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Modelling of the pavement acoustic longevity in Hong Kong through machine learning techniques

机译:通过机床学习技术建模香港路面声学寿命

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摘要

Traffic noise emission has long been a pervasive environmental and ecological problem, especially in the metropolitan cities with large-scale traffic network and high population density. Low noise road surface (LNRS) has been actively developed and applied as an effective measure to maintain the quieter environment of mobility service system. However, when LNRS is applied for noise abatement, the relationship between the acoustic performance and degradation of pavement has not been fully understood yet. To this end, this study aims to model the acoustic longevity of asphalt pavement as a function of the thickness, binder content, maximum aggregate size, and air void content of the pavement surface, as well as vehicle speed based on the longterm tyre-road noise data collected from 270 asphalt pavement sections in Hong Kong. Two machine learning techniques, namely artificial neural networks (ANN) and support vector machines (SVM), were employed and compared. It was found that both ANN and SVM could successfully model the pavement acoustic performance with acceptable model performance metrics. A case study showed that the ANN model was more aligned with the aging mechanisms of porous road surface, but the SVM model showed better training performance. The predicted acoustic deterioration rates of the porous surface case varied from - 0.1 to 0.28 dB(A)/month rather than keeping a constant linear increasing trend, depending on pavement ageing periods and vehicle speed levels. The two-dimension sensitivity analysis (2D-SA) revealed the relative importance of pavement age and vehicle speed in controlling the acoustic performance.
机译:交通噪声排放长期以来一直是普遍存在的环境和生态问题,特别是在大城市城市,具有大规模的交通网络和人口高密度。低噪音路面(LNRS)已积极开发并应用为维持移动性服务系统更安静的环境的有效措施。然而,当LNRS用于噪声减排时,尚未完全理解声学性能和路面劣化之间的关系。为此,本研究旨在将沥青路面的声学寿命模拟为厚度,粘合剂含量,最大骨料尺寸和路面表面空隙含量的函数,以及基于Longterm轮胎路的车速从香港的270股沥青路面部分收集的噪声数据。采用两种机器学习技术,即人工神经网络(ANN)和支持向量机(SVM),并进行比较。发现ANN和SVM都可以通过可接受的模型性能指标成功模拟路面声学性能。案例研究表明,ANN模型与多孔路面的老化机制更加对齐,但SVM模型显示出更好的训练性能。根据路面老化周期和车速水平,多孔表面壳体的预测声学劣化率变化为0.1至0.28dB(a)/月,而不是保持恒定的线性增加趋势。两维灵敏度分析(2D-SA)揭示了路面时代和车速在控制声学性能方面的相对重要性。

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