Suppr超能文献

评估传感器误差对城市空气污染物人群暴露代表性的影响。

Assessment of the impact of sensor error on the representativeness of population exposure to urban air pollutants.

机构信息

Division of Environment and Sustainability, The Hong Kong University of Science and Technology, Clear Water Bay, Hong Kong, China.

Division of Environment and Sustainability, The Hong Kong University of Science and Technology, Clear Water Bay, Hong Kong, China.

出版信息

Environ Int. 2022 Jul;165:107329. doi: 10.1016/j.envint.2022.107329. Epub 2022 May 30.

Abstract

For the monitoring of urban air pollution, smart sensors are often seen as a welcome addition to fixed-site monitoring (FSM) networks. Due to price and simple installation, increases in spatial representation are thought to be achieved by large numbers of these sensors, however, a number of sensor errors have been identified. Based on a high-resolution modelling system, up to 400 pseudo smart sensors were perturbated with the aim of simulating common sensor errors and added to the existing FSM network in Hong Kong, resulting in 1200 pseudo networks for PM and 1040 pseudo networks for NO. For each pseudo network, population-weighted area representativeness (PWAR) was calculated based on similarity frequency. For PM, improvements (up to 16%) to the high baseline representativeness (PWAR = 0.74) were achievable only by the addition of high-quality sensors and favourable environmental conditions. The baseline FSM network represents NO less well (PWAR = 0.52), as local emissions in the study domain resulted in high spatial pollution variation. Due to higher levels of pollution (population-weighted average 37.3 ppb) in comparison to sensor error ranges, smart sensors of a wider quality range were able to improve network representativeness (up to 42%). Marginal representativeness increases were found to exponentially decrease with existing sensor number. The quality and maintenance of added sensors had a stronger effect on overall network representativeness than the number of sensors added. Often, a small number of added sensors of a higher quality class led to larger improvements than hundreds of lower-class sensors. Whereas smart sensor performance and maintenance are important prerequisites particularly for developed cities where pollutant concentration is low and there is an existing FSM network, our study shows that for places with high pollutant variability and concentration such as encountered in some developing countries, smart sensors will provide benefits for understanding population exposure.

摘要

对于城市空气污染监测,智能传感器通常被视为固定监测(FSM)网络的有益补充。由于价格低廉且安装简单,因此人们认为通过大量传感器可以提高空间代表性,但是已经确定了一些传感器错误。基于高分辨率建模系统,用多达 400 个伪智能传感器进行了扰动,旨在模拟常见的传感器错误,并将其添加到香港现有的 FSM 网络中,从而为 PM 和 NO 分别生成了 1200 个伪网络和 1040 个伪网络。对于每个伪网络,根据相似频率计算了人口加权面积代表性(PWAR)。对于 PM,只有通过添加高质量传感器和有利的环境条件,才能提高高基线代表性(PWAR=0.74)(最多可提高 16%)。由于研究区域内的本地排放导致空间污染变化较大,因此基础 FSM 网络对 NO 的代表性较差(PWAR=0.52)。与传感器误差范围相比,由于污染水平较高(人口加权平均值为 37.3 ppb),因此质量范围更广的智能传感器能够提高网络代表性(最多可提高 42%)。发现代表性的边际增加与现有传感器数量呈指数减少。添加传感器的质量和维护对整体网络代表性的影响要强于添加的传感器数量。通常,添加少数高质量传感器比添加数百个低质量传感器可以带来更大的改进。尽管智能传感器的性能和维护对于特别是污染物浓度较低且存在现有 FSM 网络的发达城市而言是重要的前提条件,但我们的研究表明,对于像某些发展中国家那样存在高污染物变异性和浓度的地方,智能传感器将有助于了解人口暴露情况。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验