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自洽声景排名指数:以城市公园为例。

Self-Consistent Soundscape Ranking Index: The Case of an Urban Park.

机构信息

Department of Earth and Environmental Sciences (DISAT), University of Milano-Bicocca, Piazza della Scienza 1, 20126 Milano, Italy.

Department of Physics, University of Milano-Bicocca, Piazza della Scienza 3, 20126 Milano, Italy.

出版信息

Sensors (Basel). 2023 Mar 23;23(7):3401. doi: 10.3390/s23073401.

Abstract

We have performed a detailed analysis of the soundscape inside an urban park (located in the city of Milan) based on simultaneous sound recordings at 16 locations within the park. The sound sensors were deployed over a regular grid covering an area of about 22 hectares, surrounded by a variety of anthropophonic sources. The recordings span 3.5 h each over a period of four consecutive days. We aimed at determining a soundscape ranking index (SRI) evaluated at each site in the grid by introducing 4 unknown parameters. To this end, a careful aural survey from a single day was performed in order to identify the presence of 19 predefined sound categories within a minute, every 3 minutes of recording. It is found that all SRI values fluctuate considerably within the 70 time intervals considered. The corresponding histograms were used to define a dissimilarity function for each pair of sites. Dissimilarity was found to increase significantly with the inter-site distance in space. Optimal values of the 4 parameters were obtained by minimizing the standard deviation of the data, consistent with a fifth parameter describing the variation of dissimilarity with distance. As a result, we classify the sites into three main categories: "poor", "medium" and "good" environmental sound quality. This study can be useful to assess the quality of a soundscape in general situations.

摘要

我们对城市公园(位于米兰市)内的声音景观进行了详细分析,该公园基于 16 个位置的同步录音。声音传感器在一个约 22 公顷的区域内以规则网格的形式部署,周围有各种人为声源。录音时间为连续四天,每天 3.5 小时。我们旨在通过引入 4 个未知参数,确定网格中每个点的声景排名指数(SRI)。为此,我们进行了一次精心的听觉调查,在一天内,每 3 分钟记录一次,在一分钟内识别出 19 种预定义的声音类别。结果发现,所有 SRI 值在考虑的 70 个时间间隔内都有很大的波动。相应的直方图用于为每个站点对定义一个不相似性函数。发现不相似性随着空间中站点间距离的增加而显著增加。通过最小化数据的标准差,可以获得 4 个参数的最优值,这与描述不相似性随距离变化的第五个参数一致。因此,我们将站点分为三类:“差”、“中”和“好”的环境声音质量。本研究可用于评估一般情况下的声景质量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e2aa/10099371/c90b1cd43694/sensors-23-03401-g001.jpg

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