Long-Term Traffic Flow Prediction using Hybrid Deep Learning Technique
Long-Term Traffic Flow Prediction using Hybrid Deep Learning Technique |
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© 2023 by IJETT Journal | ||
Volume-71 Issue-5 |
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Year of Publication : 2023 | ||
Author : Mohandu Anjaneyulu, Mohan Kubendiran |
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DOI : 10.14445/22315381/IJETT-V71I5P216 |
How to Cite?
Mohandu Anjaneyulu, Mohan Kubendiran, "Long-Term Traffic Flow Prediction using Hybrid Deep Learning Technique," International Journal of Engineering Trends and Technology, vol. 71, no. 5, pp. 156-165, 2023. Crossref, https://doi.org/10.14445/22315381/IJETT-V71I5P216
Abstract
Smart city traffic regulation relies heavily on advanced traffic management systems (ATMS), a key component of the broader intelligent transportation system (ITS). Traffic flow forecasting is a crucial aspect of transportation that aids in traffic planning, control, management, and information dissemination. Although there are a great variety of models whose primary focus is on the development of short-term traffic flow predictions, making credible long-term traffic flow (LTTF) forecasts has become an increasingly difficult topic in recent years. To solve this problem, this paper proposed a novel hybrid model called the autoencoder gated recurrent unit (AEGRU) that can accurately predict long-term traffic flow for the next 24 hours. Firstly, the autoencoder (AE) will take the raw data and pick out the most important features before doing dimensionality reduction. Secondly, the gated recurrent unit (GRU) uses the information given by the AE to make predictions about how much traffic volume there will be in the future. The outcomes of the evaluation show that the proposed AEGRU model is much better than compared approaches in terms of root mean square error (RMSE) of 1.6% mean absolute percentage error (MAPE) of 2.3% and mean absolute error (MAE) of 1.9%.
Keywords
Traffic flow prediction, Long-term traffic flow prediction, Autoencoder, Gated recurrent unit, Neural networks, Deep learning.
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