基于Landsat 8图像的有监督机器学习技术空气质量评估

Nattadet Vijaranakul, S. Jaiyen, Panu Srestasathiern, S. Lawawirojwong, Kulsawasd Jitkajornwanich
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引用次数: 3

摘要

自2018年以来,在每年的冬季(12月至1月),泰国一直遭受被称为PM 2.5有毒粉尘的空气污染问题,影响了人们的日常生活,特别是在曼谷及其大都市区。为了解决这个问题,传统的方法之一是在特定地点实施物理空气质量测量装置。目前,曼谷及周边地区共有21个车站。每个监测站都可以在给定的半径范围内对监测点的空气质量进行评估,这意味着远离监测站的地区将无法得到适当的评估。在本文中,我们提出了一种将卫星图像与监督机器学习技术结合起来进行空气质量评估的方法。本文测试的几种分类模型有决策树、Naïve贝叶斯、k近邻(kNN)、随机森林和梯度增强。从我们的实验来看,性能最好的模型是Random Forest,平均准确率为0.914,平均精密度为0.89,平均召回率为0.814,平均F-1得分为0.84825。
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Air Quality Assessment Based on Landsat 8 Images Using Supervised Machine Learning Techniques
Since 2018 during the winter of every year (December - January), Thailand has been suffering from air pollution problems known as PM 2.5 toxic dust, affecting people’s daily lives especially in Bangkok and its metroplex. To cope with this problem, one of the traditional methods used is to implement physical air quality measurement devices at specific locations. Currently there are 21 stations across Bangkok and surrounding areas. Each station can assess air quality at the station point along with the given radius, meaning that areas far away from the station will not be assessed properly. In this paper, we propose a methodology that incorporates satellite images for air quality assessment with supervised machine learning techniques. Several classification models tested in this paper are Decision Tree, Naïve Bayes, k-Nearest Neighbors (kNN), Random Forest, and Gradient Boosting. From our experiments, the highest performance model is Random Forest that has averaged accuracy of 0.914, averaged precision of 0.89, averaged recall of 0.814 and averaged F-1 score of 0.84825.
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