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Image based flow visualisation of experimental flow fields inside a gross pollutant trap

机译:基于图像的总污染物捕集器内部实验流场的流动可视化

摘要

Typical flow fields in a stormwater gross pollutant trap (GPT) with blocked retaining screens were experimentally captured and visualised. Particle image velocimetry (PIV) software was used to capture the flow field data by tracking neutrally buoyant particles with a high speed camera. A technique was developed to apply the Image Based Flow Visualization (IBFV) algorithm to the experimental raw dataset generated by the PIV software. The dataset consisted of scattered 2D point velocity vectors and the IBFV visualisation facilitates flow feature characterisation within the GPT. The flow features played a pivotal role in understanding gross pollutant capture and retention within the GPT. It was found that the IBFV animations revealed otherwise unnoticed flow features and experimental artefacts. For example, a circular tracer marker in the IBFV program visually highlighted streamlines to investigate specific areas and identify the flow features within the GPT.
机译:通过实验捕获并可视化了带有挡水板被挡住的雨水总污染物捕集器(GPT)中的典型流场。粒子图像测速(PIV)软件用于通过使用高速摄像机跟踪中性浮力粒子来捕获流场数据。开发了一种将基于图像的流可视化(IBFV)算法应用于PIV软件生成的实验原始数据集的技术。该数据集由分散的2D点速度矢量组成,IBFV可视化有助于在GPT中表征流特征。流量特征在理解GPT中污染物的总捕获和保留方面起着关键作用。人们发现,IBFV动画揭示了其他未被注意的流动特征和实验伪像。例如,IBFV程序中的圆形示踪剂标记在视觉上突出显示了流线,以调查特定区域并识别GPT中的流动特征。

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