空气污染
污染
污染物
时间序列
依赖关系(UML)
环境科学
置信区间
人类健康
气象学
计算机科学
环境卫生
统计
机器学习
人工智能
地理
数学
生物
医学
有机化学
化学
生态学
作者
K. Krishna Rani Samal,Korra Sathya Babu,Santos Kumar Das,Abhirup Acharaya
标识
DOI:10.1145/3355402.3355417
摘要
Air pollution severely affects many countries around the world causing serious health effects or death. Increasing dependency on fossil fuels through the last century has been responsible for the degradation in our atmospheric condition. Pollution emitting from various vehicles also cause an immense amount of pollution. Pollutants like RSPM, SO2, NO2, SPM, etc. are the major contributors to air pollution which can lead to acute and chronic effects on human health. The research focus of this paper is to identify the usefulness of analytics models to build a system that is capable of giving a rough estimate of the future levels of pollution within a considerable confidence interval. Rendered linear regression techniques are found to be insufficient for the time-dependent data. In this regard, we have used time series forecasting approach for predicting the future levels of various pollutants within a considerable confidence interval. The experimental analysis of the forecasting for the air pollution levels of Bhubaneswar City indicates the effectiveness of our proposed method using SARIMA and Prophet model.
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