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Optimising Citizen-Driven Air Quality Monitoring Networks for Cities

机译:优化城市居民的空气质量监测网络

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Air quality has had a significant impact on public health, the environment and eventually on the economy of countries for decades. Effectively mitigating air pollution in urban areas necessitates accurate air quality exposure information. Recent advancements in sensor technology and the increasing popularity of volunteered geographic information (VGI) open up new possibilities for air quality exposure assessment in cities. However, citizens and their sensors are put in areas deemed to be subjectively of interest (e.g., where citizens live, school of their kids or working spaces), and this leads to missed opportunities when it comes to optimal air quality exposure assessment. In addition, while the current literature on VGI has extensively discussed data quality and citizen engagement issues, few works, if any, offer techniques to fine-tune VGI contributions for an optimal air quality exposure assessment. This article presents and tests an approach to minimise land use regression prediction errors on citizen-contributed data. The approach was evaluated using a dataset (N = 116 sensors) from the city of Stuttgart, Germany. The comparison between the existing network design and the combination of locations selected by the optimisation method has shown a drop in spatial mean prediction error by 52%. The ideas presented in this article are useful for the systematic deployment of VGI air quality sensors, and can aid in the creation of higher resolution, more realistic maps for air quality monitoring in cities.
机译:几十年来,空气质量一直对公共健康,环境乃至国家经济产生重大影响。要有效减轻城市地区的空气污染,就需要准确的空气质量暴露信息。传感器技术的最新进展以及自愿性地理信息(VGI)的日益普及为城市空气质量暴露评估开辟了新的可能性。但是,市民及其传感器被放置在被认为是主观上令人感兴趣的区域(例如,市民居住的地方,他们的孩子的学校或工作场所),当进行最佳空气质量暴露评估时,这会导致错过机会。此外,尽管有关VGI的最新文献已广泛讨论了数据质量和公民参与问题,但很少有作品提供技术来微调VGI的贡献,以进行最佳的空气质量暴露评估。本文介绍并测试了一种方法,可以最大程度地减少对公民贡献的数据的土地利用回归预测误差。使用德国斯图加特市的数据集(N = 116个传感器)对这种方法进行了评估。现有网络设计与通过优化方法选择的位置组合之间的比较显示,空间平均预测误差降低了52%。本文中提出的想法对于VGI空气质量传感器的系统部署很有用,并且可以帮助创建更高分辨率,更逼真的地图,用于城市空气质量监测。

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