| Literature DB >> 28594359 |
Xiaolan Tang1, Donghui Hong2, Wenlong Chen3.
Abstract
Existing studies on data acquisition in vehicular networks often take the mobile vehicular nodes as data carriers. However, their autonomous movements, limited resources and security risks impact the quality of services. In this article, we propose a data acquisition model using stable matching of bipartite graph in cooperative vehicle-infrastructure systems, namely, DAS. Contents are distributed to roadside units, while vehicular nodes support supplementary storage. The original distribution problem is formulated as a stable matching problem of bipartite graph, where the data and the storage cells compose two sides of vertices. Regarding the factors relevant with the access ratio and delay, the preference rankings for contents and roadside units are calculated, respectively. With a multi-replica preprocessing algorithm to handle the potential one-to-many mapping, the matching problem is addressed in polynomial time. In addition, vehicular nodes carry and forward assistant contents to deliver the failed packets because of bandwidth competition. Furthermore, an incentive strategy is put forward to boost the vehicle cooperation and to achieve a fair bandwidth allocation at roadside units. Experiments show that DAS achieves a high access ratio and a small storage cost with an acceptable delay.Entities:
Keywords: bipartite graph; content replication; data acquisition; stable matching; vehicular networks
Year: 2017 PMID: 28594359 PMCID: PMC5492778 DOI: 10.3390/s17061327
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1A sketch map of a content request and acquisition process.
Symbols.
| Symbol | Description |
|---|---|
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| Vehicular nodes, |
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| Roadside units, |
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| Contents, |
| Index set of vehicular nodes, | |
| Index set of roadside units, | |
| Index set of contents, | |
| The size of content or a storage cell. | |
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| The number of storage cells in |
| Content request matrix, | |
| Encountering matrix, | |
| Encountering latency matrix, | |
| Preference profile of contents, | |
| Priority ranking of storage cells, | |
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| Current storage cycle. |
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| The next storage cycle. |
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| The |
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| Failure frequency of |
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| The assistant score of |
Figure 2An instance of stable matching. (a) the relationships among , and ; (b) the stable matching.
The preference profile of contents.
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| Ranking |
|---|---|---|---|---|
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| 0 | 0 | 1 |
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| 2 | 1 | 1 |
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| 1 | 1 | 2 |
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The priority rankings of roadside units.
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| Ranking |
|---|---|---|---|---|
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| 4 | 1 | 1 |
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| 4 | 3 | 3 |
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| 1 | 2 | 1.5 |
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Figure 3An instance of multi-replica content preprocessing. (a) original relationships; (b) after multi-replica content preprocessing.
Figure 4An instance of the forwarding of assistant contents.
Simulation environment configurations.
| Parameter | Value |
|---|---|
| Network area | Grid network |
| Number of vehicles | 100 |
| Number of roadside units | |
| Number of contents | 300 |
| Simulation time | 12,000 s |
| Storage cycle | 600 s |
| Communication radius | 250 m |
| Data rate | 5 Mbps |
| Mobility model | Map-based shortest path model [ |
| Mobility velocity | 5.5∼16.5 m/s |
| Size of a content | 3 MB |
| Number of requests | A vehicle sends at most 5 requests in |
| Contents requested | Randomly selected |
Figure 5Simulation results. (a) access ratio; (b) average access delay; (c) number of content replicas; (d) transmission overhead.
Figure 6Results with different storage cycles. (a) access ratio; (b) average access delay.
Figure 7Results with different maximum sizes of assistant storage of a vehicular node.
Figure 8Results with different communication radiuses of vehicular nodes. (a) access ratio; (b) average access delay.
Figure 9Results with different communication radiuses of roadside units. (a) access ratio; (b) average access delay.
Figure 10Popularity distribution of contents.
Figure 11Results with different numbers of contents using Poisson distribution. (a) access ratio; (b) average access delay; (c) number of replicas; (d) transmission overhead.
Figure 12Real vehicular scenario. (a) Sanya City (China); (b) selected area.
Figure 13Encountering analysis. (a) distribution of the number of vehicles; (b) distribution of the number of roadside units.
Figure 14Results in real vehicular scenario. (a) access ratio; (b) average access delay; (c) number of replicas; (d) transmission overhead.