| Literature DB >> 33267290 |
Jia Yu1, Ye Wang1,2, Shushi Gu1,2, Qinyu Zhang1,2, Siyun Chen1, Yalin Zhang3.
Abstract
Due to the high splitting-gain of dense small cells, Ultra-Dense Network (UDN) is regarded as a promising networking technology to achieve high data rate and low latency in 5G mobile communications. In UDNs, each User Equipment (UE) may receive signals from multiple Base Stations (BSs), which impose severe interference in the networks and in turn motivates the possibility of using Coordinated Multi-Point (CoMP) transmissions to further enhance network capacity. In CoMP-based Ultra-Dense Networks, a great challenge is to tradeoff between the gain of network throughput and the worsening backhaul latency. Caching popular files on BSs has been identified as a promising method to reduce the backhaul traffic load. In this paper, we investigated content placement strategies and user association algorithms for the proactive caching ultra dense networks. The problem has been formulated to maximize network throughput of cell edge UEs under the consideration of backhaul load, which is a constrained non-convex combinatorial optimization problem. To decrease the complexity, the problem is decomposed into two suboptimal problems. We first solved the content placement algorithm based on the cross-entropy (CE) method to minimize the backhaul load of the network. Then, a user association algorithm based on the CE method was employed to pursue larger network throughput of cell edge UEs. Simulation were conducted to validate the performance of the proposed cross-entropy based schemes in terms of network throughput and backhaul load. The simulation results show that the proposed cross-entropy based content placement scheme significantly outperform the conventional random and Most Popular Content placement schemes, with with 50% and 20% backhaul load decrease respectively. Furthermore, the proposed cross-entropy based user association scheme can achieve 30% and 23% throughput gain, compared with the conventional N-best, No-CoMP, and Threshold based user association schemes.Entities:
Keywords: CoMP; cross-entropy; proactive caching; ultra dense network; user association
Year: 2019 PMID: 33267290 PMCID: PMC7515065 DOI: 10.3390/e21060576
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1System model of caching-enabled Ultra-Dense Network (UDN) with joint transmission Coordinated Multi-Point (JT CoMP).
Parameters setting.
| Parameters | Value |
|---|---|
| Plane of Topology | 1.5 × 1.5 |
| Number of MBSs | 7 |
| Number of SBSs | 40 |
| Number of UEs | 50–200 |
| Channel Model | WINNER |
| Transmit Power of MBS | 40 W |
| Transmit Power of SBS | 2 W |
| Number of Available RB | 100 |
| Total Number of Files | 20 |
| Backhaul Capacity of MBS | 1 Gbps |
| Backhaul Capacity of SBS | 100 Mbps |
| Maximal Number of Caching Files on each BS | 10 |
|
| 10 Mbps |
|
| 3 |
Figure 2Backhaul load with different ().
Figure 3Time delay under different ().
Figure 4Backhaul load under different numbers of UEs ().
Figure 5Normalized time delay under different numbers of UEs ().
Figure 6Backhaul load under different storage capacity of BSs ().
Figure 7Normalized time delay under different storage capacity of BSs ().
Comparison of algorithms in terms of delay and backhaul load.
| Time Delay | Backhaul Load | |
|---|---|---|
| Random | high | high |
| MPC | low to high | low to high |
| CPCE | low | low |
Figure 8Network throughput under different .
Figure 9Backhaul load under different .
Figure 10Network throughput under different numbers of UEs.
Figure 11Backhaul load under different numbers of UEs.
Comparison of algorithms in terms of data rate and backhaul load.
| Data Rate | Backhaul Load | |
|---|---|---|
| No-CoMP | low | low to medium |
| low | low to medium | |
| Threshold | medium to high | high |
| CPCE-UACE | high | low |