Keyi Shen, Ye Tian, Bisong Hu, Jin Luo, Shuhua Qi, Songli Chen, Hui Lin
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引用次数: 0
Abstract
Predicting air pollution is complex due to intertwined factors among local climate, built environment, and development stages. This study leverages K‐means clustering and an improved Apriori algorithm to investigate the combined effects of local meteorological, morphological, and socioeconomic factors on air quality in 244 prefectural‐level Chinese cities. Results reveal that the secondary industry in GDP and saturation vapor pressure strongly relate to air quality. Severe air pollution occurs when urban development is coupled with reduced green areas and high temperatures, confirming that a single factor cannot predict air quality well. For example, we find that combining low population, low regional GDP, high maximum temperatures, and longer roads worsens air quality in small urban built‐up areas. Additionally, temperature and altitude differences associate with highway passenger volume, regional GDP, and population differently. Given our rules mining methods have broader applications in diversified urban environments, this study provides new insights for improving air quality and local Sustainable Development Goals.
由于当地气候、建筑环境和发展阶段等因素相互交织,预测空气污染非常复杂。本研究利用 K 均值聚类和改进的 Apriori 算法,研究了当地气象、形态和社会经济因素对中国 244 个地级市空气质量的综合影响。结果显示,GDP 中的第二产业和饱和蒸汽压与空气质量密切相关。当城市发展与绿地面积减少和气温升高相结合时,就会出现严重的空气污染,这证明单一因素不能很好地预测空气质量。例如,我们发现人口少、地区 GDP 低、最高气温高、道路长等因素结合在一起,会使小城市建成区的空气质量恶化。此外,温度和海拔差异与公路客运量、地区 GDP 和人口的关系也不同。鉴于我们的规则挖掘方法可广泛应用于多样化的城市环境,本研究为改善空气质量和实现地方可持续发展目标提供了新的见解。
期刊介绍:
Transactions in GIS is an international journal which provides a forum for high quality, original research articles, review articles, short notes and book reviews that focus on: - practical and theoretical issues influencing the development of GIS - the collection, analysis, modelling, interpretation and display of spatial data within GIS - the connections between GIS and related technologies - new GIS applications which help to solve problems affecting the natural or built environments, or business