噪音(视频)
环境科学
环境噪声
采样(信号处理)
空间变异性
噪声暴露
交通噪声
统计
气象学
自然地理学
地理
数学
计算机科学
电信
降噪
地质学
医学
听力学
图像(数学)
地貌学
人工智能
声音(地理)
听力损失
探测器
作者
Martina S. Ragettli,Sophie Goudreau,Céline Plante,Michel Fournier,Marianne Hatzopoulou,Stéphane Perron,Audrey Smargiassi
摘要
The availability of noise maps to assess exposure to noise is often limited, especially in North American cities. We developed land use regression (LUR) models for LAeq24h, Lnight, and Lden to assess the long-term spatial variability of environmental noise levels in Montreal, Canada, considering various transportation noise sources (road, rail, and air). To explore the effects of sampling duration, we compared our LAeq24h levels that were computed over at least five complete contiguous days of measurements to shorter sampling periods (20 min and 24 h). LUR models were built with General Additive Models using continuous 2-min noise measurements from 204 sites. Model performance (adjusted R2) was 0.68, 0.59, and 0.69 for LAeq24h, Lnight, and Lden, respectively. Main predictors of measured noise levels were road-traffic and vegetation variables. Twenty-minute non-rush hour measurements corresponded well with LAeq24h levels computed over 5 days at road-traffic sites (bias: -0.7 dB(A)), but not at rail (-2.1 dB(A)) nor at air (-2.2 dB(A)) sites. Our study provides important insights into the spatial variation of environmental noise levels in a Canadian city. To assess long-term noise levels, sampling strategies should be stratified by noise sources and preferably should include 1 week of measurements at locations exposed to rail and aircraft noise.
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