Assessing Personal PM2.5 Exposure: A Method Leveraging Movement Routes and Activity Space Information

IF 4.3 2区 环境科学与生态学 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Indoor air Pub Date : 2025-03-17 DOI:10.1155/ina/2412518
Shin-Young Park, Jaymin Kwon, Jeong-An Gim, Il-Ho Park, Cheol-Min Lee, Dae-Jin Song
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引用次数: 0

Abstract

Previous studies have consistently shown a significant correlation between air pollution, particularly PM2.5, and various diseases, as well as increased mortality rates. This study introduces a novel approach for predicting time-specific indoor PM2.5 exposure by incorporating individual movement routes and activity spaces using GPS tracking data and a time–activity diary. The models were trained separately for each hour of the day (e.g., 0:00–0:59, 1:00–1:59) with a total of 24 models. Their applicability was demonstrated with data gathered from actual participants. Additionally, automated machine learning (AutoML) was utilized to optimize prediction performance. The results revealed that the proposed model effectively accounted for the influence of outdoor PM2.5 concentrations and meteorological factors. The performance varied across different indoor environments, with the subway station model showing the highest prediction accuracy. Future research should address these uncertainties, adopt more advanced modeling techniques, and consider diverse indoor variables for a comprehensive understanding. The insights from this study could significantly enhance health risk assessments associated with fine particulate matter exposure.

Abstract Image

个人PM2.5暴露评估:一种利用运动路线和活动空间信息的方法
此前的研究一致表明,空气污染(尤其是PM2.5)与各种疾病以及死亡率上升之间存在显著相关性。本研究介绍了一种新的方法,通过结合个人运动路线和活动空间,利用GPS跟踪数据和时间-活动日记来预测特定时间的室内PM2.5暴露。每个小时(如0:00-0:59,1:00-1:59)对模型进行单独训练,共24个模型。从实际参与者那里收集的数据证明了它们的适用性。此外,利用自动化机器学习(AutoML)来优化预测性能。结果表明,该模型有效地考虑了室外PM2.5浓度和气象因子的影响。在不同的室内环境下,预测效果有所不同,其中地铁站模型的预测精度最高。未来的研究应该解决这些不确定性,采用更先进的建模技术,并考虑不同的室内变量进行全面的理解。这项研究的见解可以显著加强与细颗粒物暴露相关的健康风险评估。
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来源期刊
Indoor air
Indoor air 环境科学-工程:环境
CiteScore
10.80
自引率
10.30%
发文量
175
审稿时长
3 months
期刊介绍: The quality of the environment within buildings is a topic of major importance for public health. Indoor Air provides a location for reporting original research results in the broad area defined by the indoor environment of non-industrial buildings. An international journal with multidisciplinary content, Indoor Air publishes papers reflecting the broad categories of interest in this field: health effects; thermal comfort; monitoring and modelling; source characterization; ventilation and other environmental control techniques. The research results present the basic information to allow designers, building owners, and operators to provide a healthy and comfortable environment for building occupants, as well as giving medical practitioners information on how to deal with illnesses related to the indoor environment.
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