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首页> 外文期刊>Journal of Engineering for Gas Turbines and Power >Data Assimilation and Optimal Calibration in Nonlinear Models of Flame Dynamics
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Data Assimilation and Optimal Calibration in Nonlinear Models of Flame Dynamics

机译:火焰动力学非线性模型中的数据同化和最优标定

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We propose an on-the-fly statistical learning method to take a qualitative reduced-order model of the dynamics of a premixed flame and make it quantitatively accurate. This physics-informed data-driven method is based on the statistically optimal combination of (i) a reduced-order model of the dynamics of a premixed flame with a level-set method, (ii) high-quality data, which can be provided by experiments and/or high-fidelity simulations, and (iii) assimilation of the data into the reduced-order model to improve the prediction of the dynamics of the premixed flame. The reduced-order model learns the state and the parameters of the premixed flame on the fly with the ensemble Kalman filter, which is a Bayesian filter used, for example, in weather forecasting. The proposed method and algorithm are applied to two test cases with relevance to reacting flows and instabilities. First, the capabilities of the framework are demonstrated in a twin experiment, where the assimilated data are produced from the same model as that used in prediction. Second, the assimilated data are extracted from a high-fidelity reacting-flow direct numerical simulation (DNS), which provides the reference solution. The results are analyzed by using Bayesian statistics, which robustly provide the level of confidence in the calculations from the reduced-order model. The versatile method we propose enables the optimal calibration of computationally inexpensive reduced-order models in real-time when experimental data become available, for example, from gas-turbine sensors.
机译:我们提出一种动态的统计学习方法,以对预混火焰的动力学进行定性降阶模型,并使其定量准确。这种以物理学为依据的数据驱动方法基于以下方面的统计最优组合:(i)预混合火焰动力学的降阶模型与水平设置方法,(ii)可以提供的高质量数据通过实验和/或高保真度模拟,以及(iii)将数据同化为降阶模型,以改善对预混火焰动力学的预测。降阶模型使用集成卡尔曼滤波器(它是用于例如天气预报的贝叶斯滤波器)实时学习预混火焰的状态和参数。所提出的方法和算法被应用于与反应流和不稳定性相关的两个测试案例。首先,该框架的功能在一个孪生实验中得到了证明,其中同化数据是从与预测所使用的模型相同的模型中产生的。其次,从高保真反应流直接数值模拟(DNS)中提取同化数据,从而提供参考解决方案。通过使用贝叶斯统计数据分析结果,该统计数据稳健地提供了降阶模型计算的置信度。我们提出的通用方法可以在从燃气轮机传感器等获得实验数据时实时对计算廉价的降阶模型进行最佳校准。

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