Application of the DMD Approach to High-Reynolds-Number Flow over an Idealized Ground Vehicle

Adit Misar, N. Tison, V. Korivi, M. Uddin
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引用次数: 1

Abstract

This paper attempts to develop a Dynamic Mode Decomposition (DMD)-based Reduced Order Model (ROMs) that can quickly but accurately predict the forces and moments experienced by a road vehicle such that they be used by an on-board controller to determine the vehicle’s trajectory. DMD can linearize a large dataset of high-dimensional measurements by decomposing them into low-dimensional coherent structures and associated time dynamics. This ROM can then also be applied to predict the future state of the fluid flow. Existing literature on DMD is limited to low Reynolds number applications. This paper presents DMD analyses of the flow around an idealized road vehicle, called the Ahmed body, at a Reynolds number of 2.7×106. The high-dimensional dataset used in this paper was collected from a computational fluid dynamics (CFD) simulation performed using the Menter’s Shear Stress Transport (SST) turbulence model within the context of Improved Delayed Detached Eddy Simulations (IDDES). The DMD algorithm, as available in the literature, was found to suffer nonphysical dampening of the medium-to-high frequency modes. Enhancements to the existing algorithm were explored, and a modified DMD approach is presented in this paper, which includes: (a) a requirement of higher sampling rate to obtain a higher resolution of data, and (b) a custom filtration process to remove spurious modes. The modified DMD algorithm thus developed was applied to the high-Reynolds-number, separation-dominated flow past the idealized ground vehicle. The effectiveness of the modified algorithm was tested by comparing future predictions of force and moment coefficients as predicted by the DMD-based ROM to the reference CFD simulation data, and they were found to offer significant improvement.
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DMD方法在理想地面车辆高雷诺数流中的应用
本文试图开发一种基于动态模态分解(DMD)的降阶模型(ROMs),该模型可以快速而准确地预测道路车辆所经历的力和力矩,以便车载控制器使用它们来确定车辆的轨迹。DMD可以通过将大量高维测量数据分解成低维相干结构和相关的时间动态来线性化大量高维测量数据集。该ROM还可以用于预测流体流动的未来状态。关于DMD的现有文献仅限于低雷诺数应用。本文介绍了在雷诺数为2.7×106时,一种被称为艾哈迈德车身的理想道路车辆周围流动的DMD分析。本文中使用的高维数据集收集自计算流体动力学(CFD)模拟,该模拟使用Menter的剪切应力传输(SST)湍流模型,在改进的延迟分离涡模拟(IDDES)的背景下进行。文献中可用的DMD算法被发现遭受中高频模式的非物理阻尼。本文对现有算法进行了改进,并提出了一种改进的DMD方法,其中包括:(a)要求更高的采样率以获得更高的数据分辨率,以及(b)自定义滤波过程以去除杂散模式。将改进后的DMD算法应用于经过理想地面车辆的高雷诺数、以分离为主导的流场。通过将基于dmd的ROM预测的力和力矩系数的未来预测与参考CFD模拟数据进行比较,验证了改进算法的有效性,发现它们提供了显着的改进。
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