Forecasting particulate matter concentration in Shanghai using a small-scale long-term dataset

IF 6 3区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Andreu Salcedo-Bosch, Lian Zong, Yuanjian Yang, Jason B. Cohen, Simone Lolli
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Abstract

This study applies machine learning techniques, specifically stacked generalization, to develop a 1-day-ahead air pollution forecasting model for Shanghai, one of the largest metropolitan areas in the world, taking advantage of the essential information on air quality that can be inferred from a small but long-term dataset of meteorological and pollutant concentration variables (\(\text{PM}_{10}\) and \(\text{PM}_{2.5}\)), consisting of only 4240 samples. We conducted a comprehensive analysis of daily-averaged meteorological observation data, including temperature (T), relative humidity (RH), wind speed (WS) and direction (WD) and precipitation (P) from 74 automatic weather stations over a 12-year period, from 2011 to 2021, and satellite-retrieved aerosol optical depth (AOD) at 550 nm and planetary boundary layer height (PBLH) for the same time interval. In addition, principal component analysis (PCA) was used to identify the most prevalent synoptic weather patterns in the Shanghai region to assess the origin of pollution advection sources. Thanks to the long-term trends information used for model training, combined with machine learning stacking generalization techniques, the developed model improved the prediction results of alternative methods for pollution forecasting with limited observations, obtaining RMSE and \(R^2\) values of 11.93\(\upmu \text{g}\, \text{m}^{-3}\) and 0.72, respectively. Moreover, it was able to forecast most of the pollution peaks, such as those in January 2019 and November 2020, showing itself as a useful tool for policy making and alerting for health risks. The results of this study highlight the need for cohesive strategies that tackle both air quality and climate change to promote sustainable urban growth and environmental robustness.

基于小尺度长期数据的上海大气颗粒物浓度预测
本研究应用机器学习技术,特别是叠加概化技术,为上海开发了一个1天前的空气污染预测模型,上海是世界上最大的大都市之一,利用了空气质量的基本信息,这些信息可以从一个只有4240个样本的小型长期气象和污染物浓度变量数据集(\(\text{PM}_{10}\)和\(\text{PM}_{2.5}\))中推断出来。对2011 - 2021年12年间74个自动气象站的日平均气温(T)、相对湿度(RH)、风速(WS)和风向(WD)、降水(P)等气象观测资料,以及卫星反演的550 nm气溶胶光学深度(AOD)和行星边界层高度(PBLH)进行了综合分析。此外,利用主成分分析(PCA)对上海地区最常见的天气天气模式进行识别,以评价污染平流源的来源。由于模型训练中使用了长期趋势信息,结合机器学习叠加泛化技术,所开发的模型改进了有限观测值下污染预测替代方法的预测结果,RMSE和\(R^2\)值分别为11.93 \(\upmu \text{g}\, \text{m}^{-3}\)和0.72。此外,它能够预测大多数污染峰值,例如2019年1月和2020年11月的污染峰值,这表明它是政策制定和健康风险预警的有用工具。本研究的结果强调,需要有凝聚力的战略来解决空气质量和气候变化问题,以促进可持续的城市增长和环境稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Environmental Sciences Europe
Environmental Sciences Europe Environmental Science-Pollution
CiteScore
11.20
自引率
1.70%
发文量
110
审稿时长
13 weeks
期刊介绍: ESEU is an international journal, focusing primarily on Europe, with a broad scope covering all aspects of environmental sciences, including the main topic regulation. ESEU will discuss the entanglement between environmental sciences and regulation because, in recent years, there have been misunderstandings and even disagreement between stakeholders in these two areas. ESEU will help to improve the comprehension of issues between environmental sciences and regulation. ESEU will be an outlet from the German-speaking (DACH) countries to Europe and an inlet from Europe to the DACH countries regarding environmental sciences and regulation. Moreover, ESEU will facilitate the exchange of ideas and interaction between Europe and the DACH countries regarding environmental regulatory issues. Although Europe is at the center of ESEU, the journal will not exclude the rest of the world, because regulatory issues pertaining to environmental sciences can be fully seen only from a global perspective.
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