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Scientific Article details

Title Traffic Forecasting with Deep Learning
ID_Doc 43606
Authors Kundu, S; Desarkar, MS; Srijith, PK
Title Traffic Forecasting with Deep Learning
Year 2020
Published
DOI
Abstract Timely forecast of traffic is very much needed for smart cities, which allows travelers and government agencies to make various decisions based on traffic flow. This will result in reduced traffic congestion and carbon dioxide emission. However, traffic forecasting is a challenging task due to the highly complex traffic pattern. Standard time series techniques may not be able to capture the nonlinear and noisy nature of the traffic flow. In this paper, we investigate how the deep learning models capture these characteristics and provide better predictive performance over standard time series and regression models. We compare the performances of state-of-the-art deep learning models on two traffic flow data sets and show their effectiveness in traffic flow prediction over traditional models.
Author Keywords Traffic prediction; smart city; deep learning; CNN; LSTM
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Conference Proceedings Citation Index - Science (CPCI-S)
EID WOS:000652007300256
WoS Category Engineering, Electrical & Electronic
Research Area Engineering
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