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Transitional flow in intracranial aneurysms - A space and time refinement study below the Kolmogorov scales using Lattice Boltzmann Method

机译:颅内动脉瘤中的过渡血流-使用格子Boltzmann方法在Kolmogorov量表以下进行时空细化研究

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Most Computational Fluid Dynamics (CFD) studies of hemodynamics in intracranial aneurysms are based on the assumption of laminar flow due to a relatively low (below 500) parent artery Reynolds number. A few studies have recently demonstrated the occurrence of transitional flow in aneurysms, but these studies employed special finite element schemes tailored to capture transitional nature of flow. In this study we investigate the occurrence of transition using a standard Lattice Boltzmann Method (LBM). The LBM is used because of its computational efficiency, which in the present study allowed us to perform simulations at a higher resolution than has been done in the context of aneurysms before. The high space-time resolutions of 8 mu m and 0.11 mu s resulted in nearly 1 x 10(9) cells and 9 x 10(6) time steps per second and allowed us to quantify the turbulent kinetic energy at resolutions that are of the order of the Kolmogorov scales. We perform an in-depth space and time refinement study on 2 aneurysms; one was previously reported laminar, while the other was reported transitional. Furthermore, we investigate the critical Reynolds number at which the flow transitions in aneurysms under time constant inflow conditions. (C) 2015 Elsevier Ltd. All rights reserved.
机译:颅内动脉瘤中血流动力学的大多数计算流体动力学(CFD)研究都是基于相对较低(低于500)的母动脉雷诺数的层流假设。最近的一些研究证明了动脉瘤中过渡血流的发生,但是这些研究采用了专门的有限元方案来捕获血流的过渡特性。在这项研究中,我们研究了使用标准格子Boltzmann方法(LBM)发生过渡的情况。使用LBM是因为其计算效率高,在本研究中,它使我们能够以比以前在动脉瘤的情况下更高的分辨率执行模拟。 8微米和0.11微米的高时空分辨率导致每秒近1 x 10(9)个细胞和9 x 10(6)个时间步长,使我们能够以分辨率为Kolmogorov量表的顺序。我们对2个动脉瘤进行了深入的时空细化研究;一个以前被报道为层流,而另一个被报告为过渡性。此外,我们研究了在时间常数流入条件下动脉瘤中血流转变的临界雷诺数。 (C)2015 Elsevier Ltd.保留所有权利。

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