Ramón-Turner Óscar, Bordón Jacob D R, González-Rodríguez Asunción, Lorenzo-Navarro Javier, Castrillón-Santana Modesto, Álamo Guillermo M, Quevedo-Reina Román, Romero-Sánchez Carlos, Ester-Sánchez Antonio T, Medina Cristina, García Fidel, Maeso Orlando, Aznárez Juan J
Instituto Universitario de Sistemas Inteligentes y Aplicaciones Numéricas en Ingeniería, Universidad de Las Palmas de Gran Canaria, Campus de Tafira, 35017 Las Palmas, Spain.
Facultad de Ciencias Jurídicas, Universidad de Las Palmas de Gran Canaria, Campus de Tafira, 35017 Las Palmas, Spain.
Sensors (Basel). 2025 Jun 8;25(12):3604. doi: 10.3390/s25123604.
Noise levels of anthropogenic origin in urban environments have reached thresholds that pose serious public health and quality of life problems. This paper/work aims to examine these noise levels, the underlying causes of their increase and possible solutions through the implementation of predictive models. To address this problem, as a first step, a simplified mathematical model capable of accurately predicting anthropogenic noise levels in a given area is developed. As variables, this model considers the crowd density, estimated using an Artificial Neural Network (ANN) capable of detecting people in images, as well as the geometric and architectural characteristics of the environment. To verify the model, several protocols have been developed for collecting experimental data. In a first phase, these experimental measurements were carried out in controlled environments, using loudspeakers as noise sources. In a second phase, these measurements were carried out in real environments, accounting for the specific noise sources present in each setting. The difference in sound levels between the model and reality is proven to be less than 3 dB in 75% and less than 3.5 dB in 100% of the cases examined in a controlled environment. In the real problem, in general terms and taking into account that the study is carried out on pedestrian streets, it seems that the model is able to reproduce most of the noise of anthropogenic origin.
城市环境中人为产生的噪音水平已达到引发严重公共卫生和生活质量问题的阈值。本文旨在通过实施预测模型来研究这些噪音水平、其增加的潜在原因以及可能的解决方案。为解决此问题,第一步是开发一个能够准确预测给定区域内人为噪音水平的简化数学模型。作为变量,该模型考虑了使用能够检测图像中人物的人工神经网络(ANN)估算的人群密度,以及环境的几何和建筑特征。为验证该模型,已制定了若干收集实验数据的方案。在第一阶段,这些实验测量在受控环境中进行,使用扬声器作为噪声源。在第二阶段,这些测量在实际环境中进行,考虑了每种环境中存在的特定噪声源。在受控环境中检查的案例中,75%的情况下模型与实际之间的声级差异被证明小于3分贝,100%的情况下小于3.5分贝。在实际问题中,总体而言,考虑到该研究是在步行街上进行的,该模型似乎能够再现大部分人为产生的噪音。