
Analysis of Fine Gained Air Quality Using Deep Learning
Author(s) -
Shubh Mohan Singh
Publication year - 2021
Publication title -
international journal for research in applied science and engineering technology
Language(s) - English
Resource type - Journals
ISSN - 2321-9653
DOI - 10.22214/ijraset.2021.36655
Subject(s) - air quality index , particulates , air pollution , urbanization , feature (linguistics) , cluster analysis , multivariate interpolation , environmental science , pollution , industrialisation , interpolation (computer graphics) , computer science , quality (philosophy) , pollutant , meteorology , machine learning , artificial intelligence , geography , image (mathematics) , market economy , ecology , linguistics , chemistry , philosophy , organic chemistry , epistemology , economic growth , computer vision , economics , bilinear interpolation , biology
With the rapid development of industrialization and urbanization, air pollution is increasing at an alarming rate in many developing countries. The four air pollutants which are becoming a concerning threat to human health are namely respirable particulate matter, nitrogen oxides, particulate matter and sulphur dioxide. The models which are currently used for air quality prediction by comparing to the AQI indexes do not give satisfactory results, which inspired us to examine the methods of predicting air quality based on deep learning using the K-Mean Clustering algorithm and Image Processing Technique. The interpolation, prediction, and feature analysis of fine-gained air quality are three important topics in the area of air computing. A good interpolation helps to estimate the limited air quality monitoring stations whose distribution is uneven in a city; an accurate prediction provides valuable information to protect humans and take necessary measures to reduce the effect of air pollution; a reasonable feature analysis is used to provide a more effective and general model. Overall, finding solutions to these topics can bring out extremely useful information to support air pollution control, and consequently generate great societal and technical impacts.