Department of Computer Science and Engineering, Northwest Normal University, Lanzhou 730070, China.
School for Environment and Sustainability, University of Michigan, Ann Arbor, MI 48109, USA.
Int J Environ Res Public Health. 2022 Jun 29;19(13):8005. doi: 10.3390/ijerph19138005.
Spatially explicit urban air quality information is important for urban fine-management and public life. However, existing air quality measurement methods still have some limitations on spatial coverage and system stability. A micro station is an emerging monitoring system with multiple sensors, which can be deployed to provide dense air quality monitoring data. Here, we proposed a method for urban air quality mapping at high-resolution for multiple pollutants. By using the dense air quality monitoring data from 448 micro stations in Lanzhou city, we developed a decision tree model to infer the distribution of citywide air quality at a 500 m × 500 m × 1 h resolution, with a coefficient of determination (R) value of 0.740 for PM, 0.754 for CO and 0.716 for SO. Meanwhile, we also show that the deployment density of the monitoring stations can have a significant impact on the air quality inference results. Our method is able to show both short-term and long-term distribution of multiple important pollutants in the city, which demonstrates the potential and feasibility of dense monitoring data combined with advanced data science methods to support urban atmospheric environment fine-management, policy making, and public health studies.
空间显式城市空气质量信息对于城市精细化管理和公众生活至关重要。然而,现有的空气质量测量方法在空间覆盖范围和系统稳定性方面仍然存在一些局限性。微型站是一种新兴的多传感器监测系统,可用于提供密集的空气质量监测数据。在这里,我们提出了一种用于多污染物的高分辨率城市空气质量制图的方法。通过使用来自兰州市 448 个微型站的密集空气质量监测数据,我们开发了一个决策树模型,以推断全市空气质量在 500 m×500 m×1 h 分辨率下的分布,其中 PM 的决定系数(R)值为 0.740,CO 为 0.754,SO 为 0.716。同时,我们还表明监测站的部署密度对空气质量推断结果有重大影响。我们的方法能够显示城市中多种重要污染物的短期和长期分布,这证明了密集监测数据与先进的数据科学方法相结合,支持城市大气环境精细化管理、政策制定和公共卫生研究的潜力和可行性。