Enhancing Highway Emergency Lane Control via Koopman Graph Mamba: An Interpretable Dynamic Decision Model
Abstract
1. Introduction
- The application of KMD to reveal and predict spatiotemporal traffic patterns, introduces three distinct traffic patterns that provide a theoretical basis for dynamic decision-making in highway emergency lane control.
- The integration of the Koopman operator into a graph-based SSM, enables real-time, dynamic decision-making, and proposes a node prioritization strategy for informed sparsification, enhancing the model’s capability to handle complex traffic scenarios.
- The development of an IDM using FNN to frame emergency lane control as a binary classification problem, synthesizes fuzzy rule outcomes and KMD-recognized patterns for context-sensitive and integrated decision-making, effectively handling imprecise or uncertain data.
- The comprehensive evaluation on a real-world Chinese road dataset and NGSIM, PeMS04, and PeMS08 datasets, demonstrates the superior performance of KGM in dynamic emergency lane control compared to baseline models, with computational complexity, significantly reducing overhead.
2. Related Work
2.1. Traffic Prediction
2.2. Mamba
3. Problem Definition
4. Methodology
4.1. Overview
4.2. Koopman Mode Decomposition
4.3. Graph Mamba
| Algorithm 1 The overall algorithm of GM |
| Input: Node embeddings ; Node number Output: Feature embeddings
|
4.4. Interpretable Decision Module
| Algorithm 2 The overall algorithm of IDM |
| Input: Feature embeddings Rule : if is and … is , then class is with the weight Output: Decision
|
4.5. Training and Inference
| Algorithm 3 The overall algorithm of KGM |
| Input: Multimodal traffic data Output: Decision
|
5. Experiments
5.1. Dataset
5.2. Implementation Details and Experimental Settings
5.3. Evaluation Metrics
5.4. Experimental Results and Analysis
5.4.1. Traffic Pattern Analysis
5.4.2. Correlation Analysis
5.4.3. Comparative Analysis
5.5. Ablation Study
- Row 2: In this configuration, the GM is replaced with a Transformer architecture. The significant decline in performance highlights the critical role of GM in capturing complex spatio-temporal dependencies and the superiority of the structured SSM over attention-based methods. The SSM framework ensures linear computational complexity, making it more efficient and effective for real-time traffic management.
- Row 3: This row excludes the IDM and uses the MLP for direct classification. The drop in performance demonstrates the value of the IDM in providing context-sensitive and interpretable decisions, which are crucial for managing emergency lanes in dynamic traffic environments.
- Row 4: This row evaluates the model without the KMD. Instead, the STG is constructed directly from historical traffic data, and IDM relies solely on the output of GM for decision-making. The absence of KMD leads to a reduction in performance, underscoring the importance of KMD in extracting traffic patterns and enhancing the model’s predictive capabilities.
- Row 5: Here, the node prioritization mechanism is eliminated, and a random flattening method is adopted instead. The degradation in performance indicates that the node prioritization mechanism is essential for effectively handling the hierarchical and dynamic nature of traffic data, ensuring that the most important nodes are given higher priority in the decision-making process.
5.6. Computational Efficiency
- KMD: The KMD component significantly reduces the dimensionality of input data, leading to a decrease in the number of FLOPs required for subsequent processing. By extracting traffic patterns, KMD streamlines the data, thereby reducing the computational load and improving overall efficiency.
- GM: The SSM employed in the GM ensures linear computational complexity, which is crucial for handling large-scale and dynamic traffic data. Compared to attention-based models, the GM architecture achieves lower FLOPs and faster inference times, making it more suitable for real-time traffic management.
- Node Prioritization: This mechanism optimizes the processing of nodes by prioritizing the most relevant ones, thereby reducing unnecessary computations. While node prioritization slightly increases inference time, it has a negligible effect on the overall performance of KGM. By focusing on critical nodes, the model can achieve faster and more efficient decision-making without compromising accuracy, which is essential for dynamic environments.
- IDM: The IDM, while providing context-sensitive and interpretable decisions, increases the inference time but greatly enhances decision accuracy. Its modular structure and optimized decision-making process are designed to balance the trade-off between computational efficiency and interpretability. Although the increase in inference time is a trade-off, the significant improvement in decision accuracy justifies this additional computational cost.
