Detection and Prediction of Air Pollution using Machine Learning and Deep Learning Techniques

Madhuri Vikas Mane, Deepak Kumar, K. Agarwal
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Abstract

For the past several years, urbanization and industrialization have been on increase in developed nations, resulting in a huge rise in contaminated air. Citizens and governments have become increasingly worried about the detrimental effects of Air Pollution (AP). Predicting Air Quality (AQ) is a critical step that the government should take because it becoming a major public health concern. The AQ index is a metric for measuring AQ. When fossil fuels such as natural gas, coal, and wood are burned, as well as factories and motor cars, carbon dioxide, nitrogen dioxide, carbon monoxide, and other noxious gases are emitted which leads to AP. This can cause health issues such as cancer, brain impairment, and even death. The forecast of AP allows the government to take preventive actions such as restricting driving hours, partially closing factories, and issuing public service messages. So, the prediction of AP is essential and there is a lot of research being done in this field. This research article reviewed the recent works on AP prediction and present the research using five important sections. In the first section of this review, we will discuss the available methods that can be used to acquire AP data. Second, the processes that can be carried out to pre-process the raw data. Third, the prediction of pollution made use of developing technologies such as Machine Learning (ML) and Deep Learning (DL), and lastly, the evaluation of the model was discussed. The research gap and future steps on the prediction of AP also elaborated. This review will help researchers for a better understanding of the automatic prediction of AP.
利用机器学习和深度学习技术检测和预测空气污染
在过去的几年里,发达国家的城市化和工业化程度不断提高,导致受污染的空气大量增加。公民和政府越来越担心空气污染的有害影响。预测空气质量(AQ)是政府应该采取的关键步骤,因为它成为一个主要的公共卫生问题。空气质量指数是衡量空气质量的指标。燃烧天然气、煤炭、木材等化石燃料,以及工厂和汽车排放的二氧化碳、二氧化氮、一氧化碳等有毒气体会导致AP,从而导致癌症、脑损伤甚至死亡等健康问题。根据AP的预报,政府可以采取限制驾驶时间、部分关闭工厂、发布公共服务信息等预防措施。因此,对急性脑损伤的预测是非常必要的,在这一领域有大量的研究。本文综述了近年来在AP预测方面的研究进展,并从五个方面进行了介绍。在本文的第一部分中,我们将讨论可用于获取AP数据的可用方法。第二,可以对原始数据进行预处理的过程。第三,污染预测利用了机器学习(ML)和深度学习(DL)等新兴技术,最后,讨论了模型的评估。并阐述了在AP预测方面的研究空白和下一步工作。本文综述将有助于研究人员更好地理解AP的自动预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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