Abstract
With the onslaught of the industrial revolution, the environment is suffering from severe pollution leading to major imbalances. Air Quality Dispersion Modelling can be done through one of the most efficient model “Eulerian Grid based model”. Various existing methods of prediction work on the basis of models resulting in satisfactory outcomes but with some certain loopholes. This project involves methods of predicting pollutants’ concentration and air quality using machine learning. The data of different sites are collected and the pollutants contributing maximum to the pollution is elucidated using machine learning based methods. Also in this project, a user-friendly, smart application system is developed which can be used to monitor the pollution produced at an individual level. The analysis of the feature stimulating the pollution level (to reach at a dangerous level) can be done with the help of machine learning tools. This paper involves calculating the amount of harmful pollutants released by any individual during their journey. Further solutions can be identified at government level to reduce these pollutants raising the pollution level.
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Jyoti, G., Nitima, M., Vikas, S., Komal, M. (2020). Calculating AQI Using Secondary Pollutants for Smart Air Management System. In: Sharma, N., Chakrabarti, A., Balas, V. (eds) Data Management, Analytics and Innovation. Advances in Intelligent Systems and Computing, vol 1016. Springer, Singapore. https://doi.org/10.1007/978-981-13-9364-8_10
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DOI: https://doi.org/10.1007/978-981-13-9364-8_10
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