5.7. Discussion
5.8. Limitation
6. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
- Benzagouta, M.-L.; Aniss, H.; Fouchal, H.; El Faouzi, N.-E. Road-Side Unit Anomaly Detection. Vehicles 2023, 5, 1467–1481. [Google Scholar] [CrossRef]
- Cristiani, A.L.; Immich, R.; Akabane, A.T.; Madeira, E.R.M.; Villas, L.A.; Meneguette, R.I. ATRIP: Architecture for Traffic Classification Based on Image Processing. Vehicles 2020, 2, 303–317. [Google Scholar] [CrossRef]
- Simchon, L.; Rabinovici, R. Real-Time Implementation of Green Light Optimal Speed Advisory for Electric Vehicles. Vehicles 2020, 2, 35–54. [Google Scholar] [CrossRef]
- Feng, Z.; Zhan, J.; Liu, J.; Zhang, W.; Zhou, M.; Wang, K. Development and Validation of Highway Emergency Lane Illegal Occupancy Scale for Chinese Drivers. Transp. Res. Rec. 2017, 2634, 43–49. [Google Scholar] [CrossRef]
- Wang, S.; Lei, D.; Menggeng, Q.; Yu, X.; Li, W.; Zhang, Q.; Feng, J.; Wang, J. Design and Research of Emergency Activation Model for Highway Emergency Lane. In Proceedings of the 2025 4th International Conference on Big Data, Information and Computer Network, Guangzhou, China, 10–12 January 2025; pp. 517–523. [Google Scholar]
- Dai, Y.; Ding, F.; Peng, J.; Tan, H.; Ran, B. Traffic Characteristics for Long-Term Use of Emergency Lane: An Exploratory Field Test on G42 Freeway in China. In Proceedings of the 20th COTA International Conference of Transportation Professionals, CICTP, Xi’an, China, 14–16 August 2020; pp. 607–617. [Google Scholar]
- Li, D.; Lasenby, J. Mitigating urban motorway congestion and emissions via active traffic management. Res. Transp. Bus. Manag. 2023, 48, 100789. [Google Scholar] [CrossRef]
- Guerrieri, M.; Mauro, R. Capacity and safety analysis of hard-shoulder running (HSR). A motorway case study. Transp. Res. Part A Policy Pract. 2016, 92, 162–183. [Google Scholar] [CrossRef]
- Coffey, S.; Park, S. Part-time shoulder use operational impact on the safety performance of interstate 476. Traffic Inj. Prev. 2020, 21, 470–475. [Google Scholar] [CrossRef]
- Dutta, N.; Boateng, R.A.; Fontaine, M.D. Safety and operational effects of the interstate 66 active traffic management system. J. Transp. Eng. Part A Syst. 2019, 145, 04018089. [Google Scholar] [CrossRef]
- Li, R.; Zhen, Y.; Li, B. Optimal control and simulation of hard shoulder running on highways. J. Syst. Simul. 2019, 30, 34. [Google Scholar]
- Zhou, W.; Yang, M.; Lee, M.; Zhang, L. Q-learning-based coordinated variable speed limit and hard shoulder running control strategy to reduce travel time at freeway corridor. Transp. Res. Rec. 2020, 2674, 915–925. [Google Scholar] [CrossRef]
- Li, R.; Zhen, Y.; Li, B.; Zhan, X. Simulation of hard shoulder running combined with queue warning during traffic accident with CTM model. IET Intell. Transp. Syst. 2017, 11, 1–8. [Google Scholar] [CrossRef]
- Tang, J.; Hu, L.; Li, M.; Zhang, X. Optimization of Highway Emergency Lane Control Based on Kriging Genetic Algorithm. J. Syst. Simul. 2024, 36, 11. [Google Scholar]
