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Environmental Health Surveillance System for a Population Using Advanced Exposure Assessment

机译:利用先进暴露评估的人口环境卫生监测系统

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摘要

Human exposure to air pollution is a major public health concern. Environmental policymakers have been implementing various strategies to reduce exposure, including the 10th-day-no-driving system. To assess exposure of an entire population of a community in a highly polluted area, pollutant concentrations in microenvironments and population time–activity patterns are required. To date, population exposure to air pollutants has been assessed using air monitoring data from fixed atmospheric monitoring stations, atmospheric dispersion modeling, or spatial interpolation techniques for pollutant concentrations. This is coupled with census data, administrative registers, and data on the patterns of the time-based activities at the individual scale. Recent technologies such as sensors, the Internet of Things (IoT), communications technology, and artificial intelligence enable the accurate evaluation of air pollution exposure for a population in an environmental health context. In this study, the latest trends in published papers on the assessment of population exposure to air pollution were reviewed. Subsequently, this study proposes a methodology that will enable policymakers to develop an environmental health surveillance system that evaluates the distribution of air pollution exposure for a population within a target area and establish countermeasures based on advanced exposure assessment.
机译:人类暴露于空气污染是一个主要的公共卫生问题。环境政策制定者一直在实施各种战略,以减少曝光,包括10天无驾驶系统。为了评估在高度污染的区域中群体的整个人群的暴露,需要微环境和人口时间活动模式中的污染物浓度。迄今为止,使用来自固定大气监测站,大气分散模型或空间插值技术的空气监测数据进行评估人口暴露于空气污染物,用于污染物浓度的空间插值技术。这与人口普查数据,管理寄存器和数据上的基于时间范围的模式的数据耦合。最近的技术,如传感器,物联网(物联网),通信技术和人工智能,可以准确评估环境健康背景下的人口的空气污染暴露。在这项研究中,综述了关于评估人口暴露于空气污染的论文的最新趋势。随后,本研究提出了一种方法,使政策制定者能够开发一个环境健康监测系统,该系统评估目标区域内的人口的空气污染暴露的分布,并建立基于先进的暴露评估的对策。

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