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Traffic State Estimation from Vehicle Trajectories with Anisotropic Gaussian Processes (2303.02311v2)

Published 4 Mar 2023 in cs.LG and stat.AP

Abstract: Accurately monitoring road traffic state is crucial for various applications, including travel time prediction, traffic control, and traffic safety. However, the lack of sensors often results in incomplete traffic state data, making it challenging to obtain reliable information for decision-making. This paper proposes a novel method for imputing traffic state data using Gaussian processes (GP) to address this issue. We propose a kernel rotation re-parametrization scheme that transforms a standard isotropic GP kernel into an anisotropic kernel, which can better model the congestion propagation in traffic flow data. The model parameters can be estimated by statistical inference using data from sparse probe vehicles or loop detectors. Moreover, the rotated GP method provides statistical uncertainty quantification for the imputed traffic state, making it more reliable. We also extend our approach to a multi-output GP, which allows for simultaneously estimating the traffic state for multiple lanes. We evaluate our method using real-world traffic data from the Next Generation simulation (NGSIM) and HighD programs, along with simulated data representing a traffic bottleneck scenario. Considering current and future mixed traffic of connected vehicles (CVs) and human-driven vehicles (HVs), we experiment with the traffic state estimation (TSE) scheme from 5% to 50% available trajectories, mimicking different CV penetration rates in a mixed traffic environment. We also test the traffic state estimation when traffic flow information is obtained from loop detectors. The results demonstrate the adaptability of our TSE method across different CV penetration rates and types of detectors, achieving state-of-the-art accuracy in scenarios with sparse observation rates.