- Avila, A.M.; Mezi, I. Data-driven analysis and forecasting of highway traffic dynamics. Nat. Commun. 2020, 11, 2090. [Google Scholar] [CrossRef]
- Zhang, K.; Hao, W.-N.; Yu, X.-H.; Jin, D.-W.; Yu, K. A fuzzy neural network classifier and its dual network for adaptive learning of structure and parameters. Int. J. Fuzzy Syst. 2023, 25, 1034–1054. [Google Scholar] [CrossRef]
- Sun, W.; Abdullah, L.N.; Suhaiza Sulaiman, P.; Khalid, F. Meta-Feature-Based Traffic Accident Risk Prediction: A Novel Approach to Forecasting Severity and Incidence. Vehicles 2024, 6, 728–746. [Google Scholar] [CrossRef]
- Yang, Z.; Zhang, Q.; Chang, W.; Xiao, P.; Li, M. EGFormer: An Enhanced Transformer Model with Efficient Attention Mechanism for Traffic Flow Forecasting. Vehicles 2024, 6, 120–139. [Google Scholar] [CrossRef]
- Hadadi, F.; Tehrani, H.G.; Aghayan, I. An extended non-lane-discipline-based continuum model through driver behaviors for analyzing multi-traffic flows. Phys. A Stat. Mech. Its Appl. 2023, 625, 128965. [Google Scholar] [CrossRef]
- Hadadi, F.; Aghayan, I. An extended LWR non-lane-based-discipline model for light vehicle traffic flow analysis incorporating driver behavior. Chin. J. Phys. 2025, 97, 591–606. [Google Scholar] [CrossRef]
- Yu, B.; Yin, H.; Zhu, Z. Spatio-Temporal Graph Convolutional Networks: A Deep Learning Framework for Traffic Forecasting. In Proceedings of the Twenty-Seventh International Joint Conference on Artificial Intelligence, Stockholm, Sweden, 13–19 July 2018. [Google Scholar]
- Song, C.; Lin, Y.; Guo, S.; Wan, H. Spatial-temporal synchronous graph convolutional networks: A new framework for spatial-temporal network data forecasting. In Proceedings of the AAAI Conference on Artificial Intelligence, New York, NY, USA, 7–12 February 2020. [Google Scholar]
- Liu, C.; Yang, S.; Xu, Q.; Li, Z.; Long, C.; Li, Z.; Zhao, R. Spatial-Temporal Large Language Model for Traffic Prediction. In Proceedings of the 25th IEEE International Conference on Mobile Data Management, Brussels, Belgium, 24–27 June 2024. [Google Scholar]
- Ahamed, M.A.; Cheng, Q.S. TimeMachine: A Time Series is Worth 4 Mambas for Long-Term Forecasting. In Proceedings of the 27th European Conference on Artificial Intelligence, Santiago de Compostela, Spain, 19–24 October 2024. [Google Scholar]
- Wang, C.; Tsepa, O.; Ma, J.; Wang, B. Graph-mamba: Towards long-range graph sequence modeling with selective state spaces. arXiv 2024, arXiv:2402.00789. [Google Scholar]
- Behrouz, A.; Hashemi, F. Graph mamba: Towards learning on graphs with state space models. In Proceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Barcelona, Spain, 25–29 August 2024. [Google Scholar]
- Li, L.; Wang, H.; Zhang, W.; Coster, A. Stg-mamba: Spatial-temporal graph learning via selective state space model. arXiv 2024, arXiv:2403.12418. [Google Scholar]
- Li, Z.; Han, M.; Yin, X. MamKO: Mamba-based Koopman operator for modeling and predictive control. In Proceedings of the Thirteenth International Conference on Learning Representations, Singapore, 24–28 April 2025. [Google Scholar]
