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- Title
Vehicular delay tolerant network routing algorithm based on trajectory clustering and dynamic Bayesian network.
- Authors
Wu, Jiagao; Cai, Shenlei; Jin, Hongyu; Liu, Linfeng
- Abstract
Typically, delay tolerant network (DTN) suffers from frequent disruption, high latency, and lack of stable connections between nodes. As a special case of DTN, vehicular delay tolerant network (VDTN) has particular spatial-temporal characteristics. Different kinds of vehicles may have different movement ranges and movement patterns and the movements of vehicles exhibit significant dynamics from the temporal view. The movement patterns and dynamic characteristics of vehicles are difficult to be described accurately. To this end, a novel framework of VDTN routing algorithm based on trajectory clustering and dynamic Bayesian network (DBN) is proposed, which can capture the spatial-temporal characteristics and the movement patterns of vehicles in the real VDTN scenarios. Firstly, a K-means trajectory clustering (KTC) algorithm is adopted to cluster the trajectories of vehicles according to their spatial characteristics. Then, a KTC-based DBN structure learning algorithm is proposed to construct the prior network and transition network of DBN by an extended K2 + algorithm to capture the temporal characteristics of VDTN, and multiple DBN models are established for different trajectory clusters to further improve the prediction accuracy. Finally, a VDTN routing algorithm is presented to forward message by the inference of DBN models. Simulation results show that the proposed VDTN routing algorithm has a higher delivery ratio as well as a lower overhead compared with other related routing algorithms, and the effectiveness of the trajectory clustering method and DBN models are verified.
- Subjects
ROUTING algorithms; DELAY-tolerant networks; BAYESIAN analysis; MACHINE learning; K-means clustering
- Publication
Wireless Networks (10220038), 2023, Vol 29, Issue 4, p1873
- ISSN
1022-0038
- Publication type
Article
- DOI
10.1007/s11276-023-03239-2