Public Article
-
verified
Midterm Air Pollution Monitoring and Prediction Based on Adaptive Neural Fuzzy Inference System
ISSN: 2348 - 2273Publisher: author   
Midterm Air Pollution Monitoring and Prediction Based on Adaptive Neural Fuzzy Inference System
Indexed in
Technology and Engineering
ARTICLE-FACTOR
1.3
Article Basics Score: 2
Article Transparency Score: 2
Article Operation Score: 3
Article Articles Score: 3
Article Accessibility Score: 2
SUBMIT PAPER ASK QUESTION
International Category Code (ICC):
ICC-1802
Publisher: International Journal Of Electrical Electronics & Computer..
International Journal Address (IAA):
IAA.ZONE/234856872273
eISSN
:
2348 - 2273
VALID
ISSN Validator
Abstract
The prediction air pollutants plays a decisive role in taking preventive measures in the community. In this paper, using the data received from the measurement centers of the air pollutants in different regions of Tehran and with the help of the intelligent approach of the adaptive networks-fuzzy inference systems, a scheme is designed that can automatically Forecast the amount of air pollutants in a few hours in future. For this purpose, two common pollutants of Sulfur dioxide and particulate matters have been selected. Therefore, in short-term and mid-term phases, the proposed algorithm is studied and the simulation results are analyzed in each phase. Simulation results indicate high accuracy in the short term forecast as well as acceptable accuracy in the mid-term forecast.