DocumentCode :
2499005
Title :
Comparison of Weighted and Simple Linear Regression and Artificial Neural Network Models in Freeway Accidents Prediction
Author :
Mahmoudabadi, Abbas
Author_Institution :
Tech. & Eng. Dept., Payam-e-Noor Univ., Tehran, Iran
fYear :
2010
fDate :
23-25 April 2010
Firstpage :
392
Lastpage :
396
Abstract :
A number of models have been used for estimating frequency of accidents. Weighted and simple linear regressions are common and in the recent years artificial neural network models have also been used as prediction models of accidents. Researchers need to select and use some models with the best performance particularly with the minimum of mean square errors. In this paper, traffic volume, surface condition, heavy traffic, and monthly accident data have been analysed in two Iranian major freeways named Tehran-Qom and Karaj-Qazvin-zanjan and three different kinds of models including simple and weighted linear regression and artificial neural network have been developed for estimating the number of monthly accident based on the above input variables. The well-known software of MATLAB has been used for analytical process and principle component analysis technique has been used to ensure that input variables don´t have inter-relations. Principle components and loading have been calculated and results of PCA show that all input variables should be considered in modeling. The effectiveness of input variables based on T-test has been analyzed and the results show that traffic volume and surface condition have more effect in rural accidents. For models´ performance comparison, the mean square errors have been considered. It can be concluded, from the results, that artificial neural network has the best performance with minimum mean square errors.
Keywords :
data analysis; least mean squares methods; mathematics computing; neural nets; principal component analysis; regression analysis; traffic engineering computing; Karaj-Qazvin-zanjan freeway; MATLAB; T-test; Tehran-Qom freeway; accident frequency estimation; analytical process; artificial neural network model; freeway accidents prediction; heavy traffic data analysis; linear regression; minimum mean square errors; monthly accident data analysis; principle component analysis technique; surface condition data analysis; traffic volume data analysis; weighted regression; Artificial neural networks; Frequency estimation; Input variables; Linear regression; Mathematical model; Mean square error methods; Predictive models; Road accidents; Telecommunication traffic; Traffic control; Artificial Neural Network; Freeway; Linear regression; Rural Accidents; Surface Condition; Traffic Volume;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer and Network Technology (ICCNT), 2010 Second International Conference on
Conference_Location :
Bangkok
Print_ISBN :
978-0-7695-4042-9
Electronic_ISBN :
978-1-4244-6962-8
Type :
conf
DOI :
10.1109/ICCNT.2010.73
Filename :
5474470
Link To Document :
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