AbstractIn this study, in the purpose of providing a dynamic procedure for reliable travel time specification, the performance of a neural functional approximation method is analysed. The numerical analyses are carried out on the succeeding sections of a freeway segment inputting data obtained from microwave radar sensor units located successively at the cross-sections of a freeway segment of approximately 4km. Measurements on traffic variables, i.e., vehicle counts, speed, and occupancy, for the reference time periods are processed. The structure of the employed radial basis function neural networks are configured considering the data of a three-lane freeway segment obtained by succeeding sensors located in side-fired position. Travel time...
<p>Travel time and its reliability are intuitive system performance measures for freeway traffic ope...
Effective algorithm for travel time estimation has become increasingly important, as it is the backb...
This paper discusses an object-oriented neural network model that was developed for predicting short...
AbstractIn this study, in the purpose of providing a dynamic procedure for reliable travel time spec...
This paper discusses a neural network freeway travel time estimation model that was developed and ev...
Providing transportation system operators and travelers with accurate travel time information allows...
Increasing car mobility has lead to an increasing demand for traffic information. This contribution ...
The main purpose of this study was to investigate the predictability of travel time with a model bas...
Providing transportation system operators and travelers with accurate travel time information allows...
The objective of this study is to estimate the real time travel times on urban networks that are par...
The Advanced Traffic Management System of San Antonio, Texas, called TransGuide System uses a sensor...
We show that prediction of travel time on a 28-km long highway section based on on-line travel time ...
This article discusses how the structure of the measurement system affects the short-term forecasts ...
The transportation literature is rich in the application of neural networks for travel time predict...
This thesis describes the implementation of a Radial Basis Function (RBF) network to be used in pred...
<p>Travel time and its reliability are intuitive system performance measures for freeway traffic ope...
Effective algorithm for travel time estimation has become increasingly important, as it is the backb...
This paper discusses an object-oriented neural network model that was developed for predicting short...
AbstractIn this study, in the purpose of providing a dynamic procedure for reliable travel time spec...
This paper discusses a neural network freeway travel time estimation model that was developed and ev...
Providing transportation system operators and travelers with accurate travel time information allows...
Increasing car mobility has lead to an increasing demand for traffic information. This contribution ...
The main purpose of this study was to investigate the predictability of travel time with a model bas...
Providing transportation system operators and travelers with accurate travel time information allows...
The objective of this study is to estimate the real time travel times on urban networks that are par...
The Advanced Traffic Management System of San Antonio, Texas, called TransGuide System uses a sensor...
We show that prediction of travel time on a 28-km long highway section based on on-line travel time ...
This article discusses how the structure of the measurement system affects the short-term forecasts ...
The transportation literature is rich in the application of neural networks for travel time predict...
This thesis describes the implementation of a Radial Basis Function (RBF) network to be used in pred...
<p>Travel time and its reliability are intuitive system performance measures for freeway traffic ope...
Effective algorithm for travel time estimation has become increasingly important, as it is the backb...
This paper discusses an object-oriented neural network model that was developed for predicting short...