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Application of land use regression modelling to assess the spatial distribution of road traffic noise in three European cities

机译:应用土地利用回归模型评估三个欧洲城市道路交通噪声的空间分布

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Noise prediction models and noise maps are used to estimate the exposure to road traffic noise, but their availability and the quality of the noise estimates is sometimes limited. This paper explores the application of land use regression (LUR) modelling to assess the long-term intraurban spatial variability of road traffic noise in three European cities. Short-term measurements of road traffic noise taken in Basel, Switzerland (n=60), Girona, Spain (n=40), and Grenoble, France (n=41), were used to develop two LUR models: (a) a "GIS-only" model, which considered only predictor variables derived with Geographic Information Systems; and (b) a "Best" model, which in addition considered the variables collected while visiting the measurement sites. Both noise measurements and noise estimates from LUR models were compared with noise estimates from standard noise models developed for each city by the local authorities. Model performance (adjusted R-2) was 0.66-0.87 for "GIS-only" models, and 0.70-0.89 for "Best" models. Shortterm noise measurements showed a high correlation (r=0.62-0.78) with noise estimates from the standard noise models. LUR noise estimates did not show any systematic differences in the spatial patterns when compared with those from standard noise models. LUR modelling with accurate GIS source data can be a promising tool for noise exposure assessment with applications in epidemiological studies.
机译:噪声预测模型和噪声图用于估计道路交通噪声的暴露程度,但是它们的可用性和噪声估计的质量有时受到限制。本文探讨了土地利用回归(LUR)模型在评估三个欧洲城市道路交通噪声的长期城市内部空间变异性中的应用。在瑞士的巴塞尔(n = 60),西班牙的赫罗纳(n = 40)和法国的格勒诺布尔(n = 41)进行的道路交通噪声的短期测量被用于开发两个LUR模型:(a)a “仅GIS”模型,该模型仅考虑通过地理信息系统得出的预测变量; (b)“最佳”模型,该模型还考虑了在访问测量站点时收集的变量。将LUR模型的噪声测量结果和噪声估计值与地方当局针对每个城市开发的标准噪声模型的噪声估计值进行了比较。对于“仅GIS”模型,模型性能(调整后的R-2)为0.66-0.87,对于“最佳”模型,模型性能为0.70-0.89。短期噪声测量显示与标准噪声模型的噪声估计高度相关(r = 0.62-0.78)。与标准噪声模型相比,LUR噪声估计没有显示出空间模式的任何系统差异。具有准确的GIS源数据的LUR建模可以成为一种有希望的工具,用于流行病学研究中的噪声暴露评估。

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