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References (60)
  1. Resurrection of” second order” models of traffic flow. SIAM journal on applied mathematics 60, 916–938.
  2. Highway traffic state estimation per lane in the presence of connected vehicles. Transportation research part B: methodological 106, 1–28.
  3. Multi-task gaussian process prediction. Advances in neural information processing systems 20.
  4. Traffic state estimation based on kalman filter technique using connected vehicle v2v basic safety messages, in: 2019 IEEE Intelligent Transportation Systems Conference (ITSC), IEEE. pp. 4380–4385.
  5. Bayesian calibration of traffic flow fundamental diagrams using gaussian processes. IEEE Open Journal of Intelligent Transportation Systems 3, 763–771.
  6. On a variant of the mobile observer method. IEEE Transactions on Intelligent Transportation Systems 18, 441–449.
  7. Highway traffic state estimation with mixed connected and conventional vehicles: Microscopic simulation-based testing. Transportation Research Part C: Emerging Technologies 78, 13–33.
  8. Local gaussian process approximation for large computer experiments. Journal of Computational and Graphical Statistics 24, 561–578.
  9. Estimation of traffic flow rate with data from connected-automated vehicles using bayesian inference and deep learning. Frontiers in Future Transportation 2, 644988.
  10. Traffic speed prediction using deep learning method, in: 2016 IEEE 19th international conference on intelligent transportation systems (ITSC), IEEE. pp. 1217–1222.
  11. The physics of traffic. Physics World 12, 25.
  12. The highd dataset: A drone dataset of naturalistic vehicle trajectories on german highways for validation of highly automated driving systems, in: 2018 21st International Conference on Intelligent Transportation Systems (ITSC), pp. 2118–2125. doi:10.1109/ITSC.2018.8569552.
  13. Bayesian traffic state estimation using extended floating car data. IEEE Transactions on Intelligent Transportation Systems .
  14. Efficient missing data imputing for traffic flow by considering temporal and spatial dependence. Transportation research part C: emerging technologies 34, 108–120.
  15. On kinematic waves ii. a theory of traffic flow on long crowded roads. Proceedings of the Royal Society of London. Series A. Mathematical and Physical Sciences 229, 317–345.
  16. A gaussian-process-based data-driven traffic flow model and its application in road capacity analysis. IEEE Transactions on Intelligent Transportation Systems 24, 1544–1563.
  17. Microscopic traffic simulation using sumo, in: 2018 21st international conference on intelligent transportation systems (ITSC), IEEE. pp. 2575–2582.
  18. An adaptive framework for real-time freeway traffic estimation in the presence of cavs. Transportation Research Part C: Emerging Technologies 149, 104066.
  19. An unscented kalman filter for freeway traffic estimation. IFAC Proceedings Volumes 39, 31–36.
  20. Freeway traffic estimation within particle filtering framework. Automatica 43, 290–300.
  21. Application of probe-vehicle data for real-time traffic-state estimation and short-term travel-time prediction on a freeway. Transportation research record 1855, 49–59.
  22. Bayesian learning for neural networks. Lecture Notes in Statistics .
  23. NGSIM, 2007. Us highway 101 dataset URL: https://www.fhwa.dot.gov/publications/research/operations/07030/index.cfm.
  24. Markov chain monte carlo multiple imputation using bayesian networks for incomplete intelligent transportation systems data. Transportation research record 1935, 57–67.
  25. Model of freeway traffic and control. Mathematical Model of Public System , 51–61.
  26. Gaussian processes for machine learning. volume 1. Springer.
  27. On the estimation of traffic speeds with deep convolutional neural networks given probe data. Transportation research part C: emerging technologies 134, 103448.
  28. A phase-based smoothing method for accurate traffic speed estimation with floating car data. Transportation Research Part C: Emerging Technologies 85, 644–663.
  29. Shock waves on the highway. Operations research 4, 42–51.
  30. Two fast implementations of the adaptive smoothing method used in highway traffic state estimation, in: 13th International IEEE Conference on Intelligent Transportation Systems, IEEE. pp. 1202–1208.
  31. Traffic state estimation on highway: A comprehensive survey. Annual reviews in control 43, 128–151.
  32. Probe vehicle-based traffic state estimation method with spacing information and conservation law. Transportation Research Part C: Emerging Technologies 59, 391–403.
  33. Estimation of flow and density using probe vehicles with spacing measurement equipment. Transportation Research Part C: Emerging Technologies 53, 134–150.
  34. Traffic state estimation with the advanced probe vehicles using data assimilation, in: 2015 IEEE 18th International Conference on Intelligent Transportation Systems, IEEE. pp. 824–830.
  35. Physics-informed deep learning for traffic state estimation: A hybrid paradigm informed by second-order traffic models, in: Proceedings of the AAAI Conference on Artificial Intelligence, pp. 540–547.
  36. A physics-informed deep learning paradigm for traffic state and fundamental diagram estimation. IEEE Transactions on Intelligent Transportation Systems 23, 11688–11698.
  37. Efficient evaluation of stochastic traffic flow models using gaussian process approximation. Transportation research part B: methodological 164, 126–144.
  38. Data-driven imputation method for traffic data in sectional units of road links. IEEE Transactions on Intelligent Transportation Systems 17, 1762–1771.
  39. Incorporating kinematic wave theory into a deep learning method for high-resolution traffic speed estimation. IEEE Transactions on Intelligent Transportation Systems .
  40. Variational learning of inducing variables in sparse gaussian processes, in: Artificial intelligence and statistics, PMLR. pp. 567–574.
  41. Reconstructing the spatio-temporal traffic dynamics from stationary detector data. Cooperative Transportation Dynamics 1, 3–1.
  42. Congested traffic states in empirical observations and microscopic simulations. Physical review E 62, 1805.
  43. Reconstructing the traffic state by fusion of heterogeneous data. Computer-Aided Civil and Infrastructure Engineering 26, 408–419.
  44. Physics-informed neural networks (pinns)-based traffic state estimation: An application to traffic network. Algorithms 15, 447.
  45. Localized extended kalman filter for scalable real-time traffic state estimation. IEEE transactions on intelligent transportation systems 13, 385–394.
  46. Traffic state estimation for connected vehicles using the second-order aw-rascle-zhang traffic model. arXiv preprint arXiv:2209.02848 .
  47. Multivariate geostatistics: an introduction with applications. Springer Science & Business Media.
  48. Low-rank hankel tensor completion for traffic speed estimation. arXiv preprint arXiv:2105.11335 .
  49. Real-time freeway traffic state estimation based on extended kalman filter: a general approach. Transportation Research Part B: Methodological 39, 141–167.
  50. Linear and nonlinear waves. John Wiley & Sons.
  51. A traffic model for velocity data assimilation. Applied Mathematics Research eXpress 2010, 1–35.
  52. Ge-gan: A novel deep learning framework for road traffic state estimation. Transportation Research Part C: Emerging Technologies 117, 102635.
  53. Generalized adaptive smoothing based neural network architecture for traffic state estimation. IFAC-PapersOnLine 56, 3483–3490.
  54. Generalized adaptive smoothing using matrix completion for traffic state estimation, in: 2022 IEEE 25th International Conference on Intelligent Transportation Systems (ITSC), IEEE. pp. 787–792.
  55. Imputing erroneous data of single-station loop detectors for nonincident conditions: Comparison between temporal and spatial methods. Journal of Intelligent Transportation Systems 16, 159–176.
  56. Network-wide traffic state estimation using loop detector and floating car data. Journal of Intelligent Transportation Systems 18, 41–50.
  57. Macroscopic traffic flow modeling with physics regularized gaussian process: A new insight into machine learning applications in transportation. Transportation Research Part B: Methodological 146, 88–110.
  58. Bayesian calibration of the intelligent driver model. IEEE Transactions on Intelligent Transportation Systems .
  59. A non-equilibrium traffic model devoid of gas-like behavior. Transportation Research Part B: Methodological 36, 275–290.
  60. Estimation of missing traffic counts using factor, genetic, neural, and regression techniques. Transportation Research Part C: Emerging Technologies 12, 139–166.
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