| Literature DB >> 35161992 |
Ahmad M Khasawneh1, Mamoun Abu Helou2, Aanchal Khatri3, Geetika Aggarwal4, Omprakash Kaiwartya4, Maryam Altalhi5, Waheeb Abu-Ulbeh2, Rabah AlShboul6.
Abstract
Heterogeneous vehicular communication on the Internet of connected vehicle (IoV) environment is an emerging research theme toward achieving smart transportation. It is an evolution of the existing vehicular ad hoc network architecture due to the increasingly heterogeneous nature of the various existing networks in road traffic environments that need to be integrated. The existing literature on vehicular communication is lacking in the area of network optimization for heterogeneous network environments. In this context, this paper proposes a heterogeneous network model for IoV and service-oriented network optimization. The network model focuses on three key networking entities: vehicular cloud, heterogeneous communication, and smart use cases as clients. Most traffic-related data-oriented computations are performed at cloud servers for making intelligent decisions. The connection component enables handoff-centric network communication in heterogeneous vehicular environments. The use-case-oriented smart traffic services are implemented as clients for the network model. The model is tested for various service-oriented metrics in heterogeneous vehicular communication environments with the aim of affirming several service benefits. Future challenges and issues in heterogeneous IoV environments are also highlighted.Entities:
Keywords: Internet of Things; Internet of connected vehicles; heterogeneous networking; heterogeneous vehicular communication; vehicular ad hoc networks
Mesh:
Year: 2022 PMID: 35161992 PMCID: PMC8840583 DOI: 10.3390/s22031247
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The realization of the IoV scenario with heterogeneous vehicular networks.
Figure 2System architecture.
Symbol description.
| Symbol | Description |
|---|---|
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| Vehicular network connectivity graph |
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| Set of vehicular nodes as vertices of the graph |
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| Set of vehicular communication links as edges of the graph |
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| Set of vehicular communication flows in the network graph |
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| Shortest communication paths between vehicular nodes |
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| Number of segments in a particular path
|
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| Number of subpaths in a particular path
|
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| Weight of a path |
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| Link utilization ratio of a vehicular network |
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| Link load of shared link in a particular path
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| Link capacity of shared link in aparticular path
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Figure 3Building blocks of the network model.
Figure 4Vehicular cloud-oriented heterogeneous network model for IoV.
Figure 5The two-level vehicular cloud engine for IoV.
Figure 6Key functional modules in heterogeneous connection: (a) HIC and (b) HIG.
Figure 7Experimentally validated access-technology prioritization tree.
Client-oriented access technology prioritization.
| Client | Client-Oriented Priority Order |
|---|---|
| Accident Prevention | WAVE/DSRC → 4G/LTE → ZigBee → Wi-Fi → Bluetooth → WiMax |
| Emergency Call Guarantee | Bluetooth → ZeeBee → Wi-Fi → WAVE/DSRC → WiMax → 4G/LTE |
| MEC-Oriented Parking Helper | WiMax → Wi-Fi → 4G/LTE → WAVE/DSRC → Bluetooth → ZigBee |
| Vehicular Telematics | 4G/LTE → WiMax → WAVE/DSRC → Wi-Fi → Bluetooth → ZigBee |
Figure 8Simulation scenario as open street view.
Figure 9Simulation scenario as simulator view.
Figure 10Message diversion in M2C-based accident prevention.
Figure 11Message drop in back-box-oriented emergency message delivery.
Figure 12Distributed delay in MEC-based parking helper.
Figure 13Stream utilization in telematics-based video data delivery.