⊥ model. For the cases studied here, the cross-correlations can be removed by a reparameterization of the k_⊥-ζ_⊥ model with fewer parameters. The results can form the basis for further development of the turbulence models.
机译:本文介绍了贝叶斯方法,以推断出两种平均场湍流模型,首先是基于湍流动能K_∞,基于K_∞和湍流敌对ζ_⊥。这些模型包含几个封闭术语,其常数未知,必须通过拟合来自湍流模拟或实验的参考数据来确定。在本文中,我们比较了两种解决贝叶斯推理问题的技术:拉普拉斯近似和自适应大都会 - 黑斯廷斯(AMH)算法。我们的贝叶斯推理允许参数不确定性量化,通过贝叶斯证据识别参数互相关和模型比较。我们的结果表明,当基于精确的湍流仿真数据时,异常扩散系数的扩散K_⊥-ζ_⊥缩放为湍流粒子通量提供更好的近似,目前全K_⊥中的大型建模不确定因素和参数交叉相关性-ζ__ _型模型使其比更简单的k_⊥模型更不佳。对于这里研究的案例,可以通过具有较少参数的K_⊥-ζ_⊥模型的Reparameter来消除互相关。结果可以形成湍流模型的进一步发展的基础。

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