In this paper, an aggregation approach is proposed for traffic flow prediction that is based on the moving average (MA), exponential smoothing (ES), autoregressive MA (ARIMA), and neural network (NN) models. The aggregation approach assembles information from relevant time series. The source time series is the traffic flow volume that is collected 24 h/day over several years. The three relevant time series are a weekly similarity time series, a daily similarity time series, and an hourly time series, which can be directly generated from the source time series. The MA, ES, and ARIMA models are selected to give predictions of the three relevant time series. The predictions that result from the different models are used as the basis of the NN ...
This paper discusses a neural network development approach based on an exponential smoothing method ...
Motivation: Traffic forecasting is becoming a vital component of our travel experience. It plays a k...
During the past few years, time series models and neural network models are widely used to predict t...
AbstractThis study applies Artificial Neural Network (ANN) for short term prediction of traffic flow...
Short-term traffic prediction is a key component of Intelligent Transportation Systems. It uses hist...
The accurate short-term traffic flow forecasting is fundamental to both theoretical and empirical as...
Copyright © 2014 Lida Barba et al. This is an open access article distributed under the Creative Com...
Traffic flow is used as an essential indicator to measure the performance of the road network and a ...
Forecasting short-term traffic flow using historical data is a difficult goal to achieve due to the ...
Forecasting short-term traffic flow using historical data is a difficult goal to achieve due to the ...
This paper presents a binary neural network algorithm for short-term traffic flow prediction. The al...
Individuals need traffic flow management and analysis to better manage and route their everyday jour...
This work proposed an integrated model combining bagging and stacking considering the weight coeffic...
Accurate prediction of traffic information (i.e., traffic flow, travel time, traffic speed, etc.) is...
© 2018 IEEE. This paper proposes a unified spatio-temporal model on the basis of STARIMA (Space-Time...
This paper discusses a neural network development approach based on an exponential smoothing method ...
Motivation: Traffic forecasting is becoming a vital component of our travel experience. It plays a k...
During the past few years, time series models and neural network models are widely used to predict t...
AbstractThis study applies Artificial Neural Network (ANN) for short term prediction of traffic flow...
Short-term traffic prediction is a key component of Intelligent Transportation Systems. It uses hist...
The accurate short-term traffic flow forecasting is fundamental to both theoretical and empirical as...
Copyright © 2014 Lida Barba et al. This is an open access article distributed under the Creative Com...
Traffic flow is used as an essential indicator to measure the performance of the road network and a ...
Forecasting short-term traffic flow using historical data is a difficult goal to achieve due to the ...
Forecasting short-term traffic flow using historical data is a difficult goal to achieve due to the ...
This paper presents a binary neural network algorithm for short-term traffic flow prediction. The al...
Individuals need traffic flow management and analysis to better manage and route their everyday jour...
This work proposed an integrated model combining bagging and stacking considering the weight coeffic...
Accurate prediction of traffic information (i.e., traffic flow, travel time, traffic speed, etc.) is...
© 2018 IEEE. This paper proposes a unified spatio-temporal model on the basis of STARIMA (Space-Time...
This paper discusses a neural network development approach based on an exponential smoothing method ...
Motivation: Traffic forecasting is becoming a vital component of our travel experience. It plays a k...
During the past few years, time series models and neural network models are widely used to predict t...