- Schönhof, M.; Helbing, D. Empirical features of congested traffic states and their implications for traffic modeling. Transp. Sci. 2007, 41, 135–166. [Google Scholar] [CrossRef]
- Loschilov, I.; Hutter, F. SGDR: Stochastic Gradient Descent with Warm Restarts. In Proceedings of the 5th International Conference on Learning Representations, Toulon, France, 24–26 April 2017. [Google Scholar]
- Yi, J.; Park, J. Hypergraph Convolutional Recurrent Neural Network. In Proceedings of the 26th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Virtual Event, 23–27 August 2020. [Google Scholar]
- Fang, Z.; Long, Q.; Song, G.; Xie, K. Spatial-Temporal Graph ODE Networks for Traffic Flow Forecasting. In Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Virtual Event, 14–18 August 2021. [Google Scholar]
- Wang, J.; Zhang, Y.; Wei, Y.; Hu, Y.; Piao, X.; Yin, B. Metro Passenger Flow Prediction via Dynamic Hypergraph Convolution Networks. IEEE Trans. Intell. Transp. Syst. 2021, 22, 7891–7903. [Google Scholar] [CrossRef]
- Nguyen, M.-P.; Dao, M.-S.; Nguyen, T.-B. 3D-STGPCN: 3D Spatio-Temporal Graph Point-wise Convolutional Network for Traffic Forecasting. In Proceedings of the 2022 IEEE International Conference on Big Data, Osaka, Japan, 17–20 December 2022. [Google Scholar]
- Bao, Y.; Huang, J.; Shen, Q.; Cao, Y.; Ding, W.; Shi, Z.-Q.; Shi, Q. Spatial-Temporal Complex Graph Convolution Network for Traffic Flow Prediction. Eng. Appl. Artif. Intell. 2023, 212, 106044. [Google Scholar] [CrossRef]
- Bao, Y.; Liu, J.; Shen, Q.; Cao, Y.; Ding, W.; Shi, Q. PKET-GCN: Prior knowledge enhanced time-varying graph convolution network for traffic flow prediction. Inf. Sci. 2023, 634, 359–381. [Google Scholar] [CrossRef]
- Chen, C.; Petty, K.; Skabardonis, A.; Varaiya, P.; Jia, Z. Freeway performance measurement system: Mining loop detector data. Transp. Res. Rec. 2001, 1748, 96–102. [Google Scholar] [CrossRef]
- Chen, Y.; Segovia-Dominguez, I.; Gel, Y.R. Z-GCNETs: Time Zigzags at Graph Convolutional Networks for Time Series Forecasting. In Proceedings of the 38th International Conference on Machine Learning, Virtual, 18–24 July 2021. [Google Scholar]
- Li, Y.; Yu, R.; Shahabi, C.; Liu, Y. Diffusion Convolutional Recurrent Neural Network: Data-Driven Traffic Forecasting. In Proceedings of the 6th International Conference on Learning Representations, Vancouver, BC, Canada, 30 April–3 May 2018. [Google Scholar]










| Observation Point | Activation | Deactivation |
|---|---|---|
| 1 | ||
| 2 | ||
| 3 | ||
| 4 |
| Model | Source | Real-World Road Dataset | NGSIM Dataset | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Acc. | Pre. | Rec. | F1 | Time | Acc. | Pre. | Rec. | F1 | Time | ||
| HGC-RNN [31] | KDD 2020 | 0.899 | 0.892 | 0.905 | 0.898 | 2.400 | 0.704 | 0.659 | 0.663 | 0.661 | 2.540 |
| STSGCN [22] | AAAI 2020 | 0.942 | 0.951 | 0.953 | 0.952 | 1.650 | 0.746 | 0.799 | 0.663 | 0.725 | 1.680 |
| STGODE [32] | KDD 2021 | 0.896 | 0.863 | 0.938 | 0.899 | 1.900 | 0.734 | 0.679 | 0.700 | 0.689 | 2.050 |
| DSTHGCN [33] | TITS 2021 | 0.921 | 0.930 | 0.908 | 0.919 | 1.730 | 0.747 | 0.799 | 0.664 | 0.725 | 1.860 |
