Neural-attention-based deep learning architectures for modeling traffic dynamics on lane graphs

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  • University of California at Berkeley
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Original languageEnglish
Title of host publication2019 IEEE Intelligent Transportation Systems Conference (ITSC)
Pages3898-3905
Number of pages8
ISBN (electronic)978-1-5386-7024-8
Publication statusPublished - 2019
Event2019 IEEE Intelligent Transportation Systems Conference, ITSC 2019 - Auckland, New Zealand
Duration: 27 Oct 201930 Oct 2019

Abstract

Deep neural networks can be powerful tools, but require careful application-specific design to ensure that the most informative relationships in the data are learnable. In this paper, we apply deep neural networks to the nonlinear spatiotemporal physics problem of vehicle traffic dynamics. We consider problems of estimating macroscopic quantities (e.g., the queue at an intersection) at a lane level. First-principles modeling at the lane scale has been a challenge due to complexities in modeling social behaviors like lane changes, and those behaviors' resultant macro-scale effects. Following domain knowledge that upstream/downstream lanes and neighboring lanes affect each others' traffic flows in distinct ways, we apply a form of neural attention that allows the neural network layers to aggregate information from different lanes in different manners. Using a microscopic traffic simulator as a testbed, we obtain results showing that an attentional neural network model can use information from nearby lanes to improve predictions, and, that explicitly encoding the lane-to-lane relationship types significantly improves performance. We also demonstrate the transfer of our learned neural network to a more complex road network, discuss how its performance degradation may be attributable to new traffic behaviors induced by increased topological complexity, and motivate learning dynamics models from many road network topologies.

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Neural-attention-based deep learning architectures for modeling traffic dynamics on lane graphs. / Wright, Matthew M.; Ehlers, Simon Friedrich Gerhard; Horowitz, Roberto .
2019 IEEE Intelligent Transportation Systems Conference (ITSC). 2019. p. 3898-3905.

Research output: Chapter in book/report/conference proceedingConference contributionResearch

Wright, MM, Ehlers, SFG & Horowitz, R 2019, Neural-attention-based deep learning architectures for modeling traffic dynamics on lane graphs. in 2019 IEEE Intelligent Transportation Systems Conference (ITSC). pp. 3898-3905, 2019 IEEE Intelligent Transportation Systems Conference, ITSC 2019, Auckland, New Zealand, 27 Oct 2019. https://doi.org/10.48550/arXiv.1904.08831, https://doi.org/10.1109/ITSC.2019.8917174
Wright MM, Ehlers SFG, Horowitz R. Neural-attention-based deep learning architectures for modeling traffic dynamics on lane graphs. In 2019 IEEE Intelligent Transportation Systems Conference (ITSC). 2019. p. 3898-3905 Epub 2019 Jul 14. doi: 10.48550/arXiv.1904.08831, 10.1109/ITSC.2019.8917174
Wright, Matthew M. ; Ehlers, Simon Friedrich Gerhard ; Horowitz, Roberto . / Neural-attention-based deep learning architectures for modeling traffic dynamics on lane graphs. 2019 IEEE Intelligent Transportation Systems Conference (ITSC). 2019. pp. 3898-3905
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title = "Neural-attention-based deep learning architectures for modeling traffic dynamics on lane graphs",
abstract = "Deep neural networks can be powerful tools, but require careful application-specific design to ensure that the most informative relationships in the data are learnable. In this paper, we apply deep neural networks to the nonlinear spatiotemporal physics problem of vehicle traffic dynamics. We consider problems of estimating macroscopic quantities (e.g., the queue at an intersection) at a lane level. First-principles modeling at the lane scale has been a challenge due to complexities in modeling social behaviors like lane changes, and those behaviors' resultant macro-scale effects. Following domain knowledge that upstream/downstream lanes and neighboring lanes affect each others' traffic flows in distinct ways, we apply a form of neural attention that allows the neural network layers to aggregate information from different lanes in different manners. Using a microscopic traffic simulator as a testbed, we obtain results showing that an attentional neural network model can use information from nearby lanes to improve predictions, and, that explicitly encoding the lane-to-lane relationship types significantly improves performance. We also demonstrate the transfer of our learned neural network to a more complex road network, discuss how its performance degradation may be attributable to new traffic behaviors induced by increased topological complexity, and motivate learning dynamics models from many road network topologies.",
author = "Wright, {Matthew M.} and Ehlers, {Simon Friedrich Gerhard} and Roberto Horowitz",
note = "Funding Information: This research was supported by the National Science Foundation under grant CNS-1545116 and by Berkeley Deep-Drive. We also made use of the Savio computational cluster provided by the Berkeley Research Computing program at the University of California, Berkeley.; 2019 IEEE Intelligent Transportation Systems Conference, ITSC 2019 ; Conference date: 27-10-2019 Through 30-10-2019",
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AU - Wright, Matthew M.

AU - Ehlers, Simon Friedrich Gerhard

AU - Horowitz, Roberto

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N2 - Deep neural networks can be powerful tools, but require careful application-specific design to ensure that the most informative relationships in the data are learnable. In this paper, we apply deep neural networks to the nonlinear spatiotemporal physics problem of vehicle traffic dynamics. We consider problems of estimating macroscopic quantities (e.g., the queue at an intersection) at a lane level. First-principles modeling at the lane scale has been a challenge due to complexities in modeling social behaviors like lane changes, and those behaviors' resultant macro-scale effects. Following domain knowledge that upstream/downstream lanes and neighboring lanes affect each others' traffic flows in distinct ways, we apply a form of neural attention that allows the neural network layers to aggregate information from different lanes in different manners. Using a microscopic traffic simulator as a testbed, we obtain results showing that an attentional neural network model can use information from nearby lanes to improve predictions, and, that explicitly encoding the lane-to-lane relationship types significantly improves performance. We also demonstrate the transfer of our learned neural network to a more complex road network, discuss how its performance degradation may be attributable to new traffic behaviors induced by increased topological complexity, and motivate learning dynamics models from many road network topologies.

AB - Deep neural networks can be powerful tools, but require careful application-specific design to ensure that the most informative relationships in the data are learnable. In this paper, we apply deep neural networks to the nonlinear spatiotemporal physics problem of vehicle traffic dynamics. We consider problems of estimating macroscopic quantities (e.g., the queue at an intersection) at a lane level. First-principles modeling at the lane scale has been a challenge due to complexities in modeling social behaviors like lane changes, and those behaviors' resultant macro-scale effects. Following domain knowledge that upstream/downstream lanes and neighboring lanes affect each others' traffic flows in distinct ways, we apply a form of neural attention that allows the neural network layers to aggregate information from different lanes in different manners. Using a microscopic traffic simulator as a testbed, we obtain results showing that an attentional neural network model can use information from nearby lanes to improve predictions, and, that explicitly encoding the lane-to-lane relationship types significantly improves performance. We also demonstrate the transfer of our learned neural network to a more complex road network, discuss how its performance degradation may be attributable to new traffic behaviors induced by increased topological complexity, and motivate learning dynamics models from many road network topologies.

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