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Measurement network for urban noise assessment: Comparison of mobile measurements and spatial interpolation approaches

机译:用于城市噪声评估的测量网络:移动测量和空间插值方法的比较

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摘要

This paper investigates the relevance of different interpolation techniques to improve the spatial resolution of urban noise maps, in complement to measurements achieved at fixed stations. Interpolation techniques based on mobile measurements are compared to usual spatial interpolations techniques, namely Inverse Distance Weighting and Kriging. The analyses rely on a measurement campaign, which consisted of nearly 8 h of geo-referenced mobile noise measurements performed at random moments of the day, conducted simultaneously with continuous measurements collected at five fixed stations located on the inner city of Gent, Belgium. Firstly, a procedure is proposed to build a noise map with a high spatial resolution (one point every 5 m). The procedure relies on both mobile and fixed measurements: the mobile measurements are used to capture spatial variations on the network, and the measurements at fixed stations are used to capture the temporal variations. The map produced is then used as reference to compare the interpolation techniques based on a significantly more sparse measurement set. The spatial interpolation techniques tested fail in predicting accurately the noise level variations within streets. The explanation given is that they do not offer a sufficient covering of the network, and assume spatial variations which are not coherent with traffic dynamics or street configurations. Inversely, mobile measurements cover the entire network. As a result, they allow a more accurate prediction of noise levels even if very short samples are used, provided that the procedure used to estimate noise levels includes a spatial aggregation, which aims at smoothing the high spatial variations inevitable with short samples. Moreover, mobile measurements can advantageously be used to optimize, through a Genetic Algorithm, the locations where to install fixed stations, promising an efficient noise monitoring at reduced operational costs.
机译:本文研究了不同插值技术对提高城市噪声图的空间分辨率的重要性,以补充在固定站获得的测量结果。将基于移动测量的插值技术与常用的空间插值技术(即距离反比加权和Kriging)进行了比较。这些分析依赖于一项测量活动,该活动包括在一天中的随机时刻进行将近8小时的地理参考移动噪声测量,并与位于比利时根特内城的五个固定站进行的连续测量同时进行。首先,提出了一种建立具有高空间分辨率(每5 m一个点)的噪声图的程序。该过程依赖于移动和固定测量:移动测量用于捕获网络上的空间变化,而固定站的测量则用于捕获时间变化。然后将生成的图用作参考,以基于明显更稀疏的测量集比较插值技术。测试的空间插值技术无法准确预测街道内的噪声水平变化。给出的解释是,它们没有提供足够的网络覆盖,并假设空间变化与交通动态或街道配置不符。相反,移动测量覆盖整个网络。结果,即使使用非常短的样本,它们也可以更准确地预测噪声水平,前提是用于估计噪声水平的过程包括空间聚集,该空间聚集旨在平滑短样本不可避免的高空间变化。而且,移动测量可以有利地用于通过遗传算法来优化固定站的安装位置,从而有望以降低的运营成本进行有效的噪声监测。

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