| 3D-STGPCN [34] | BigData 2022 | 0.909 | 0.902 | 0.915 | 0.908 | 1.680 | 0.737 | 0.721 | 0.726 | 0.724 | 1.820 |
| ST-CGCN [35] | EAAI 2023 | 0.934 | 0.933 | 0.932 | 0.933 | 1.820 | 0.751 | 0.773 | 0.696 | 0.732 | 1.810 |
| PKET-GCN [36] | ISCI 2023 | 0.940 | 0.940 | 0.937 | 0.939 | 1.920 | 0.759 | 0.776 | 0.712 | 0.743 | 1.960 |
| Mamba | ICML 2024 | 0.927 | 0.936 | 0.934 | 0.935 | 1.860 | 0.772 | 0.803 | 0.717 | 0.758 | 1.850 |
| GMN [26] | KDD 2024 | 0.957 | 0.962 | 0.969 | 0.965 | 1.800 | 0.781 | 0.802 | 0.716 | 0.756 | 1.730 |
| KGM | Ours | 0.964 | 0.973 | 0.976 | 0.978 | 1.650 | 0.796 | 0.838 | 0.741 | 0.786 | 1.670 |
| Model | Source | PEMS04 Dataset | PEMS08 Dataset | ||||||||
| Acc. | Pre. | Rec. | F1 | Time | Acc. | Pre. | Rec. | F1 | Time | ||
| HGC-RNN [31] | KDD 2020 | 0.735 | 0.753 | 0.712 | 0.732 | 2.270 | 0.717 | 0.706 | 0.584 | 0.639 | 2.480 |
| STSGCN [22] | AAAI 2020 | 0.747 | 0.744 | 0.766 | 0.755 | 1.520 | 0.716 | 0.796 | 0.598 | 0.683 | 1.620 |
| STGODE [32] | KDD 2021 | 0.742 | 0.751 | 0.733 | 0.742 | 1.830 | 0.717 | 0.795 | 0.602 | 0.685 | 1.960 |
| DSTHGCN [33] | TITS 2021 | 0.753 | 0.763 | 0.744 | 0.753 | 1.660 | 0.731 | 0.744 | 0.716 | 0.730 | 1.780 |
| 3D-STGPCN [34] | BigData 2022 | 0.736 | 0.749 | 0.723 | 0.736 | 1.660 | 0.717 | 0.792 | 0.603 | 0.685 | 1.720 |
| ST-CGCN [35] | EAAI 2023 | 0.773 | 0.818 | 0.709 | 0.760 | 1.860 | 0.717 | 0.794 | 0.602 | 0.685 | 1.840 |
| PKET-GCN [36] | ISCI 2023 | 0.751 | 0.707 | 0.770 | 0.737 | 1.890 | 0.734 | 0.791 | 0.647 | 0.712 | 1.910 |
| Mamba | ICML 2024 | 0.784 | 0.793 | 0.777 | 0.785 | 1.810 | 0.740 | 0.796 | 0.752 | 0.773 | 1.840 |
| GMN [26] | KDD 2024 | 0.804 | 0.805 | 0.809 | 0.807 | 1.760 | 0.739 | 0.797 | 0.750 | 0.772 | 1.780 |
| KGM | Ours | 0.809 | 0.855 | 0.751 | 0.799 | 1.600 | 0.742 | 0.802 | 0.752 | 0.776 | 1.620 |
| Model | F1 | Inference Time | FLOPs |
|---|---|---|---|
| KGM | 0.978 | 1.65 s | |
| w/o GM | 0.946 | 4.06 s | |
| w/o IDM | 0.954 | 1.17 s | |
| w/o KMD | 0.961 | 2.21 s | |
| w/o Node Prioritization | 0.967 | 1.48 s |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Li, H.; Wang, Z.; Zhang, H.; Hao, W.; Xiang, L. Enhancing Highway Emergency Lane Control via Koopman Graph Mamba: An Interpretable Dynamic Decision Model. Vehicles 2025, 7, 129. https://doi.org/10.3390/vehicles7040129
Li H, Wang Z, Zhang H, Hao W, Xiang L. Enhancing Highway Emergency Lane Control via Koopman Graph Mamba: An Interpretable Dynamic Decision Model. Vehicles. 2025; 7(4):129. https://doi.org/10.3390/vehicles7040129
Chicago/Turabian StyleLi, Hao, Zi Wang, Haoran Zhang, Wenning Hao, and Li Xiang. 2025. "Enhancing Highway Emergency Lane Control via Koopman Graph Mamba: An Interpretable Dynamic Decision Model" Vehicles 7, no. 4: 129. https://doi.org/10.3390/vehicles7040129
APA StyleLi, H., Wang, Z., Zhang, H., Hao, W., & Xiang, L. (2025). Enhancing Highway Emergency Lane Control via Koopman Graph Mamba: An Interpretable Dynamic Decision Model. Vehicles, 7(4), 129. https://doi.org/10.3390/vehicles7040129

