Title : ( Modeling and simulation of road traffic noise using artificial neural network and regression )
Authors: Mohammad Honarmand , Seyed Mahmoud Mousavi ,Access to full-text not allowed by authors
Abstract
Modeling and simulation of noise pollution has been done in a large city, where the population is over 2 millions. Two models of artificial neural network and regression were developed to predict in-city road traffic noise pollution with using the data of noise measurements and vehicle counts at three points of the city for a period of 12 hours. The MATLAB and DATAFIT softwares were used for simulation. The predicted results of noise level were compared with the measured noise levels in three stations. The values of normalized bias, sum of squared errors, mean of squared errors, root mean of squared errors, and squared correlation coefficient calculated for each model show the results of two models are suitable, and the predictions of artificial neural network are closer to the experimental data.
Keywords
artificial neural network; road traffic noise; regression; modeling; simulation@article{paperid:1045864,
author = {Honarmand, Mohammad and Mousavi, Seyed Mahmoud},
title = {Modeling and simulation of road traffic noise using artificial neural network and regression},
journal = {Journal of Environmental Science and Engineering},
year = {2014},
volume = {56},
number = {1},
month = {January},
issn = {0367-827X},
pages = {1--6},
numpages = {5},
keywords = {artificial neural network; road traffic noise; regression; modeling; simulation},
}
%0 Journal Article
%T Modeling and simulation of road traffic noise using artificial neural network and regression
%A Honarmand, Mohammad
%A Mousavi, Seyed Mahmoud
%J Journal of Environmental Science and Engineering
%@ 0367-827X
%D 2014