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Pollution Weather Prediction System: Smart Outdoor Pollution Monitoring and Prediction for Healthy Breathing and Living

机译:污染天气预报系统:智能户外污染监测与健康呼吸与生活预测

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摘要

Air pollution has been a looming issue of the 21st century that has also significantly impacted the surrounding environment and societal health. Recently, previous studies have conducted extensive research on air pollution and air quality monitoring. Despite this, the fields of air pollution and air quality monitoring remain plagued with unsolved problems. In this study, the Pollution Weather Prediction System (PWP) is proposed to perform air pollution prediction for outdoor sites for various pollution parameters. In the presented research work, we introduced a PWP system configured with pollution-sensing units, such as SDS021, MQ07-CO, NO2-B43F, and Aeroqual Ozone (O3). These sensing units were utilized to collect and measure various pollutant levels, such as PM2.5, PM10, CO, NO2, and O3, for 90 days at Symbiosis International University, Pune, Maharashtra, India. The data collection was carried out between the duration of December 2019 to February 2020 during the winter. The investigation results validate the success of the presented PWP system. In the conducted experiments, linear regression and artificial neural network (ANN)-based AQI (air quality index) predictions were performed. Furthermore, the presented study also found that the customized linear regression methodology outperformed other machine-learning methods, such as linear, ridge, Lasso, Bayes, Huber, Lars, Lasso-lars, stochastic gradient descent (SGD), and ElasticNet regression methodologies, and the customized ANN regression methodology used in the conducted experiments. The overall AQI values of the air pollutants were calculated based on the summation of the AQI values of all the presented air pollutants. In the end, the web and mobile interfaces were developed to display air pollution prediction values of a variety of air pollutants.
机译:空气污染是21世纪的迫在眉睫的问题,也显着影响周围环境和社会健康。最近,之前的研究对空气污染和空气质量监测进行了广泛的研究。尽管如此,空气污染和空气质量监测领域仍然存在未解决的问题。在本研究中,提出了污染天气预报系统(PWP)对各种污染参数的户外部位进行空气污染预测。在本研究工作中,我们介绍了一种PWP系统,配置了污染感测单元,例如SDS021,MQ07-CO,NO2-B43F和AeroQual臭氧(O3)。这些传感单元用于在Symbiosis International大学,Pune,Maharashtra,India,收集和测量各种污染物水平,例如PM2.5,PM10,CO,NO2和O3,为90天。数据收集是在2019年12月至2020年12月期间的冬季期间进行的。调查结果验证了PWP系统的成功。在进行的实验中,进行了基于AQI(空气质量指数)预测的线性回归和人工神经网络(ANN)。此外,所提出的研究还发现,定制的线性回归方法表现出其他机器学习方法,例如线性,岭,套索,贝叶斯,Huber,Lars,卢斯 - Lars,随机梯度下降(SGD)和弹性对回归方法,和所进行的实验中使用的定制ANN回归方法。基于所有所提出的空气污染物的AQI值的总和计算空气污染物的总体AQI值。最后,开发了网络和移动接口以显示各种空气污染物的空气污染预测值。

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