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Poster: DeepTFP: Mobile Time Series Data Analytics based Traffic Flow Prediction

Published: 04 October 2017 Publication History

Abstract

Traffic flow prediction is an important research issue to avoid traffic congestion in transportation systems. Traffic congestion avoiding can be achieved by knowing traffic flow and then conducting transportation planning. Achieving traffic flow prediction is challenging as the prediction is affected by many complex factors such as inter-region traffic, vehicles' relations, and sudden events. However, as the mobile data of vehicles has been widely collected by sensor-embedded devices in transportation systems, it is possible to predict the traffic flow by analysing mobile data. This study proposes a deep learning based prediction algorithm, DeepTFP, to collectively predict the traffic flow on each and every traffic road of a city. This algorithm uses three deep residual neural networks to model temporal closeness, period, and trend properties of traffic flow. Each residual neural network consists of a branch of residual convolutional units. DeepTFP aggregates the outputs of the three residual neural networks to optimize the parameters of a time series prediction model. Contrast experiments on mobile time series data from the transportation system of England demonstrate that the proposed DeepTFP outperforms the Long Short-Term Memory (LSTM) architecture based method in prediction accuracy.

References

[1]
Tianfeng Chai and Roland R Draxler. 2014. Root mean square error (RMSE) or mean absolute error (MAE)? Geoscientific Model Development Discussions Vol. 7 (2014), 1525--1534.
[2]
Felix A Gers, Jürgen Schmidhuber, and Fred Cummins. 2000. Learning to forget: Continual prediction with LSTM. Neural computation, Vol. 12, 10 (2000), 2451--2471.
[3]
Yisheng Lv, Yanjie Duan, Wenwen Kang, Zhengxi Li, and Fei-Yue Wang. 2015. Traffic flow prediction with big data: a deep learning approach. IEEE Transactions on Intelligent Transportation Systems, Vol. 16, 2 (2015), 865--873.
[4]
David Schrank, Bill Eisele, Tim Lomax, and Jim Bak. 2015. 2015 Urban Mobility Scorecard. (2015).

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cover image ACM Conferences
MobiCom '17: Proceedings of the 23rd Annual International Conference on Mobile Computing and Networking
October 2017
628 pages
ISBN:9781450349161
DOI:10.1145/3117811
Permission to make digital or hard copies of part or all of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for third-party components of this work must be honored. For all other uses, contact the Owner/Author.

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Association for Computing Machinery

New York, NY, United States

Publication History

Published: 04 October 2017

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Author Tags

  1. deep learning
  2. mobile data analytics
  3. neural networks
  4. time series prediction models
  5. traffic flow prediction

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MobiCom '17
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MobiCom '17 Paper Acceptance Rate 35 of 186 submissions, 19%;
Overall Acceptance Rate 440 of 2,972 submissions, 15%

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