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Improving urban flow predictions through data assimilation

机译:通过数据同化改善城市流量预测

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Detailed aerodynamic information of local wind flow patterns in urban canopies is essential for the design of sustainable and resilient urban areas. Computational Fluid Dynamics (CFD) can be used to analyze these complex flows, but uncertainties in the models can negatively impact the accuracy of the results. Data assimilation, using measurements from wind sensors located within the urban canopy, provides exciting opportunities to improve the quality of the predictions. The present study explores the deployment of several wind sensors on Stanford's campus to support future validation of CFD predictions with uncertainty quantification and data assimilation. We focus on uncertainty in the incoming wind direction and magnitude, and identify optimal sensor placement to enable accurate inference of these parameters. First, a set of Reynolds-averaged Navier-Stokes simulations is performed to build a surrogate model for the local velocity as a function of the inflow conditions. Subsequently, artificial wind observations are generated from realizations of the surrogate model, and an inverse ensemble Kalman filter is used to infer the inflow conditions from these observations. We investigate the influence of (1) the sensor location, (2) the number of sensors, and (3) the presence of noise or a bias in the measurement data. The analysis shows that multiple roof level sensors should enable robust assimilation of the inflow boundary conditions. In the future field experiment, sensors will be placed in these locations to validate the methodology using actual field measurement data.
机译:有关城市机盖局部风流模式的详细空气动力学信息,对于设计可持续且具有弹性的城市地区至关重要。计算流体动力学(CFD)可以用于分析这些复杂的流量,但是模型中的不确定性可能会对结果的准确性产生负面影响。利用位于城市雨棚内的风传感器的数据进行数据同化,为改善预测质量提供了令人兴奋的机会。本研究探索了在斯坦福大学校园内部署的几种风传感器,以通过不确定性量化和数据同化来支持CFD预测的未来验证。我们专注于传入风向和大小的不确定性,并确定最佳传感器位置以实现这些参数的准确推断。首先,执行一组雷诺平均的Navier-Stokes模拟,以建立局部速度与流入条件的函数的替代模型。随后,从代理模型的实现中生成人工风观测值,并使用反集合卡尔曼滤波器从这些观测值推断入流条件。我们调查(1)传感器位置,(2)传感器数量以及(3)测量数据中是否存在噪声或偏差的影响。分析表明,多个顶面液位传感器应能够使流入边界条件充分吸收。在将来的现场实验中,传感器将被放置在这些位置,以使用实际的现场测量数据来验证方法。

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