This paper discusses a neural network development approach based on an exponential smoothing method which aims at enhancing previously used neural networks for traffic flow forecasting. The approach uses the exponential smoothing method to pre-process traffic flow data before implementing on neural networks for training purpose. The pre-processed traffic flow data, which is lesser non-smooth, discontinuous and lumpy than the original traffic flow data, is more suitable to use for neural network training. This neural network development approach was evaluated by forecasting real-time traffic conditions on a section of the freeway in Western Australia. Regarding training errors which indicate capability in fitting traffic flow data, the neura...
A neural network model for predicting the traffic speed under adverse weather conditions is proposed...
This paper introduces a binary neural network-based prediction algorithm incorporating both spatial ...
It is possible for routing and navigation applications to provide more accurate and more effective r...
Neural networks have commonly been applied for traffic flow predictions. Generally, the past traffic...
This paper proposes a novel neural network (NN) training method that employs the hybrid exponential ...
Neural networks have been applied for short-term traffic flow forecasting with reasonable accuracy. ...
Individuals need traffic flow management and analysis to better manage and route their everyday jour...
AbstractThis study applies Artificial Neural Network (ANN) for short term prediction of traffic flow...
As traffic demands are ever increasing and building new infrastructure poses challenges in densely p...
A full methodology of short-term traffic prediction is proposed for urban road traffic network via A...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
With the increasing interest in creating Smart Cities, traffic speed and flow prediction have attrac...
This paper discusses an object-oriented neural network model that was developed for predicting short...
Static models and simulations are commonly used in urban traffic management but none feature a dynam...
Vehicle headways play a role of paramount importance in many traffic engineering applications. They ...
A neural network model for predicting the traffic speed under adverse weather conditions is proposed...
This paper introduces a binary neural network-based prediction algorithm incorporating both spatial ...
It is possible for routing and navigation applications to provide more accurate and more effective r...
Neural networks have commonly been applied for traffic flow predictions. Generally, the past traffic...
This paper proposes a novel neural network (NN) training method that employs the hybrid exponential ...
Neural networks have been applied for short-term traffic flow forecasting with reasonable accuracy. ...
Individuals need traffic flow management and analysis to better manage and route their everyday jour...
AbstractThis study applies Artificial Neural Network (ANN) for short term prediction of traffic flow...
As traffic demands are ever increasing and building new infrastructure poses challenges in densely p...
A full methodology of short-term traffic prediction is proposed for urban road traffic network via A...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
With the increasing interest in creating Smart Cities, traffic speed and flow prediction have attrac...
This paper discusses an object-oriented neural network model that was developed for predicting short...
Static models and simulations are commonly used in urban traffic management but none feature a dynam...
Vehicle headways play a role of paramount importance in many traffic engineering applications. They ...
A neural network model for predicting the traffic speed under adverse weather conditions is proposed...
This paper introduces a binary neural network-based prediction algorithm incorporating both spatial ...
It is possible for routing and navigation applications to provide more accurate and more effective r...