Soft Computing and Regression Modelling Approaches for Link-Capacity Functions
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BRONZE
Green Open Access
Yes
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Abstract
Link-capacity functions are the relationships between the fundamental traffic variables like travel time and the flow rate. These relationships are important inputs to the capacity-restrained traffic assignment models. This study investigates the prediction of travel time as a function of several variables V/C (flow rate/capacity), retail activity, parking, number of bus stops and link type. For this purpose, the necessary data collected in Izmir, Turkey are employed by Artificial Neural Networks (ANNs) and Regression-based models of multiple linear regression (MLR) and multiple non-linear regression (MNLR). In ANNs modelling, 70% of the whole dataset is randomly selected for the training, whereas the rest is utilized in testing the model. Similarly, the same training dataset is employed in obtaining the optimal values of the coefficients of the regression-based models. Although all of the variables are used in the input vector of the models to predict the travel time, the most significant independent variables are found to be V/C and retail activity. By considering these two significant input variables, ANNs predicted the travel time with the correlation coefficient R = 0:87 while this value was almost 0.60 for the regression-based models.
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Keywords
Artificial neural networks, Flow rate, Link capacities, Regression analysis, Travel time, Traffic control, Travel time, Artificial neural networks, Traffic control, Link capacities, Flow rate, Regression analysis
Fields of Science
0502 economics and business, 05 social sciences, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
Koşun, Ç., Tayfur, G., and Çelik, H. M. (2016). Soft computing and regression modelling approaches for link-capacity functions. Neural Network World, 26(2), 129-140. doi:10.14311/NNW.2016.26.007
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Volume
26
Issue
2
Start Page
129
End Page
140
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