From "Passive Congestion" to "Active Scheduling" — Rebuilding Travel Experience and Resource Allocation for Intelligent Transportation Networks

作者

DOI:

https://doi.org/10.65455/aair5611

关键词:

Intelligent Traffic Reconstruction, Travel Experience, Resource Allocation, Traffic Congestion, Active Scheduling

摘要

Along with the acceleration of urbanization, traffic congestion becomes an important factor restricting urban development and improving residents' quality of life. In order to cope with complex traffic requirements, traditional traffic management models seem to be inadequate, often falling into passive congestion. The emergence of intelligent transport networks brings new hope to the solution to this problem. In this paper, the theory basis, technology structure, key technology and application practice are deeply discussed. The aim of this paper is to achieve a transition from passive congestion to active dispatching. In this paper, by constructing a framework of intelligent traffic system, analyzing each level design, analyzing main functional applications, it reveals that intelligent traffic network plays an important role in alleviating traffic congestion, improving traffic safety and promoting sustainable traffic development. Finally, it looks forward to its future development.

参考

[1]USHA G, KARTHIKEYAN H, GAUTAM K, et al. DDoS attack detection in intelligent transport systems using adaptive neuro-fuzzy inference system. Scientific Reports, 2025, 15(1): 20597.

[2]LIU G, HUANG J, ZHU T. Assessment and Suggestions on the Digital Transformation Path of Guangzhou's Smart Transportation. Innovative Applications of AI, 2025, 2(2): 111-121.

[3]SUN B, BAI Q, ZHANG Q, et al. Sustainable impact of urban road class on smart transportation systems: A field data-informed exploration. Sustainable Cities and Society, 2025, 132: 106792.

[4]LIANG F. Decentralized and Network-Aware Task Offloading for Smart Transportation via Blockchain. Sensors, 2025, 25(17): 5555.

[5]YU Y, SONG Z, ZHANG Q. Multi-Objective Optimization with Server Load Sensing in Smart Transportation. Applied Sciences, 2025, 15(17): 9717.

[6]HAI T L T, AN T T T, PHUONG L N, et al. Development of an index system to evaluate the readiness of transport infrastructure for the transition to climate-smart transportation: A case study of Ho Chi Minh City. IOP Conference Series: Earth and Environmental Science, 2025, 1539(1): 012011.

[7]MUTUA M A, FRÉIN D R. Quantum-Enhanced Battery Anomaly Detection in Smart Transportation Systems. Applied Sciences, 2025, 15(17): 9452.

[8]KŁOS J M, SIERPIŃSKI G. The Optimization of Intelligent Transport Systems: Planning, Energy Efficiency and Environmental Responsibility. Energies, 2025, 18(17): 4518.

[9]KHUWUTHYAKORN P, LAKHAN A, MAJUMDAR A, et al. Blockchain-Enabled Self-Autonomous Intelligent Transport System for Drone Task Workflow in Edge Cloud Networks. Algorithms, 2025, 18(8): 530.

[10]BOURIAN I, ELFILALI C, CHOUGHDALI K. Enhancing security in intelligent transport system network by integrating blockchain-based smart contracts. The Journal of Supercomputing, 2025, 81(13): 1255.

[11]LIU Z, ZHOU C, LI J, et al. Improved Genetic Algorithm-Based Path Planning for Multi-Vehicle Pickup in Smart Transportation. Smart Cities, 2025, 8(4): 136.

[12]HASSAN M, NAFEES A A, SHRABAN S S, et al. Application of machine learning in intelligent transport systems: a comprehensive review and bibliometric analysis. Discover Civil Engineering, 2025, 2(1): 98.

[13]SAHRAOUI Y, HADJKOUIDER M A, KERRACHE A C, et al. TwinFedPot: Honeypot Intelligence Distillation into Digital Twin for Persistent Smart Traffic Security. Sensors, 2025, 25(15): 4725.

[14]SOBB T, TURNBULL B. Modelling Cascading Failure in Complex CPSS to Inform Resilient Mission Assurance: An Intelligent Transport System Case Study. Entropy, 2025, 27(8): 793.

[15]XIAOJIAN H, CHENXI L, XUNMING Y. Selective Scale Context Awareness Network for Object Counting in Intelligent Transportation System. Journal of Transportation Engineering, Part A: Systems, 2025, 151(9).

##submission.downloads##

已出版

2025-06-15