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APS -70th Annual Meeting of the APS Division of Fluid Dynamics- Event - Estimating the State of Aerodynamic Flows in the Presence of Modeling Errors

机译:APS-流体动力学APS部门第70届年会-事件-在存在模型错误的情况下估算空气流的状态

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The ensemble Kalman filter (EnKF) has been proven to be successful in fields such as meteorology, in which high-dimensional nonlinear systems render classical estimation techniques impractical. When the model used to forecast state evolution misrepresents important aspects of the true dynamics, estimator performance may degrade. In this work, parametrization and state augmentation are used to track misspecified boundary conditions (e.g., free stream perturbations). The resolution error is modeled as a Gaussian-distributed random variable with the mean (bias) and variance to be determined. The dynamics of the flow past a NACA 0009 airfoil at high angles of attack and moderate Reynolds number is represented by a Navier-Stokes equations solver with immersed boundaries capabilities. The pressure distribution on the airfoil or the velocity field in the wake, both randomized by synthetic noise, are sampled as measurement data and incorporated into the estimated state and bias following Kalman's analysis scheme. Insights about how to specify the modeling error covariance matrix and its impact on the estimator performance are conveyed.
机译:集成卡尔曼滤波器(EnKF)在诸如气象学等领域已被证明是成功的,在该领域中,高维非线性系统使经典的估算技术变得不切实际。当用于预测状态演化的模型误解了真实动力学的重要方面时,估计器性能可能会下降。在这项工作中,使用参数化和状态增强来跟踪错误指定的边界条件(例如,自由流扰动)。将分辨率误差建模为高斯分布的随机变量,其均值(偏差)和方差待确定。流经NACA 0009机翼时在高攻角和中等雷诺数下的流动动力学由具有浸入边界功能的Navier-Stokes方程求解器表示。翼型上的压力分布或尾流中的速度场(均由合成噪声随机化)作为测量数据采样,并根据卡尔曼分析方案并入估计状态和偏差。传达了有关如何指定建模误差协方差矩阵及其对估计器性能的影响的见解。

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