Forecasting road flow has strong importance for both allowing authorities to guarantee safety conditions and traffic efficiency, as well as for road users to be able to plan their trips according to space and road occupation. In a summer resort, such as beaches near cities, traffic depends directly on weather conditions, variables that should be of great impact on the quality of forecasts. Will the use of a dataset with information on transit flows enhanced with meteorological information allow the construction of a precise traffic flow forecasting model, allowing predictions to be made in advance of the traffic flow in suitable time? The present work evaluates different machine learning methods, namely long short-term memory, autoregressiv...
This paper, titled "Revolutionizing Urban Mobility," focuses on data-driven traffic forecasting and ...
Deep neural networks (DNNs) have recently demonstrated the capability to predict traffic flow with b...
In this paper, we propose deep learning architectures (FNN, CNN and LSTM) to forecast a regression...
Accurate traffic forecasts are a key element in improving the traffic flow of urban cities. An effic...
Traffic Flow prediction is a very important part of managing traffic flows on the road network. It p...
Short-term traffic flow prediction is an effective means for intelligent transportation system (ITS)...
Traffic parameter forecasting is critical to effective traffic management but is a challenging task ...
Timely forecast of traffic is very much needed for smart cities, which allows travelers and governme...
Many methods of traffic prediction have been proposed over the years, from the time series models ov...
This paper surveys the short-term road traffic forecast algorithms based on the long-short term memo...
This study attempts to develop a model that forecasts precise data on traffic flow. Everything that ...
The amount of cars on the roads is increasing at a rapid pace, causing traffic jams to become common...
As a vital research subject in the field of intelligent transportation systems (ITSs), traffic flow ...
Intelligent transportation systems helps travellers reach their destination at an estimated time. Sm...
Traffic flow forecasting is fundamental to today's Intelligent Transportation Systems (ITS). It invo...
This paper, titled "Revolutionizing Urban Mobility," focuses on data-driven traffic forecasting and ...
Deep neural networks (DNNs) have recently demonstrated the capability to predict traffic flow with b...
In this paper, we propose deep learning architectures (FNN, CNN and LSTM) to forecast a regression...
Accurate traffic forecasts are a key element in improving the traffic flow of urban cities. An effic...
Traffic Flow prediction is a very important part of managing traffic flows on the road network. It p...
Short-term traffic flow prediction is an effective means for intelligent transportation system (ITS)...
Traffic parameter forecasting is critical to effective traffic management but is a challenging task ...
Timely forecast of traffic is very much needed for smart cities, which allows travelers and governme...
Many methods of traffic prediction have been proposed over the years, from the time series models ov...
This paper surveys the short-term road traffic forecast algorithms based on the long-short term memo...
This study attempts to develop a model that forecasts precise data on traffic flow. Everything that ...
The amount of cars on the roads is increasing at a rapid pace, causing traffic jams to become common...
As a vital research subject in the field of intelligent transportation systems (ITSs), traffic flow ...
Intelligent transportation systems helps travellers reach their destination at an estimated time. Sm...
Traffic flow forecasting is fundamental to today's Intelligent Transportation Systems (ITS). It invo...
This paper, titled "Revolutionizing Urban Mobility," focuses on data-driven traffic forecasting and ...
Deep neural networks (DNNs) have recently demonstrated the capability to predict traffic flow with b...
In this paper, we propose deep learning architectures (FNN, CNN and LSTM) to forecast a regression...