Department of Computer Science and Engineering, University of Bologna, Mura Anteo Zamboni 7, 40126 Bologna, Italy.
Master Degree in Computer Science, Department of Informatics, Systems and Communication, University of Milan-Bicocca, 20125 Milan, Italy.
Sensors (Basel). 2020 Sep 29;20(19):5583. doi: 10.3390/s20195583.
Urban noise is one of the most serious and underestimated environmental problems. According to the World Health Organization, noise pollution from traffic and other human activities, negatively impact the population health and life quality. Monitoring noise usually requires the use of professional and expensive instruments, called phonometers, able to accurately measure sound pressure levels. In many cases, phonometers are human-operated; therefore, periodic fine-granularity city-wide measurements are expensive. Recent advances in the Internet of Things (IoT) offer a window of opportunities for low-cost autonomous sound pressure meters. Such devices and platforms could enable fine time-space noise measurements throughout a city. Unfortunately, low-cost sound pressure sensors are inaccurate when compared with phonometers, experiencing a high variability in the measurements. In this paper, we present RaveGuard, an unmanned noise monitoring platform that exploits artificial intelligence strategies to improve the accuracy of low-cost devices. RaveGuard was initially deployed together with a professional phonometer for over two months in downtown Bologna, Italy, with the aim of collecting a large amount of precise noise pollution samples. The resulting datasets have been instrumental in designing InspectNoise, a library that can be exploited by IoT platforms, without the need of expensive phonometers, but obtaining a similar precision. In particular, we have applied supervised learning algorithms (adequately trained with our datasets) to reduce the accuracy gap between the professional phonometer and an IoT platform equipped with low-end devices and sensors. Results show that RaveGuard, combined with the InspectNoise library, achieves a 2.24% relative error compared to professional instruments, thus enabling low-cost unmanned city-wide noise monitoring.
城市噪声是最严重和最被低估的环境问题之一。世界卫生组织表示,交通和其他人类活动产生的噪声污染对人口健康和生活质量有负面影响。监测噪声通常需要使用专业且昂贵的仪器,称为声级计,以准确测量声压级。在许多情况下,声级计由人操作;因此,定期进行细粒度的全市测量是昂贵的。物联网(IoT)的最新进展为低成本自主声压计提供了机会之窗。这些设备和平台可以实现整个城市的精细时间和空间噪声测量。不幸的是,与声级计相比,低成本声压传感器的精度较低,测量结果的可变性很高。在本文中,我们提出了 RaveGuard,这是一个利用人工智能策略来提高低成本设备准确性的无人噪声监测平台。RaveGuard 最初与专业声级计一起在意大利博洛尼亚市中心部署了两个多月,目的是收集大量精确的噪声污染样本。由此产生的数据集对于设计 InspectNoise 至关重要,InspectNoise 是一个可以被 IoT 平台利用的库,不需要昂贵的声级计,但可以获得类似的精度。特别是,我们应用了监督学习算法(通过我们的数据集进行适当训练)来缩小专业声级计和配备低端设备和传感器的 IoT 平台之间的准确性差距。结果表明,RaveGuard 与 InspectNoise 库相结合,与专业仪器相比,相对误差为 2.24%,从而实现了低成本的无人全市噪声监测。