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首页> 外文期刊>Nature reviews Cancer >Improving Correlations between Land Use and Air Pollutant Concentrations Using Wavelet Analysis: Insights from a Low-cost Sensor Network
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Improving Correlations between Land Use and Air Pollutant Concentrations Using Wavelet Analysis: Insights from a Low-cost Sensor Network

机译:使用小波分析提高土地利用与空气污染物浓度的相关性:低成本传感器网络的见解

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City-wide air pollution assessments have typically relied on a small number of widely separated regulatory monitoring sites or land use regression (LUR) models built using time-integrated samples to assess annual average population-scale exposure. However, air pollutant concentrations often exhibit significant spatial and temporal variability depending on local sources and features of the built environment. In 2016, the Center for Air, Climate, and Energy Solutions (CACES) Air Quality Observatory was launched at Carnegie Mellon University to better understand urban spatial and temporal pollution gradients on the 8 h) above the regional background. Compared to the non-decomposed total pollutant signal, the short-lived or persistent enhancement pollutant signals, which should come from local sources, were better correlated with covariates used in LUR model construction. For example, Pearson r between total vehicle counts in a 100 m buffer and NO2 increased from 0.57 using the total pollutant signal to 0.83 using the persistent enhancement only. The findings from this study support building more accurate and higher time resolution (e.g., daily, hourly) LURs using low-cost sensors.
机译:城市范围的空气污染评估通常依赖于使用时间集成样本建造的少数广泛分离的监管部位或土地利用回归(LUR)模型来评估年平均人口规模曝光。然而,根据内置环境的局部来源和特征,空气污染物浓度通常表现出显着的空间和时间可变性。 2016年,航空公司,气候和能源解决中心(COALS)空气质量天文台在卡内基梅隆大学推出,以更好地了解区域背景上方的8小时城市空间和颞污染梯度。与非分解的总污染物信号相比,应该来自局部来源的短寿命或持续的增强污染物信号与LUR模型建设中使用的协变量更好地相关。例如,100米缓冲器中总车辆计数与NO2之间的Pearson R从0.57增加,使用总污染物信号增加到0.83,仅使用持续增强。本研究的调查结果支持使用低成本传感器来构建更准确和更高的时间分辨率(例如,每日,每小时)的遗址。

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