Application of Machine Learning to Air Pollution Studies: A Systematic Review

Marvelous Ukachukwu, Nnemeka Uzoamaka, Nnama Elochukwu
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Abstract

  Air pollution is a serious global issue that threatens human life and health, as well as the environment. Machine learning algorithms can be used to predict air pollution level data from both natural and anthropogenic activities. Environmental and government agencies can use these speculations to issue air pollution alerts. This review work is an attempt at the recent status and development of scientific studies on the use of machine learning algorithms to model air pollution challenges. This study uses the scientific web as a primary search engine and covers over 100 highly peer-reviewed articles from 2000-2022. Therefore, this review paper aims to highlight the various application methods of machine learning, notably data mining, in air pollution control and monitoring. It also comprehensively analyses published works by renowned scholars and authors worldwide, discussing how machine learning has been used in mitigating air pollution. By examining the chronological trends of machine learning in air pollution, this review paper provides an up-to-date account of the successes achieved in regulating air pollution using machine learning techniques. Additionally, it identifies areas that require further research, critically analyzing the current state of knowledge and potential research directions.
机器学习在空气污染研究中的应用:系统综述
空气污染是一个严重的全球性问题,威胁着人类的生命、健康和环境。机器学习算法可用于预测来自自然和人为活动的空气污染水平数据。环境和政府机构可以利用这些推测来发布空气污染警报。这项综述工作是对使用机器学习算法模拟空气污染挑战的科学研究的最新现状和发展的一次尝试。本研究使用科学网络作为主要搜索引擎,涵盖了2000年至2022年期间100多篇高度同行评审的文章。因此,本文旨在强调机器学习在空气污染控制和监测中的各种应用方法,特别是数据挖掘。它还全面分析了世界知名学者和作家发表的作品,讨论了机器学习如何用于减轻空气污染。通过研究空气污染中机器学习的时间趋势,这篇综述文章提供了使用机器学习技术在调节空气污染方面取得的成功的最新描述。此外,它还确定了需要进一步研究的领域,批判性地分析了知识的现状和潜在的研究方向。
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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