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Development of Machine Learning-based Predictive Models for Air Quality Monitoring and Characterization

机译:基于机器学习的空气质量监测和表征预测模型的开发

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One of the biggest environmental problems right now is air pollution. Air quality is needed to be consistently monitored and assessed to ensure better living conditions. The U.S. Environmental Protection Agency (EPA) uses the air quality index (AQI) to standardize the air quality. However, AQI requires precise and accurate sensor readings and complex calculations, making it not feasible for portable air quality monitoring devices. The aim of this paper is to find an alternative way of monitoring and characterizing air quality through the use of integrated gas sensors and building predictive models using machine learning algorithms that can be used to obtain data-driven solutions to mitigate the risk of air pollution. The proposed methodology is implemented by building a prototype for the integrated sensors using DHT 11 temperature and relative humidity sensor, MQ2, MQ5 and MQ135 gas sensors. Five predictive models are developed in the study, k-nearest neighbors (KNN), support vector machine (SVM), Naïve-Bayesian classifier, random forest and neural network. Results show that the researchers are able to obtain an accuracy of 98.67%, 97.78%, 98.67%, 94.22%, and 99.56% for all the five models respectively, having the neural network to be the best performing model.
机译:当前最大的环境问题之一是空气污染。需要对空气质量进行持续的监测和评估,以确保更好的生活条件。美国环境保护署(EPA)使用空气质量指数(AQI)来标准化空气质量。但是,AQI需要精确的传感器读数和复杂的计算,因此对于便携式空气质量监测设备而言并不可行。本文的目的是找到一种通过使用集成气体传感器和使用机器学习算法建立预测模型来监测和表征空气​​质量的替代方法,该算法可用于获取数据驱动的解决方案以减轻空气污染的风险。通过使用DHT 11温度和相对湿度传感器,MQ2,MQ5和MQ135气体传感器为集成传感器构建原型来实现所提出的方法。研究中开发了五个预测模型,即k最近邻(KNN),支持向量机(SVM),朴素贝叶斯分类器,随机森林和神经网络。结果表明,研究人员能够在五个模型中分别获得98.67%,97.78 \%,98.67 \%,94.22 \%和99.56 \%的准确性,其中神经网络是表现最佳的模型。

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