Mannshardt Elizabeth, Benedict Kristen, Jenkins Scott, Keating Martha, Mintz David, Stone Susan, Wayland Richard
a U.S. Environmental Protection Agency , Research Triangle Park , NC , USA.
J Air Waste Manag Assoc. 2017 Apr;67(4):462-474. doi: 10.1080/10962247.2016.1251995. Epub 2016 Nov 3.
Air quality sensors are becoming increasingly available to the general public, providing individuals and communities with information on fine-scale, local air quality in increments as short as 1 min. Current health studies do not support linking 1-min exposures to adverse health effects; therefore, the potential health implications of such ambient exposures are unclear. The U.S. Environmental Protection Agency (EPA) establishes the National Ambient Air Quality Standards (NAAQS) and Air Quality Index (AQI) on the best science available, which typically uses longer averaging periods (e.g., 8 hr; 24 hr). Another consideration for interpreting sensor data is the variable relationship between pollutant concentrations measured by sensors, which are short-term (1 min to 1 hr), and the longer term averages used in the NAAQS and AQI. In addition, sensors often do not meet federal performance or quality assurance requirements, which introduces uncertainty in the accuracy and interpretation of these readings. This article describes a statistical analysis of data from regulatory monitors and new real-time technology from Village Green benches to inform the interpretation and communication of short-term air sensor data. We investigate the characteristics of this novel data set and the temporal relationships of short-term concentrations to 8-hr average (ozone) and 24-hr average (PM) concentrations to examine how sensor readings may relate to the NAAQS and AQI categories, and ultimately to inform breakpoints for sensor messages. We consider the empirical distributions of the maximum 8-hr averages (ozone) and 24-hr averages (PM) given the corresponding short-term concentrations, and provide a probabilistic assessment. The result is a robust, empirical comparison that includes events of interest for air quality exceedances and public health communication. Concentration breakpoints are developed for short-term sensor readings such that, to the extent possible, the related air quality messages that are conveyed to the public are consistent with messages related to the NAAQS and AQI.
Real-time sensors have the potential to provide important information about fine-scale current air quality and local air quality events. The statistical analysis of short-term regulatory and sensor data, coupled with policy considerations and known health effects experienced over longer averaging times, supports interpretation of such short-term data and efforts to communicate local air quality.
空气质量传感器越来越普及,能为个人和社区提供短至1分钟的精细尺度的本地空气质量信息。当前的健康研究并不支持将1分钟的暴露与不良健康影响联系起来;因此,这种环境暴露对健康的潜在影响尚不清楚。美国环境保护局(EPA)根据现有最佳科学依据制定国家环境空气质量标准(NAAQS)和空气质量指数(AQI),通常采用较长的平均时段(例如,8小时;24小时)。解释传感器数据的另一个考虑因素是传感器测量的污染物浓度(短期,1分钟至1小时)与NAAQS和AQI中使用的长期平均值之间的可变关系。此外,传感器通常不符合联邦性能或质量保证要求,这给这些读数的准确性和解释带来了不确定性。本文描述了对来自监管监测器的数据以及来自乡村绿长椅的新型实时技术的统计分析,以告知短期空气传感器数据的解释和交流。我们研究了这个新数据集的特征以及短期浓度与8小时平均(臭氧)和24小时平均(颗粒物)浓度的时间关系,以检查传感器读数如何与NAAQS和AQI类别相关,最终为传感器信息确定断点。我们考虑了给定相应短期浓度时最大8小时平均值(臭氧)和24小时平均值(颗粒物)的经验分布,并提供概率评估。结果是一个稳健的经验比较,包括空气质量超标和公共卫生交流的相关事件。为短期传感器读数制定了浓度断点,以便在可能的情况下,传达给公众的相关空气质量信息与与NAAQS和AQI相关的信息一致。
实时传感器有潜力提供有关精细尺度当前空气质量和本地空气质量事件的重要信息。对短期监管和传感器数据的统计分析,结合政策考虑以及较长平均时间内已知的健康影响,支持对这类短期数据的解释以及本地空气质量交流的努力。