利用基于传感器的测量和易于获取的预测器预测每小时室内臭氧浓度

IF 17.6
Jiaxin Chen , Chang Xu , Su Shi , Xinyue Li , Yichen Jiang , Xinling He , Weiran Sun , Sijin Liu , Haidong Kan , Xia Meng
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引用次数: 0

摘要

很少有研究使用机器学习方法预测室内臭氧(O3)水平。本研究旨在使用易于获取的预测器和机器学习算法预测每小时室内臭氧浓度。我们利用低成本传感器测量了中国18个城市的室内O3浓度,并结合环境O3浓度、气象因素和二元窗口状态指标作为通风行为的代理,建立了随机森林模型。结果表明,将窗口状态作为预测因子提高了模型的性能,交叉验证R2从0.80增加到0.83,均方根误差(RMSE)从7.89降低到7.21 ppb,突出了考虑通风行为对提高模型精度的重要性。该模型还有效地捕获了室内臭氧的每小时变化,揭示了室内臭氧浓度始终比室外水平更低、更稳定。这些差异表明,仅仅依靠环境数据可能会歪曲真实的个人暴露情况,强调有必要将室内暴露纳入评估。这是首次在大地理空间尺度上应用易于获取的变量和机器学习方法进行室内O3预测的研究,显示出提高流行病学研究中暴露评估准确性的良好潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predicting hourly indoor ozone concentrations with sensor-based measurements and easily accessible predictors

Predicting hourly indoor ozone concentrations with sensor-based measurements and easily accessible predictors
Few studies have predicted indoor ozone (O3) levels using machine learning methods. This study aimed to predict hourly indoor O3 concentrations using easily accessible predictors and a machine learning algorithm. We took measurements of indoor O3 concentrations based on low-cost sensors in 18 cities in China, along with ambient O3 concentration, meteorological factors, and a binary window status indicator as a proxy for ventilation behaviour, to establish random forest models. The results showed that including window status as a predictor improved model performance, with the cross-validation R2 increasing from 0.80 to 0.83 and the root mean square error (RMSE) decreasing from 7.89 to 7.21 ​ppb, highlighting the importance of considering ventilation behavior in enhancing model accuracy. The model also effectively captured hourly variations in indoor O3, revealing that indoor O3 concentrations were consistently lower and more stable than outdoor levels. These differences suggest that relying solely on ambient data may misrepresent true personal exposure, underscoring the need to incorporate indoor exposure in assessments. This is the first study to apply easily accessible variables and machine learning methods for indoor O3 prediction at a large geographic spatial scale, showing promising potential for improving the accuracy of exposure assessments in epidemiological studies.
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来源期刊
Eco-Environment & Health
Eco-Environment & Health 环境科学与生态学-生态、环境与健康
CiteScore
11.00
自引率
0.00%
发文量
18
审稿时长
22 days
期刊介绍: Eco-Environment & Health (EEH) is an international and multidisciplinary peer-reviewed journal designed for publications on the frontiers of the ecology, environment and health as well as their related disciplines. EEH focuses on the concept of “One Health” to promote green and sustainable development, dealing with the interactions among ecology, environment and health, and the underlying mechanisms and interventions. Our mission is to be one of the most important flagship journals in the field of environmental health. Scopes EEH covers a variety of research areas, including but not limited to ecology and biodiversity conservation, environmental behaviors and bioprocesses of emerging contaminants, human exposure and health effects, and evaluation, management and regulation of environmental risks. The key topics of EEH include: 1) Ecology and Biodiversity Conservation Biodiversity Ecological restoration Ecological safety Protected area 2) Environmental and Biological Fate of Emerging Contaminants Environmental behaviors Environmental processes Environmental microbiology 3) Human Exposure and Health Effects Environmental toxicology Environmental epidemiology Environmental health risk Food safety 4) Evaluation, Management and Regulation of Environmental Risks Chemical safety Environmental policy Health policy Health economics Environmental remediation
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