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Applications of deep learning in congestion detection, prediction and alleviation: A survey

Nishant Kumar, Martin Raubal

2021Transportation Research Part C Emerging Technologies118 citationsDOIOpen Access PDF

Abstract

Detecting, predicting, and alleviating traffic congestion are targeted at improving the level of service of the transportation network. With increasing access to larger datasets of higher resolution, the relevance of deep learning for such tasks is increasing. Several comprehensive survey papers in recent years have summarised the deep learning applications in the transportation domain. However, the system dynamics of the transportation network vary greatly between the non-congested state and the congested state -thereby necessitating the need for a clear understanding of the challenges specific to congestion prediction. In this survey, we present the current state of deep learning applications in the tasks related to detection, prediction, and alleviation of congestion. Recurring and non-recurring congestion are discussed separately. Our survey leads us to uncover inherent challenges and gaps in the current state of research. Finally, we present some suggestions for future research directions as answers to the identified challenges.

Topics & Concepts

Relevance (law)Deep learningComputer scienceTraffic congestionState (computer science)Data scienceArtificial intelligenceTransport engineeringRisk analysis (engineering)EngineeringBusinessPolitical scienceAlgorithmLawTraffic Prediction and Management TechniquesTraffic control and managementAnomaly Detection Techniques and Applications
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