利用支持向量机和决策树进行集合学习,根据气溶胶光学厚度数据估算 PM2.5 浓度

Q3 Environmental Science
Satith Sangpradid, Theeraya Uttha, Ilada Aroonsri
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引用次数: 0

摘要

空气污染,尤其是直径为 2.5 微米或以下的细颗粒物(PM2.5),是全球许多地区(包括泰国东北部地区)的一个重大公共健康问题。本研究调查了该地区 PM2.5 浓度与气象空间数据集(如表面相对湿度(SRH)、表面风速(SPD)、能见度(Vis)、表面温度(ST)和气溶胶光学厚度(AOT))之间的相关性。利用地理信息系统技术和反距离加权技术绘制了气象数据集和地面站 PM2.5 测量值的空间分布图。对 PM2.5 和气象数据集之间的关系进行了皮尔逊相关分析。采用决策树和支持向量机(SVM)算法来估计基于空间数据集的 PM2.5 浓度。结果表明,Vis 和 ST 与 PM2.5 呈中度正线性关系,而 AOT 呈中度负线性关系。SRH 和 SPD 与 PM2.5 的关系较弱。决策树算法和 SVM 算法在估计的 PM2.5 浓度和测量的 PM2.5 浓度之间显示出很强的正相关性。研究表明,机器学习算法是基于 AOT 数据估算 PM2.5 浓度的有效工具,特征选择可以提高模型性能。可以采用集合学习来进一步提高模型性能,尤其是在空间变化较大的地区。总之,这项研究为利用机器学习算法和 AOT 数据估算 PM2.5 浓度提供了一种很有前景的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimates of PM2.5 Concentration Based on Aerosol Optical Thickness Data Using Ensemble Learning with Support Vector Machine and Decision Tree
Air pollution, particularly fine particulate matter with a diameter of 2.5 micrometers or less (PM2.5), is a significant public health concern in many regions worldwide, including the northeastern region of Thailand. This study investigates the correlation between PM2.5 concentrations and meteorological spatial datasets such as surface relative humidity (SRH), surface wind speed (SPD), visibility (Vis), surface temperature (ST), and aerosol optical thickness (AOT) in the region. GIS techniques and the inverse distance weighting technique were used to create spatial maps of the meteorological datasets and ground station PM2.5 measurements. Pearson correlation analysis was performed to examine the relationship between PM2.5 and the meteorological datasets. Decision tree and support vector machine (SVM) algorithms were employed to estimate PM2.5 concentrations based on the spatial datasets. The results showed that Vis and ST have a moderate positive linear relationship with PM2.5, while AOT has a moderate negative linear relationship. SRH and SPD have weak relationships with PM2.5. The decision tree and SVM algorithms demonstrated a strong positive correlation between estimated and measured PM2.5 concentrations. The study shows that machine learning algorithms can be effective tools for estimating PM2.5 concentration based on AOT data, and feature selection can improve model performance. Ensemble learning could be employed to further improve model performance, particularly in regions with high spatial variability. Overall, the study provides a promising approach for estimating PM2.5 concentration using machine learning algorithms and AOT data.
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来源期刊
Environmental Research, Engineering and Management
Environmental Research, Engineering and Management Environmental Science-Environmental Engineering
CiteScore
2.40
自引率
0.00%
发文量
32
期刊介绍: First published in 1995, the journal Environmental Research, Engineering and Management (EREM) is an international multidisciplinary journal designed to serve as a roadmap for understanding complex issues and debates of sustainable development. EREM publishes peer-reviewed scientific papers which cover research in the fields of environmental science, engineering (pollution prevention, resource efficiency), management, energy (renewables), agricultural and biological sciences, and social sciences. EREM’s topics of interest include, but are not limited to, the following: environmental research, ecological monitoring, and climate change; environmental pollution – impact assessment, mitigation, and prevention; environmental engineering, sustainable production, and eco innovations; environmental management, strategy, standards, social responsibility; environmental economics, policy, and law; sustainable consumption and education.
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