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Identifying the optimal spatial distribution of tracers for optical sensing of stream surface flow

机译:识别流表面流动光学传感器的示踪剂的最佳空间分布

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River monitoring is of particular interest as a society that faces increasingly complex water management issues. Emerging technologies have contributed to opening new avenues for improving our monitoring capabilities but have also generated new challenges for the harmonised use of devices and algorithms. In this context, optical-sensing techniques for stream surface flow velocities are strongly influenced by tracer characteristics such as seeding density and their spatial distribution. Therefore, a principal research goal is the identification of how these properties affect the accuracy of such methods. To this aim, numerical simulations were performed to consider different levels of tracer clustering, particle colour (in terms of greyscale intensity), seeding density, and background noise. Two widely used image-velocimetry algorithms were adopted: (i)?particle-tracking velocimetry?(PTV) and (ii)?particle image velocimetry?(PIV). A descriptor of the seeding characteristics (based on seeding density and tracer clustering) was introduced based on a newly developed metric called the Seeding Distribution Index?(SDI). This index can be approximated and used in practice as SDI=ν0.1/ρρcν1, where?ν, ρ, and ρcν1?are the spatial-clustering level, the seeding density, and the reference seeding density at ν=1, respectively. A reduction in image-velocimetry errors was systematically observed for lower values of the SDI; therefore, the optimal frame window (i.e. a subset of the video image sequence) was defined as the one that minimises the SDI. In addition to numerical analyses, a field case study on the Basento river (located in southern Italy) was considered as a proof of concept of the proposed framework. Field results corroborated numerical findings, and error reductions of about 15.9 % and 16.1 % were calculated – using PTV and PIV, respectively – by employing the optimal frame window.
机译:河流监测作为一个面临日益复杂的水管理问题的社会特别令人兴趣。新兴技术有助于开设新的途径,以提高我们的监控能力,但也为统一使用设备和算法产生了新的挑战。在这种情况下,用于流表面流速的光学传感技术受示踪特性的强烈影响,例如播种密度及其空间分布。因此,主要研究目标是识别这些属性如何影响这些方法的准确性。为此目的,进行数值模拟,以考虑不同水平的示踪聚类,粒子颜色(灰度强度方面),播种密度和背景噪声。采用了两个广泛使用的图像 - 速度算法:(i)?粒子跟踪速度?(PTV)和(II)?粒子图像速度?(PIV)。基于称为播种分布指数的新开发的公制引入了播种特性(基于播种密度和示踪聚类)的描述符?(SDI)。该索引可以近似并在实践中用作SDI =ν0.1/ρcν1,其中α,ρ和ρcν1?是空间聚类水平,播种密度和参考播种密度分别在χ= 1。系统地观察到图像 - 速度误差的降低,用于SDI的较低值;因此,最佳帧窗口(即视频图像序列的子集)被定义为最小化SDI的那个。除了数值分析之外,对Basento River(位于意大利南部)的田间案例研究被认为是拟议框架的概念证明。现场结果证实的数值发现,并分别使用PTV和PIV来计算约15.9%和16.1%的误差减少 - 通过采用最佳框架窗口。

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