峡谷
唤醒
物理
流量(数学)
动态模态分解
模式(计算机接口)
机械
大涡模拟
湍流
涡流
湍流动能
色散(光学)
停滞点
计算流体力学
气象学
地理
地图学
计算机科学
光学
传热
操作系统
作者
Yunfei Fu,Xisheng Lin,Li Lu,Qi Chu,Haiqing Liu,Xing Zheng,Chun‐Ho Liu,Zengshun Chen,Chongjia Lin,K.T. Tse,Cruz Y. Li
出处
期刊:Physics of Fluids
[American Institute of Physics]
日期:2023-01-12
卷期号:35 (2)
被引量:19
摘要
This work develops a data analysis procedure, namely, proper orthogonal decomposition (POD)-dynamic mode decomposition (DMD) augmented analysis, to isolate the energy- and evolution-wise dominant features of flow field in a street canyon. This combination aims to extract modes imposing critical influence on pollutant dispersion from both energetic and dynamic perspectives. The two techniques were first conducted based on large-eddy simulation results. Subsequently, based on the POD and DMD ranking, the extracted modes were classified into three types: (1) type 1: energetically and dynamically significant mode; (2) type 2: energetically significant and dynamically insignificant mode; and (3) type 3: energetically insignificant and dynamically significant mode. Results show that mode type 1 contributes to the mainstream flow and the main vortex structures, which can be observed near the stagnation point, the separating point, and the fluid reattachment area. Mode type 2 throws light on where the turbulent kinetic energy is the largest, leading to periodically sudden pollutants increase on the building roof and the wake region. Mode type 3 contributes to the long-term reversed flow structures occurring near the stagnation point, inside the street canyon, and in the wake region. This technique can provide a systematic analysis of the flow field within a street canyon, and it also provides help for potential applications at a city scale, such as solving pollutant dispersion issues in urban areas.
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