Walker Erica D, Hart Jaime E, Koutrakis Petros, Cavallari Jennifer M, VoPham Trang, Luna Marcos, Laden Francine
Department of Environmental Health, Harvard T.H. Chan School of Public Health, Boston, MA, United States.
Department of Environmental Health, Harvard T.H. Chan School of Public Health, Boston, MA, United States; Channing Division of Network Medicine, Department of Medicine, Brigham and Women's Hospital and Harvard Medical School, Boston, MA, United States.
Environ Res. 2017 Nov;159:491-499. doi: 10.1016/j.envres.2017.08.034. Epub 2017 Sep 18.
Urban sound levels are a ubiquitous environmental stressor and have been shown to be associated with a wide variety of health outcomes. While much is known about the predictors of A-weighted sound pressure levels in the urban environment, far less is known about other frequencies.
To develop a series of spatial-temporal sound models to predict A-weighted sound pressure levels, low, mid, and high frequency sound for Boston, Massachusetts.
Short-term sound levels were gathered at n = 400 sites from February 2015 - February 2016. Spatial and meteorological attributes at or near the sound monitoring site were obtained using publicly available data and a portable weather station. An elastic net variable selection technique was used to select predictors of A-weighted, low, mid, and high frequency sound.
The final models for low, mid, high, and A-weighted sound levels explained 59 - 69% of the variability in each measure. Similar to other A-weighted models, our sound models included transportation related variables such as length of roads and bus lines in the surrounding area; distance to road and rail lines; traffic volume, vehicle mix, residential and commercial land use. However, frequency specific models highlighted additional predictors not included in the A-weighted model including temperature, vegetation, impervious surfaces, vehicle mix, and density of entertainment establishments and restaurants.
Building spatial temporal models to characterize sound levels across the frequency spectrum using an elastic net approach can be a promising tool for noise exposure assessments within the urban soundscape. Models of sound's character may give us additional important sound exposure metrics to be utilized in epidemiological studies.
城市声级是一种普遍存在的环境压力源,已被证明与多种健康结果相关。虽然人们对城市环境中A加权声压级的预测因素了解很多,但对其他频率的了解却少得多。
建立一系列时空声音模型,以预测马萨诸塞州波士顿的A加权声压级、低频、中频和高频声音。
2015年2月至2016年2月在n = 400个地点收集短期声级。使用公开数据和便携式气象站获取声音监测站点或其附近的空间和气象属性。采用弹性网变量选择技术来选择A加权、低频、中频和高频声音的预测因素。
低频、中频、高频和A加权声级的最终模型解释了各测量值中59 - 69%的变异性。与其他A加权模型类似,我们的声音模型包括与交通相关的变量,如周边道路和公交线路的长度;到道路和铁路线的距离;交通量、车辆类型、住宅和商业用地。然而,特定频率模型突出了A加权模型中未包括的其他预测因素,包括温度、植被、不透水表面、车辆类型以及娱乐场所和餐馆的密度。
使用弹性网方法构建时空模型来表征整个频谱的声级,可能是城市声景中噪声暴露评估的一个有前途的工具。声音特征模型可能会为我们提供额外重要的声音暴露指标,用于流行病学研究。