空气质量指数
相互依存
计算机科学
环境监测
Boosting(机器学习)
空气污染
梯度升压
实时计算
无线传感器网络
持续监测
工程类
机器学习
环境工程
运营管理
计算机网络
物理
气象学
随机森林
有机化学
化学
法学
政治学
作者
Yanis Colléaux,Cédric Willaume,Bijan Mohandes,Jean‐Christophe Nebel,Farzana Rahman
出处
期刊:Sensors
[MDPI AG]
日期:2025-02-26
卷期号:25 (5): 1423-1423
被引量:3
摘要
Given the significant impact of air pollution on global health, the continuous and precise monitoring of air quality in all populated environments is crucial. Unfortunately, even in the most developed economies, current air quality monitoring networks are largely inadequate. The high cost of monitoring stations has been identified as a key barrier to widespread coverage, making cost-effective air quality monitoring devices a potential game changer. However, the accuracy of the measurements obtained from low-cost sensors is affected by many factors, including gas cross-sensitivity, environmental conditions, and production inconsistencies. Fortunately, machine learning models can capture complex interdependent relationships in sensor responses and thus can enhance their readings and sensor accuracy. After gathering measurements from cost-effective air pollution monitoring devices placed alongside a reference station, the data were used to train such models. Assessments of their performance showed that models tailored to individual sensor units greatly improved measurement accuracy, boosting their correlation with reference-grade instruments by up to 10%. Nonetheless, this research also revealed that inconsistencies in the performance of similar sensor units can prevent the creation of a unified correction model for a given sensor type.
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