Air pollution prediction and hotspot detection using machine learning

Shailee Bhatia, Shelly Sachdeva, Puneet Goswami
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引用次数: 1

Abstract

Abstract Air pollution is a vital issue that affects day-to-day lives. It is observed that throughout the world, there is an instant need to overcome the monster of pollution. According to statistics, most of the polluted cities in the world are in India. This poses a serious need of the hour for the Indian scientists, engineers, and authorities as a whole to fight and reduce it as much as possible. The time has come when one needs to plan their outside activities on pollution levels and air quality status. Air Quality Index (AQI) varies daily; hence it is difficult to predict future trends for the same. The current study proposed a machine learning-based model that uses sensors, past/present pollutants concentration data, and satellite data to predict air pollution in the regions in India. We emphasize the fact that other than measurable pollutants (PM10, PM2.5, NO2, etc.); meteorological data like wind, temperature, and fire are also important factors in determining pollution. The model uses Long Short-Term Memory, which is the state-of-the-art technique used for time series prediction. The model could predict the concentration of the pollutants and calculate the AQI for the areas where data was available for the near future. The Root Mean Square Error on test data is 54. The results are quite promising and future model can be made, taking this as a base model. An inexpensive prediction technique can greatly help the administration in mitigating pollution.
利用机器学习进行空气污染预测和热点检测
空气污染是影响人们日常生活的重要问题。人们注意到,在全世界范围内,迫切需要克服污染这个怪物。据统计,世界上污染最严重的城市都在印度。这对印度科学家、工程师和当局来说是一个迫切的需要,他们需要共同努力,尽可能地减少这种情况。人们需要根据污染水平和空气质量状况来规划户外活动的时候到了。空气质素指数(AQI)每日变化;因此,很难预测未来的趋势。目前的研究提出了一种基于机器学习的模型,该模型使用传感器、过去/现在的污染物浓度数据和卫星数据来预测印度地区的空气污染。我们强调,除了可测量的污染物(PM10、PM2.5、NO2等);风、温度和火灾等气象数据也是确定污染的重要因素。该模型使用了长短期记忆,这是用于时间序列预测的最先进技术。该模型可以预测污染物的浓度,并计算出近期有数据的地区的空气质量指数。测试数据的均方根误差为54。结果很有希望,可以以此为基础模型制作未来的模型。一种廉价的预测技术可以极大地帮助管理部门减轻污染。
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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