Institute for Urban Public Health (InUPH), University Hospital Essen, University of Duisburg-Essen, 45147 Essen, Germany.
Complexity Science, Potsdam Institute for Climate Impact Research, 14473 Potsdam, Germany.
Int J Environ Res Public Health. 2022 Nov 15;19(22):15014. doi: 10.3390/ijerph192215014.
As sustainable metropolitan regions require more densely built-up areas, a comprehensive understanding of the urban acoustic environment (AE) is needed. However, comprehensive datasets of the urban AE and well-established research methods for the AE are scarce. Datasets of audio recordings tend to be large and require a lot of storage space as well as computationally expensive analyses. Thus, knowledge about the long-term urban AE is limited. In recent years, however, these limitations have been steadily overcome, allowing a more comprehensive analysis of the urban AE. In this respect, the objective of this work is to contribute to a better understanding of the time-frequency domain of the urban AE, analysing automatic audio recordings from nine urban settings over ten months. We compute median power spectra as well as normalised spectrograms for all settings. Additionally, we demonstrate the use of frequency correlation matrices (FCMs) as a novel approach to access large audio datasets. Our results show site-dependent patterns in frequency dynamics. Normalised spectrograms reveal that frequency bins with low power hold relevant information and that the AE changes considerably over a year. We demonstrate that this information can be captured by using FCMs, which also unravel communities of interlinked frequency dynamics for all settings.
随着可持续的大都市区需要更密集的建筑区域,因此需要全面了解城市声学环境 (AE)。然而,城市 AE 的综合数据集和成熟的 AE 研究方法却很稀缺。音频录音数据集往往很大,需要大量的存储空间和计算资源密集型的分析。因此,人们对长期城市 AE 的了解有限。然而,近年来,这些限制已逐渐得到克服,从而可以更全面地分析城市 AE。在这方面,这项工作的目的是为了更好地了解城市 AE 的时频域,分析来自九个城市环境的自动音频记录,时间跨度为十个月。我们为所有环境计算了中值功率谱和归一化声谱图。此外,我们还展示了使用频率相关矩阵 (FCM) 作为访问大型音频数据集的新方法。我们的结果显示出与地点相关的频率动态模式。归一化声谱图表明,低功率的频带包含相关信息,并且 AE 在一年内会发生很大变化。我们证明了这一信息可以通过使用 FCM 来捕捉,FCM 还可以揭示所有环境中相互关联的频率动态的社区。