Comparative Analysis of Machine Learning for Predicting Air Quality in Smart Cities

Kamel Maaloul, Lejdel Brahim
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Abstract

Ambient air pollution is the most harmful environmental risk to health. As urban air quality improves, health costs from air pollution-related diseases diminish. This is why air pollution is a major challenge for the public and government around the world. Deployment of the Internet of Things-based sensors has considerably changed the dynamics of predicting air quality. Air pollution can be predicted using machine learning algorithms Data-based sensors in the context of smart cities. In this paper, we performed pollution forecasting using machine learning techniques while presenting a comparative study to determine the best model to accurately predict air quality. Random Forest is an efficient algorithm capable of detecting air quality.
智能城市空气质量预测的机器学习比较分析
环境空气污染是对健康危害最大的环境风险。随着城市空气质量的改善,与空气污染有关的疾病造成的健康成本减少。这就是为什么空气污染是全世界公众和政府面临的一个重大挑战。基于物联网的传感器的部署极大地改变了预测空气质量的动态。在智能城市的背景下,可以使用机器学习算法来预测空气污染。在本文中,我们使用机器学习技术进行污染预测,同时提出了一项比较研究,以确定准确预测空气质量的最佳模型。随机森林是一种有效的空气质量检测算法。
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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