predicting air pollution in tehran: genetic algorithm and back propagation neural network

Authors

m. asghari

h. nematzadeh

abstract

suspended particles have deleterious effects on human health and one of the reasons why tehran is effected is its geographically location of air pollution. one of the most important ways to reduce air pollution is to predict the concentration of pollutants. this paper proposed a hybrid method to predict the air pollution in tehran based on particulate matter less than 10 microns (pm10), and the information and data of aghdasiyeh weather quality control station and mehrabad weather station from 2007 to 2013. generally, 11 inputs have been inserted to the model, to predict the daily concentration of pm10. for this purpose, artificial neural network with back propagation (bp) with a middle layer and sigmoid activation function and its hybrid with genetic algorithm (bp-ga) were used and ultimately the performance of the proposed method was compared with basic artificial neural networks along with (bp) based on the criteria of - r2-, rmse and mae.  the finding shows that bp-ga   has higher accuracy and performance. in addition, it was also found that the results are more accurate for shorter time periods and this is because the large fluctuation of data in long-term returns negative effect on network performance. also, unregistered data have negative effect on predictions. microsoft excel and matlab 2013 conducted the simulations.

Upgrade to premium to download articles

Sign up to access the full text

Already have an account?login

similar resources

Predicting air pollution in Tehran: Genetic algorithm and back propagation neural network

Suspended particles have deleterious effects on human health and one of the reasons why Tehran is effected is its geographically location of air pollution. One of the most important ways to reduce air pollution is to predict the concentration of pollutants. This paper proposed a hybrid method to predict the air pollution in Tehran based on particulate matter less than 10 microns (PM10), and the...

full text

Predicting air pollution in Tehran: Genetic algorithm and back propagation neural network

Suspended particles have deleterious effects on human health and one of the reasons why Tehran is effected is its geographically location of air pollution. One of the most important ways to reduce air pollution is to predict the concentration of pollutants. This paper proposed a hybrid method to predict the air pollution in Tehran based on particulate matter less than 10 microns (PM10), and the...

full text

Application of Artificial Neural Network and Genetic Algorithm for Predicting three Important Parameters in Bakery Industries

Farinograph is the most frequently used equipment for empirical rheological measurements of dough. It’suseful to illustrate quality of flour, behavior of dough during mechanical handling and texturalcharacteristics of finished products. The percentage of water absorption and the development time of doughare the most important parameters of farinography for bakery industries during production. H...

full text

Predicting Phishing Websites using Neural Network trained with Back-Propagation

Phishing is increasing dramatically with the development of modern technologies and the global worldwide computer networks. This results in the loss of customer’s confidence in e-commerce and online banking, financial damages, and identity theft. Phishing is fraudulent effort aims to acquire sensitive information from users such as credit card credentials, and social security number. In this ar...

full text

Predicting Shear Capacity of Panel Zone Using Neural Network and Genetic Algorithm

Investigating the behavior of the box-shaped column panel zone has been one of the major concerns of scientists in the field.  In the American Institute of Steel Construction the shear capacity of I-shaped cross- sections with low column thickness is calculated. This paper determines the shear capacity of panel zone in steel columns with box-shaped cross-sections by using artificial neural netw...

full text

A Modiied Back Propagation Algorithm for Neural Network Training

| A variation of the classical Back{Propagation algorithm for neural network training is proposed and convergence is established using the perturbation results of Mangasarian and Solodov 1]. The algorithm is similar to the Successive Overrelaxation (SOR) algorithm for systems of linear equations and linear complementary problems in using the most recently computed values of the weights to updat...

full text

My Resources

Save resource for easier access later


Journal title:
journal of ai and data mining

Publisher: shahrood university of technology

ISSN 2322-5211

volume 4

issue 1 2016

Hosted on Doprax cloud platform doprax.com

copyright © 2015-2023