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机器学习对新冠疫情封锁期间颗粒物变化的洞察:在马什哈德的长短期记忆网络和随机森林分析

Machine learning insights into PM changes during COVID-19 lockdown: LSTM and RF analysis in Mashhad.

作者信息

Moezzi Seyed Mohammad Mahdi, Mohammadi Mitra, Mohammadi Mandana, Saloglu Didem, Sheikholeslami Razi

机构信息

Department of Civil Engineering, Sharif University of Technology, Tehran, Iran.

Department of Environmental Science, Kheradgarayan Motahar Institute of Higher Education, Mashhad, Iran.

出版信息

Environ Monit Assess. 2024 Apr 15;196(5):453. doi: 10.1007/s10661-024-12567-5.

Abstract

This study seeks to investigate the impact of COVID-19 lockdown measures on air quality in the city of Mashhad employing two strategies. We initiated our research using basic statistical methods such as paired sample t-tests to compare hourly PM data in two scenarios: before and during quarantine, and pre- and post-lockdown. This initial analysis provided a broad understanding of potential changes in air quality. Notably, a low reduction of 2.40% in PM was recorded when compared to air quality prior to the lockdown period. This finding highlights the wide range of factors that impact the levels of particulate matter in urban settings, with the transportation sector often being widely recognized as one of the principal causes of this issue. Nevertheless, throughout the period after the quarantine, a remarkable decrease in air quality was observed characterized by distinct seasonal patterns, in contrast to previous years. This finding demonstrates a significant correlation between changes in human mobility patterns and their influence on the air quality of urban areas. It also emphasizes the need to use air pollution modeling as a fundamental tool to evaluate and understand these linkages to support long-term plans for reducing air pollution. To obtain a more quantitative understanding, we then employed cutting-edge machine learning methods, such as random forest and long short-term memory algorithms, to accurately determine the effect of the lockdown on PM levels. Our models' results demonstrated remarkable efficacy in assessing the pollutant concentration in Mashhad during lockdown measures. The test set yielded an R-squared value of 0.82 for the long short-term memory network model, whereas the random forest model showed a calculated cross-validation R-squared of 0.78. The required computational cost for training the LSTM and the RF models across all data was 25 min and 3 s, respectively. In summary, through the integration of statistical methods and machine learning, this research attempts to provide a comprehensive understanding of the impact of human interventions on air quality dynamics.

摘要

本研究旨在采用两种策略,调查新冠疫情封锁措施对马什哈德市空气质量的影响。我们使用配对样本t检验等基本统计方法开展研究,以比较两个情景下的每小时PM数据:检疫前和检疫期间,以及封锁前和封锁后。这一初步分析让我们对空气质量的潜在变化有了大致了解。值得注意的是,与封锁期之前的空气质量相比,PM仅降低了2.40%。这一发现凸显了影响城市环境中颗粒物水平的多种因素,交通部门通常被广泛认为是该问题的主要原因之一。然而,在检疫后的整个时期,与前几年相比,空气质量出现了显著下降,并呈现出明显的季节性模式。这一发现表明人类流动模式的变化与其对城市空气质量的影响之间存在显著关联。它还强调了需要将空气污染建模作为评估和理解这些联系的基本工具,以支持减少空气污染的长期计划。为了获得更定量的认识,我们随后采用了前沿的机器学习方法,如随机森林和长短期记忆算法,来准确确定封锁对PM水平的影响。我们模型的结果在评估封锁措施期间马什哈德的污染物浓度方面显示出显著成效。对于长短期记忆网络模型,测试集的R平方值为0.82,而随机森林模型的交叉验证R平方计算值为0.78。在所有数据上训练LSTM和RF模型所需的计算成本分别为25分钟和3秒。总之,通过整合统计方法和机器学习,本研究试图全面了解人类干预对空气质量动态的影响。

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