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Smart city article details

Title Deep Learning-Based Congestion Forecasting: A Literature Review And Future
ID_Doc 17943
Authors Attioui M.; Lahby M.
Year 2023
Published Proceedings - 10th International Conference on Wireless Networks and Mobile Communications, WINCOM 2023
DOI http://dx.doi.org/10.1109/WINCOM59760.2023.10322969
Abstract The quick improvement of transportation systems gives rise to critical issues, the foremost vital of which is traffic congestion, which has numerous negative impacts such as long time travel and road rage. There are other long-term negative impacts. Forecasting traffic congestion has subsequently gotten to be a key objective in optimising traffic flow and imporving the quality of life for people in cities. Machine learning may be a awesome way to predict traffic flow, but Deep learning techniques have been shown to be more effective in reducing road congestion. The reason of the paper is to conduct a systematic mapping study to examine and categorise studies on deep learning strategies to forecast traffic congestion. Selected articles were categorized and analyzed by channel and year of publication, type of study, research context, type of vehicle and road and deep learning techniques applied to forecast traffic congestion. To deal with this situation, the majority of papers use the classification, prediction, regression techniques. It has also been found that in most studies these algorithms are deployed with the dataset of traffic speed and traffic flow. Many of these deep learning techniques follow a supervised learning, unsupervised learning or a hybrid learning to forecast the preferred data such as Convolutional Neural Networks and Long Short-Term Memory. © 2023 IEEE.
Author Keywords deep learning; review; smart city; traffic congestion


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