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引用次数: 2
摘要
空气污染是全球所有城市都在努力解决的威胁。世界卫生组织(World Health Organization)的数据显示,在印度,空气污染是第五大死因,每年导致约200万人死亡。准确预测一个地区空气污染水平的能力将使当局有机会采取积极措施,防止市民接触有毒污染物,避免雾霾造成的事故和财产损失。在本文中,我们使用基于历史数据的各种机器学习算法预测了印度多个城市的PM2.5水平。这些数据包括气象参数,如温度、风速、湿度和在给定日期/时间之前的污染物水平。基于预测模型的表现,我们对每个模型进行比较分析,并得出关键的见解。
A Comprehensive Analysis of Machine Learning Methods for Air Pollution Forecasting
Air pollution is a threat that all urban municipalities across the globe are trying to tackle. In India, air pollution is the fifth major cause of death, leading to around 2 million deaths per year, according to the World Health Organization. The ability to accurately predict air pollution levels in a region would give authorities the chance to take proactive measures, preventing the exposure of citizens to toxic pollutants and avoiding accidents and damage to property caused by smog. In this paper, we forecast the level of Particulate Matter 2.5 (PM2.5) for multiple urban cities in India using various machine learning algorithms built upon historical data. This data includes meteorological parameters such as temperature, wind speed, humidity, and the pollutant levels leading up to that given date/time. Based on the performance of the forecasting models, we perform a comparative analysis of each model and derive key insights.