Air Quality Index Prediction using Linear Regression
Author(s) -
G. N. Ambika,
Mr. Bhanu Pratap Singh,
Ms. Bhavya Sah,
Ms. Dishi Tiwari
Publication year - 2019
Publication title -
international journal of recent technology and engineering (ijrte)
Language(s) - English
Resource type - Journals
ISSN - 2277-3878
DOI - 10.35940/ijrte.b2437.078219
Subject(s) - excellence , air quality index , metropolitan area , environmental science , air pollution , contamination , linear regression , statistics , meteorology , mathematics , geography , ecology , chemistry , archaeology , organic chemistry , political science , law , biology
controlling and preserving the better air excellence has become one of the most indispensible events in numerous manufacturing plus metropolitan regions at present. The excellence of air is harmfully affecting payable to the various forms of contamination affected via the transportation, power, fuels expenditures, etc. The installation of destructive fumes is spawning the severe hazard for the class of natural life in developed metropolises. Through cumulative air contamination, we require implementing competent air excellence monitoring models which gathers the statistics about the absorption of air impurities and be responsible for calculation of air contamination in each zone. Hence, air excellence estimation plus calculation has come to be a significant study area. The superiority of air is exaggerated by multi-dimensional influences comprising place, time plus indeterminate parameters. The intention of this development is to examine the machine learning based methods for air quality prediction.
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