A Joint Power and Channel Scheduling Scheme for Underlay D2D Communications in the Cellular Network
Abstract
:1. Introduction
2. Related Works
- We perform a two-step resource management problem on the joint small-scale and large-scale channel and take the statistical SCI into account; thus, the optimization problem aiming to maximize the ergodic EE of D2D communications is formulated. Moreover, we incorporate the outage probability constraint into the problem.
- We analyze the outage probability constraint and explore the relationship of transmit power between DUE and CUE to simplify the resulting non-convex optimization problem. To the best of our knowledge, for the existing literatures, this is the first work that introduces the nonlinear relationship of transmit power between CUE and DUE, which is more robust than the functional relationship other researches involved from the perspective of linear relationship.
- We transform the MINLP problem into two sub-problems, i.e., the PC sub-problem for both CUEs and CUEs and CA sub-problem. Besides, we allow DUEs to asynchronously reuse the RBs of CUEs so that each DUE only suffers from the interference from one CUE. In the spectrum allocation phase, we introduce weight coefficients between ergodic EE of DUEs and received interference from the transmitters of DUEs at BS to maintain trade-off between maximizing energy efficiency and minimizing interference.
- Three algorithms are used for comparison and the simulation results show the superiority of the proposed algorithm in terms of EE and the received interference at BS.
3. System Model and Problem Formulation
3.1. System Model
3.2. Problem Formulation
4. Proposed Power Control and Channel Allocation Scheme
4.1. Power Control
4.2. Channel Allocation
Algorithm 1. Maximum Weighted Ergodic Energy Efficiency (MWEEE) Algorithm |
Input: |
Output: |
1: Initialize: the number of iteration , the , the threshold , , the approximation coefficient , maximum number of iterations , the learning rate , the lagrange multiplier . |
2: Obtain with the given initialized parameters according to P5. |
3: |
4: |
5: while (i-th iteration) do |
6: while (j-th iteration) do |
7: |
8: |
9: |
10. , obtain with the and then obtain |
11: |
12: end while |
13: |
14: Obtain according to the formula (4). |
15: Obtain according to P5. |
16: |
17: |
18: end while |
19: Output as . |
20: Compute the with the , . |
21: for to K do |
22: for to M do |
23: Substitute into formula (26) and formula (28) to obtain and respectively. |
24: end for |
25: Obtain according to formula (22). |
26: end for |
27: Compute according to formula (8). |
28: Output , . |
5. Simulation Results
- 2-D Search: This scheme, proposed in [20], allow each DUE to reuse only one CUE and each RB not to be reused by more than one DUE. It searches for the optimal power solution of CUEs and DUEs in the region where the power value of CUE and DUE range from zero to the maximum power value. In this simulation, the subcarriers are assigned by finding the most suitable DUE for each RB to maximize the EE of DUE.
- Restricted 2-D Search: This scheme, proposed in [21], discusses the cases of feasible regions depending on magnitudes of the maximum power of CUE and DUE. The power allocation problem is solved by using the bisection search method according to the power feasible regions. The authors assume that DUEs and CUEs is matched with one-to-one strategy. Thus, for the fairness of comparison, the subcarriers are assigned by finding the optimal RB which maximize the EE of DUE.
- Cooperative Power: This scheme, proposed in [24], focuses on maximizing the EE of DUEs. It describes the linear power relationship between DUE and the corresponding CUE and substituted it into the optimization problem which is proved to be a convex problem and can be solved by the KKT condition. In the spectrum allocation phase, the subcarriers are assigned to the DUE which has the greatest contribution to maximizing the EE of D2D links.
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A
Appendix B
Appendix C
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Parameters | Values |
---|---|
Cell radius R | 500 (m) |
UEs distribution | randomly distributed |
Number of D2D pairs | 10–30 |
Number of cellular link | 10–30 |
Maximum Tx power of CUE | 27 (dBm) |
Maximum Tx power of DUE | 25 (dBm) |
uplink bandwidth B | 160 (kHz) |
Maximum distance between D2D-Tx and D2D-Rx | 100–200 (m) |
Thermal noise power | −174 (dBm) |
Circuit power consumption | 50 (mW) |
Path loss exponent | 3 |
Path constant | |
Shadowing distribution | Log-normal |
Shadowing standard deviation | 8 (dB) |
Minimum requirement SINR of D2D link | 15–20 (dB) |
Tolerable outage probability | 0.003–0.09 |
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Lin, Z.; Song, H.; Pan, D. A Joint Power and Channel Scheduling Scheme for Underlay D2D Communications in the Cellular Network. Sensors 2019, 19, 4799. https://doi.org/10.3390/s19214799
Lin Z, Song H, Pan D. A Joint Power and Channel Scheduling Scheme for Underlay D2D Communications in the Cellular Network. Sensors. 2019; 19(21):4799. https://doi.org/10.3390/s19214799
Chicago/Turabian StyleLin, Zefang, Hui Song, and Daru Pan. 2019. "A Joint Power and Channel Scheduling Scheme for Underlay D2D Communications in the Cellular Network" Sensors 19, no. 21: 4799. https://doi.org/10.3390/s19214799
APA StyleLin, Z., Song, H., & Pan, D. (2019). A Joint Power and Channel Scheduling Scheme for Underlay D2D Communications in the Cellular Network. Sensors, 19(21), 4799. https://doi.org/10.3390/s19214799