A Low-Cost Resource Re-Allocation Scheme for Increasing the Number of Guaranteed Services in Resource-Limited Vehicular Networks
Abstract
:1. Introduction
1.1. Motivation
1.2. Related Work
1.3. Contributions
- The co-layer and cross-layer interferences in the vehicular network are quantitatively analyzed using stochastic geometry.
- To guarantee the services in the dynamic network, the definition of the guaranteed service is given based on the changes in the data queue.
- To increase the number of guaranteed services at a low cost in a resource-limited vehicular network, we propose a time dynamic optimization method that constrains the network re-allocation rate.
- To decrease the computational complexity, we convert the proposed time dynamic optimization problem into a deterministic optimization problem using the Lyapunov optimization theory to determine the set of served services based on the dynamic changes in the network at each slot.
1.4. Organization
2. System Model and Dynamic Optimization Problem
2.1. Network Model
2.2. Signal Model
2.3. Availability Probability Calculated by Stochastic Geometry
2.4. Non-Outage Probability Calculated by Stochastic Geometry
2.5. Data Queue Model
2.6. Dynamic Maximization Problem of the Number of Service-Guaranteed Users
3. Dynamic Algorithm of Resource Re-allocation
3.1. Virtual Queue
3.2. Lyapunov Optimization
3.3. Implementation of the Proposed Resource Allocation Scheme and Its Overhead
4. Simulation
4.1. Comparison between the Theoretical Calculations and the Simulation Results
4.2. The Performance of the Proposed Scheme
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
ITS | intelligent transportation system |
V2V | vehicle-to-vehicle |
V2I | vehicle-to-infrastructure |
C-V2X | cellular vehicle-to-everything |
RSU | roadside unit |
VU | vehicular user |
MU | macrocell user |
MBS | macrocell base station |
1D PPP | one-dimensional Poisson point process |
SIR | signal-to-interference-ratio |
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Notations | Meaning |
---|---|
The set of platoons | |
The density of platoons | |
The set of vehicles in a platoon | |
N | The cardinality of |
The set of orthogonal channels | |
and | The number of microcell users (MUs) and the number of platoons |
The threshold of the signal-to-interference ratio (SIR) | |
and | The transmit power of the microcell base station (MBS) and the transmit power of the vehicle user (VU) |
The factor of the path loss | |
n | The member in the platoon |
The interference from the MBS to member n in the platoon in channel k | |
The small-scale fading from the MBS to member n in the platoon in channel k | |
The distance between the MBS and the platoon | |
The probability of a channel being occupied by an MU | |
The aggregated interference from the other platoons to member n in the platoon in channel k | |
The small-scale fading from the VU interferer q to member n in the platoon in channel k | |
The distance between the VU interferer q and the platoon | |
The total aggregated interference from the MBS and the other platoons to member n in the platoon in channel k | |
The SIR of member n in the platoon in channel k | |
The small-scale fading from the corresponding transmitter to member n in the platoon in channel k | |
The distance between the corresponding transmitter and receiver in the platoon | |
The small-scale fading from the MBS to the corresponding MU that is active in channel k | |
The distance between the MBS and the corresponding MU that is active in channel k | |
The small-scale fading from the VU interferer to the MU that is active in channel k | |
The distance between the VU interferer and the MU that is active in channel k | |
The threshold of the ratio of the interference from the MBS to the interference from the other platoons | |
The binary variable of channel allocation for the MUs in channel k | |
The availability probability of channel k for member n in the platoon | |
The binary variable that indicates whether channel k is available to member n in the platoon at time slot t | |
The non-outage probability of channel k for member n in the platoon | |
The binary variable that indicates whether channel k is in a non-outage state for member n in the platoon at time slot t | |
The data queue for member n in the platoon at time slot t | |
The rate of service for member n in the platoon at time slot t | |
The rate of data arrival for member n in the platoon | |
and | The channel allocation matrix and its element |
The set of decisions for member n in the platoon | |
The indicator of re-allocation at time slot t | |
The threshold of re-allocation rate | |
The notation that indicates whether member n in the platoon is a service-guaranteed user at time slot t | |
The virtual cost queue for the re-allocation rate of the platoon at time slot t | |
and | The Lyapunov function and the Lyapunov drift at time slot t |
V | The control parameter |
Simulation Parameters | Value |
---|---|
The threshold of the SIR, | 5 |
The path loss factor, | 4 |
The transmit power of the MBS, | 10 w |
The transmit power of the VU, | 3 w |
The threshold of the re-allocation rate, | 0.2 |
The length of each slot, | 10 ms |
The velocity of the platoon and MU | 40 km/h |
The length of the road | 2000 m |
The maximum data arrival rate of the VUs, | 1 packet/slot |
The minimum data arrival rate of the VUs, | 0.1 packet/slot |
The number of MUs, | 2 |
The threshold of the ratio of the interference from the MBS to the interference from the other platoons, | 1 |
The window of the service-guaranteed user, W | 10 |
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Meng, Y.; Dong, Y.; Wu, C.; Liu, X. A Low-Cost Resource Re-Allocation Scheme for Increasing the Number of Guaranteed Services in Resource-Limited Vehicular Networks. Sensors 2018, 18, 3846. https://doi.org/10.3390/s18113846
Meng Y, Dong Y, Wu C, Liu X. A Low-Cost Resource Re-Allocation Scheme for Increasing the Number of Guaranteed Services in Resource-Limited Vehicular Networks. Sensors. 2018; 18(11):3846. https://doi.org/10.3390/s18113846
Chicago/Turabian StyleMeng, Yun, Yuan Dong, Chunling Wu, and Xinyi Liu. 2018. "A Low-Cost Resource Re-Allocation Scheme for Increasing the Number of Guaranteed Services in Resource-Limited Vehicular Networks" Sensors 18, no. 11: 3846. https://doi.org/10.3390/s18113846
APA StyleMeng, Y., Dong, Y., Wu, C., & Liu, X. (2018). A Low-Cost Resource Re-Allocation Scheme for Increasing the Number of Guaranteed Services in Resource-Limited Vehicular Networks. Sensors, 18(11), 3846. https://doi.org/10.3390/s18113846