Rossi Domenico, Pascale Antonio, Mascolo Aurora, Guarnaccia Claudio
Department of Civil Engineering, Campus of Fisciano, University of Salerno, Via Giovanni Paolo II, 132, 84084 Fisciano, Italy.
Department of Mechanical Engineering/Centre for Mechanical Technology and Automation (TEMA), Campus Universitário de Santiago, University of Aveiro, 3810-193 Aveiro, Portugal.
Sensors (Basel). 2024 Apr 3;24(7):2275. doi: 10.3390/s24072275.
Road traffic noise is a severe environmental hazard, to which a growing number of dwellers are exposed in urban areas. The possibility to accurately assess traffic noise levels in a given area is thus, nowadays, quite important and, on many occasions, compelled by law. Such a procedure can be performed by measurements or by applying predictive Road Traffic Noise Models (RTNMs). Although the first approach is generally preferred, on-field measurement cannot always be easily conducted. RTNMs, on the contrary, use input information (amount of passing vehicles, category, speed, among others), usually collected by sensors, to provide an estimation of noise levels in a specific area. Several RTNMs have been implemented by different national institutions, adapting them to the local traffic conditions. However, the employment of RTNMs proves challenging due to both the lack of input data and the inherent complexity of the models (often composed of a Noise Emission Model-NEM and a sound propagation model). Therefore, this work aims to propose a methodology that allows an easy application of RTNMs, despite the availability of measured data for calibration. Four different NEMs were coupled with a sound propagation model, allowing the computation of equivalent continuous sound pressure levels on a dataset (composed of traffic flows, speeds, and source-receiver distance) randomly generated. Then, a Multilinear Regressive technique was applied to obtain manageable formulas for the models' application. The goodness of the procedure was evaluated on a set of long-term traffic and noise data collected in a French site through several sensors, such as sound level meters, car counters, and speed detectors. Results show that the estimations provided by formulas coming from the Multilinear Regressions are quite close to field measurements (MAE between 1.60 and 2.64 dB(A)), confirming that the resulting models could be employed to forecast noise levels by integrating them into a network of traffic sensors.
道路交通噪声是一种严重的环境危害,在城市地区,越来越多的居民受到其影响。因此,如今在给定区域准确评估交通噪声水平的可能性非常重要,而且在许多情况下是法律所要求的。这样的程序可以通过测量或应用预测性道路交通噪声模型(RTNMs)来执行。尽管通常首选第一种方法,但实地测量并非总能轻松进行。相反,RTNMs使用通常由传感器收集的输入信息(过往车辆数量、类别、速度等)来估计特定区域的噪声水平。不同的国家机构已经实施了几种RTNMs,并使其适应当地交通状况。然而,由于缺乏输入数据以及模型本身的复杂性(通常由噪声排放模型-NEM和声音传播模型组成),RTNMs的应用具有挑战性。因此,这项工作旨在提出一种方法,即使没有用于校准的测量数据,也能轻松应用RTNMs。将四种不同的NEM与声音传播模型相结合,从而能够计算在随机生成的数据集(由交通流量、速度和源-接收器距离组成)上的等效连续声压级。然后,应用多元线性回归技术来获得模型应用的可管理公式。通过在法国一个地点通过多个传感器(如声级计、汽车计数器和速度探测器)收集的一组长期交通和噪声数据,对该程序的有效性进行了评估。结果表明,多元线性回归得出的公式所提供的估计值与实地测量值非常接近(平均绝对误差在1.60至2.64 dB(A)之间),这证实了所得模型可通过将其集成到交通传感器网络中来预测噪声水平。