利用机器学习改进空气质量健康指数(AQHI)的构建和预测策略:中国广州案例研究。

IF 6.2 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES Ecotoxicology and Environmental Safety Pub Date : 2024-11-15 DOI:10.1016/j.ecoenv.2024.117287
Lei Zhang , Yuanyuan Chen , Hang Dong , Di Wu , Sili Chen , Xin Li , Boheng Liang , Qiaoyuan Yang
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引用次数: 0

摘要

有效捕捉空气污染风险并告知居民对公众健康至关重要。被广泛使用的空气质量指数(AQI)因未能准确反映空气污染与健康结果之间的非阈值线性关系而饱受批评。虽然开发空气质量健康指数(AQHI)是为了解决这些局限性,但它缺乏全面的构建标准。本研究提出了一种利用机器学习方法构建和预测空气质量健康指数的新策略。我们的RF-Alasso-QGC方法整合了随机森林(RF)、自适应拉索(Alasso)和基于量子的G计算(QGC),可有效地选择污染物并构建空气质量健康指数。RF-Alasso 方法排除了一氧化碳,而将 PM10、PM2.5、二氧化氮、二氧化硫和臭氧确定为造成死亡的主要因素。QGC 方法控制了这些空气污染物之间的叠加效应和协同效应。与标准-AQHI 相比,新的 RF-Alasso-QGC-AQHI 与健康结果的相关性更强,四分位数(IQR)增加与总死亡率增加 1.80 %(1.44 %,2.17 %)相关,且拟合度最佳。此外,混合自回归移动平均-长短期记忆(ARIMA-LSTM)成功预测了新的空气质量健康指数,决定系数(R²)达到 0.961。这项工作表明,改进后的空气质量健康指数构建和预测策略能更有效地传达多种空气污染物的健康风险并提供预警。
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Improving the construction and prediction strategy of the Air Quality Health Index (AQHI) using machine learning: A case study in Guangzhou, China
Effectively capturing the risk of air pollution and informing residents is vital to public health. The widely used Air Quality Index (AQI) has been criticized for failing to accurately represent the non-threshold linear relationship between air pollution and health outcomes. Although the Air Quality Health Index (AQHI) was developed to address these limitations, it lacks comprehensive construction criteria. This work proposed a novel construction and prediction strategy of AQHI using machine learning methods. Our RF-Alasso-QGC method integrated Random Forest (RF), Adaptive Lasso (Alasso), and Quantile-based G-Computation (QGC) for effective pollutant selection and AQHI construction. The RF-Alasso method excluded CO, while identified PM10, PM2.5, NO2, SO2, and O3 as major contributors to mortality. The QGC method controlled the additive and synergistic effects among these air pollutants. Compared to the Standard-AQHI, the new RF-Alasso-QGC-AQHI demonstrated a stronger correlation with health outcomes, with an interquartile (IQR) increase associated with a 1.80 % (1.44 %, 2.17 %) increase in total mortality, and the best goodness of fit. Additionally, the hybrid Auto Regressive Moving Average-Long Short Term Memory (ARIMA-LSTM) successfully forecast the new AQHI, achieving a coefficient of determination (R²) of 0.961. The work demonstrated that the improved AQHI construction and prediction strategy more efficiently communicate and provide early warnings of the health risks of multiple air pollutants.
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来源期刊
CiteScore
12.10
自引率
5.90%
发文量
1234
审稿时长
88 days
期刊介绍: Ecotoxicology and Environmental Safety is a multi-disciplinary journal that focuses on understanding the exposure and effects of environmental contamination on organisms including human health. The scope of the journal covers three main themes. The topics within these themes, indicated below, include (but are not limited to) the following: Ecotoxicology、Environmental Chemistry、Environmental Safety etc.
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