Murovec Jure, Čurović Luka, Železnik Anže, Prezelj Jurij
Faculty of Mechanical Engineering, University of Ljubljana, Aškerčeva cesta 6, 1000, Ljubljana, Slovenia.
Heliyon. 2023 Jan 9;9(1):e12846. doi: 10.1016/j.heliyon.2023.e12846. eCollection 2023 Jan.
Noise pollution is one of the major health risks in urban life. The approach to measurement and identification of noise sources needs to be improved and enhanced to reduce high costs. Long measurement times and the need for expensive equipment and trained personnel must be automated. Simplifying the identification of main noise sources and excluding residual and background noise allows more effective measures. By spatially filtering the acoustic scene and combining unsupervised learning with psychoacoustic features, this paper presents a prototype system capable of automated calculation of the contribution of individual noise sources to the total noise level. Pilot measurements were performed at three different locations in the city of Ljubljana, Slovenia. Equivalent sound pressure levels obtained with the device were compared to the results obtained by manually marking individual parts of each of the three measurements. The proposed approach correctly identified the main noise sources in the vicinity of the measurement points.
噪声污染是城市生活中的主要健康风险之一。噪声源的测量和识别方法需要改进和加强,以降低高成本。长时间的测量以及对昂贵设备和训练有素人员的需求必须实现自动化。简化主要噪声源的识别并排除残余噪声和背景噪声,可以采取更有效的措施。通过对声学场景进行空间滤波,并将无监督学习与心理声学特征相结合,本文提出了一种原型系统,该系统能够自动计算各个噪声源对总噪声水平的贡献。在斯洛文尼亚卢布尔雅那市的三个不同地点进行了试点测量。将该设备获得的等效声压级与通过手动标记三次测量中每一次的各个部分所获得的结果进行了比较。所提出的方法正确识别了测量点附近的主要噪声源。