Integrative Traffic Intelligence for Dynamic Vehicle Rerouting and Driver Monitoring: A Multilayered Systems Perspective on Congestion Mitigation and Adaptive Urban Mobility

Authors
  • Dr. Lukas Heinrich

    Department of Computer Science and Transport Systems Engineering Technical University of Munich, Germany
    Author
Keywords:
Intelligent transportation systems, dynamic vehicle rerouting, driver monitoring, traffic congestion
Abstract

Urban traffic congestion has evolved from a localized operational inconvenience into a systemic socio-technical challenge with profound economic, environmental, and behavioral implications. The increasing density of urban populations, the diversification of mobility modes, and the growing expectations for real-time responsiveness have collectively strained traditional traffic management paradigms. Within this context, intelligent traffic systems integrating vehicle rerouting, adaptive control mechanisms, and driver monitoring have emerged as critical enablers of sustainable mobility. This article develops an extensive, theory-driven, and analytically rigorous examination of integrated traffic intelligence frameworks, with particular emphasis on traffic-based vehicle rerouting and driver monitoring as interdependent components of congestion mitigation strategies. Grounded in contemporary scholarship on intelligent transportation systems, connected vehicle infrastructures, adaptive traffic signal control, and data-driven decision-making, the study synthesizes heterogeneous research streams into a unified conceptual and methodological narrative.

The analysis is anchored by a comprehensive engagement with recent frameworks that conceptualize vehicle rerouting not merely as a shortest-path optimization problem but as a dynamic, context-aware, and behavior-sensitive process embedded within broader traffic ecosystems (Deshpande, 2025). Building upon this foundation, the article situates rerouting mechanisms within historical developments in traffic engineering, from rule-based control to distributed, sensor-driven, and learning-enabled systems. The role of driver monitoring is examined not as an ancillary safety feature but as a constitutive element influencing compliance, trust, responsiveness, and overall system efficacy. By integrating insights from wireless sensor networks, fuzzy logic controllers, reinforcement learning-based routing, and drop computing paradigms, the study articulates how multilayered intelligence can reconcile individual mobility preferences with collective efficiency.

Methodologically, the article adopts a qualitative–conceptual research design that synthesizes simulation-based evidence, comparative system analyses, and theoretical modeling reported across the literature. Rather than introducing new empirical datasets, it provides an interpretive reconstruction of findings from diverse studies to elucidate emergent patterns, causal mechanisms, and unresolved tensions. The results section presents a descriptive analysis of how integrated rerouting and monitoring frameworks reshape traffic flows, influence driver behavior, and interact with adaptive infrastructure under varying demand and uncertainty conditions. The discussion extends this analysis by critically engaging with scholarly debates on centralization versus decentralization, algorithmic transparency, ethical considerations, and scalability, while also identifying limitations inherent in current approaches.

The article concludes that sustainable congestion mitigation in contemporary cities requires a paradigmatic shift from isolated optimization techniques to holistic, behavior-aware, and trust-sensitive traffic intelligence architectures. By articulating a coherent synthesis across technological, behavioral, and governance dimensions, this study contributes a comprehensive scholarly reference for researchers, system designers, and policymakers seeking to advance adaptive urban mobility systems.

Downloads
Download data is not yet available.
References

Ahmed, M. S., Hoque, M. A., & Pfeiffer, P. (2016). Comparative study of connected vehicle simulators.

Basso, R., Kulcsár, B., & Sanchez-Diaz, I. (2021). Electric vehicle routing problem with machine learning for energy prediction.

Campaign for Better Transport. (2012). Goings backwards: the new road programme.

Ciobanu, R.-I., Marin, R.-C., Dobre, C., & Cristea, V. (2017). Trust and reputation management for opportunistic dissemination.

Cao, Z., Jiang, S., Zhang, J., & Guo, H. (2017). A unified framework for vehicle rerouting and traffic light control to reduce traffic congestion.

Collotta, M., Bello, L. L., & Pau, G. (2015). A novel approach for dynamic traffic lights management based on wireless sensor networks and multiple fuzzy logic controllers.

Deshpande, S. (2025). A comprehensive framework for traffic-based vehicle rerouting and driver monitoring.

Dornemann, J. (2023). Solving the capacitated vehicle routing problem with time windows via graph convolutional network assisted tree search and quantum-inspired computing.

Faye, S., Chaudet, C., & Demeure, I. (2012). A distributed algorithm for multiple intersections adaptive traffic lights control using a wireless sensor networks.

Guan, D., et al. (2022). Vehicle dispatch and route optimization algorithm for demand-responsive transit.

Guan, Q., et al. (2025). Synergetic attention-driven transformer: A deep reinforcement learning approach for vehicle routing problems.

Hong Kong Transport Advisory Committee. (2014). Report on study of road traffic congestion in Hong Kong.

Huang, Y., et al. (2025). Data-driven optimization for ride-sourcing vehicle dispatching and relocation under demand and travel time uncertainty.

Jia, R., Jiang, P., Liu, L., Cui, L., & Shi, Y. (2018). Data driven congestion trends prediction of urban transportation.

Khalid, M., Liang, S. C., & Yusof, R. (2004). Control of a complex traffic junction using fuzzy inference.

Krajzewicz, D., Erdmann, J., Behrisch, M., & Bieker, L. (2012). Recent development and applications of sumo-simulation of urban mobility.

Liu, Y., et al. (2022). Deep dispatching: A deep reinforcement learning approach for vehicle dispatching on online ride-hailing platform.

Pan, W., & Liu, S. Q. (2023). Deep reinforcement learning for the dynamic and uncertain vehicle routing problem.

Riad, M., Naimi, M., & Okar, C. (2024). Enhancing supply chain resilience through artificial intelligence: developing a comprehensive conceptual framework for AI implementation and supply chain optimization.

Smyth, C., et al. (2024). Artificial intelligence and prescriptive analytics for supply chain resilience: a systematic literature review and research agenda.

Stoica, C.-S., Dobre, C., & Pop, F. (2014). Realistic mobility simulator for smart traffic systems and applications.

Zhang, Z., Ji, B., & Yu, S. S. (2023). An adaptive tabu search algorithm for solving the two-dimensional loading constrained vehicle routing problem with stochastic customers.

Zhou, C., et al. (2023). Reinforcement learning-based approach for dynamic vehicle routing problem with stochastic demand.

Downloads
Published
2025-05-31
Section
Articles
License

Copyright (c) 2025 Dr. Lukas Heinrich (Author)

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

How to Cite

Integrative Traffic Intelligence for Dynamic Vehicle Rerouting and Driver Monitoring: A Multilayered Systems Perspective on Congestion Mitigation and Adaptive Urban Mobility . (2025). Emerging Indexing of Global Multidisciplinary Journal, 4(5), 23-31. https://grpublishing.net/index.php/eigmj/article/view/49

Similar Articles

1-10 of 33

You may also start an advanced similarity search for this article.