Traffic congestion is a widely occurring phenomenon caused by increased use of vehicles on roads resulting in slower speeds, longer delays, and increased vehicular queueing in traffic. Every year, over a thousand hours are spent in traffic congestion leading to great cost and time losses. In this thesis, we propose a multimodal data fusion framework for predicting traffic congestion on urban motorway networks. It comprises of three main approaches. The first approach predicts traffic congestion on urban motorway networks using data mining techniques. Two categories of models are considered namely neural networks, and random forest classifiers. The neural network models include the back propagation neural network and deep belief network. The...
The prediction of traffic congestion can serve a crucial role in making future decisions. Although m...
Short-term vehicle traffic forecasting is about predicting how traffic indicators are going to be in...
This study attempts to develop a model that forecasts precise data on traffic flow. Everything that ...
Traffic Congestion is a complex dilemma facing most major cities. It has undergone a lot of resear...
AbstractTo be able to predict reliably traffic conditions over the short term (15 minutes into the f...
Traffic Congestion wastes time and energy, which are the two most valuable commodities of the curren...
This thesis is submitted in partial fulfilment of the requirements for the degree of Bachelor of Sci...
Abstract— In an intelligent transportation system, traffic prediction is vital. Accurate traffic for...
This paper, titled "Revolutionizing Urban Mobility," focuses on data-driven traffic forecasting and ...
Purpose: Traffic control in large cities is extremely tough. To alleviate costs associated with traf...
The main aim of the intelligent transportation systems is the ability to accurately predict traffic...
The future of smart city traffic forecasting is two-way communication between residents and the city...
This paper predicts traffic congestion of urban road network by building machine learning models usi...
In recent years, traffic congestion prediction has led to a growing research area, especially of mac...
The vehicular adhoc network (VANET) is an emerging research topic in the intelligent transportation ...
The prediction of traffic congestion can serve a crucial role in making future decisions. Although m...
Short-term vehicle traffic forecasting is about predicting how traffic indicators are going to be in...
This study attempts to develop a model that forecasts precise data on traffic flow. Everything that ...
Traffic Congestion is a complex dilemma facing most major cities. It has undergone a lot of resear...
AbstractTo be able to predict reliably traffic conditions over the short term (15 minutes into the f...
Traffic Congestion wastes time and energy, which are the two most valuable commodities of the curren...
This thesis is submitted in partial fulfilment of the requirements for the degree of Bachelor of Sci...
Abstract— In an intelligent transportation system, traffic prediction is vital. Accurate traffic for...
This paper, titled "Revolutionizing Urban Mobility," focuses on data-driven traffic forecasting and ...
Purpose: Traffic control in large cities is extremely tough. To alleviate costs associated with traf...
The main aim of the intelligent transportation systems is the ability to accurately predict traffic...
The future of smart city traffic forecasting is two-way communication between residents and the city...
This paper predicts traffic congestion of urban road network by building machine learning models usi...
In recent years, traffic congestion prediction has led to a growing research area, especially of mac...
The vehicular adhoc network (VANET) is an emerging research topic in the intelligent transportation ...
The prediction of traffic congestion can serve a crucial role in making future decisions. Although m...
Short-term vehicle traffic forecasting is about predicting how traffic indicators are going to be in...
This study attempts to develop a model that forecasts precise data on traffic flow. Everything that ...