| Literature DB >> 27338385 |
Antonino Orsino1, Giuseppe Araniti2, Leonardo Militano3, Jesus Alonso-Zarate4, Antonella Molinaro5, Antonio Iera6.
Abstract
Fifth Generation (5G) wireless systems are expected to connect an avalanche of "smart" objects disseminated from the largest "Smart City" to the smallest "Smart Home". In this vision, Long Term Evolution-Advanced (LTE-A) is deemed to play a fundamental role in the Internet of Things (IoT) arena providing a large coherent infrastructure and a wide wireless connectivity to the devices. However, since LTE-A was originally designed to support high data rates and large data size, novel solutions are required to enable an efficient use of radio resources to convey small data packets typically exchanged by IoT applications in "smart" environments. On the other hand, the typically high energy consumption required by cellular communications is a serious obstacle to large scale IoT deployments under cellular connectivity as in the case of Smart City scenarios. Network-assisted Device-to-Device (D2D) communications are considered as a viable solution to reduce the energy consumption for the devices. The particular approach presented in this paper consists in appointing one of the IoT smart devices as a collector of all data from a cluster of objects using D2D links, thus acting as an aggregator toward the eNodeB. By smartly adapting the Modulation and Coding Scheme (MCS) on the communication links, we will show it is possible to maximize the radio resource utilization as a function of the total amount of data to be sent. A further benefit that we will highlight is the possibility to reduce the transmission power when a more robust MCS is adopted. A comprehensive performance evaluation in a wide set of scenarios will testify the achievable gains in terms of energy efficiency and resource utilization in the envisaged D2D-based IoT data collection.Entities:
Keywords: Device-to-Device communications; LTE-A; internet of things; power control; small data transmission; smart city
Year: 2016 PMID: 27338385 PMCID: PMC4934262 DOI: 10.3390/s16060836
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Reference scenario IoT data collection in an LTE-A cellular environment.
CQI-MCS mapping for D2D and cell-mode communication links.
| CQI | Modulation | Efficiency | Min. Rate | Efficiency | Min. Rate |
|---|---|---|---|---|---|
| Index | Scheme | D2D | D2D | Cellular | Cellular |
| (bit/s/Hz) | (kbps) | (bit/s/Hz) | (kbps) | ||
| 1 | QPSK | 0.1667 | 28.00 | 0.1523 | 25.59 |
| 2 | QPSK | 0.2222 | 37.33 | 0.2344 | 39.38 |
| 3 | QPSK | 0.3333 | 56.00 | 0.3770 | 63.34 |
| 4 | QPSK | 0.6667 | 112.00 | 0.6016 | 101.07 |
| 5 | QPSK | 1.0000 | 168.00 | 0.8770 | 147.34 |
| 6 | QPSK | 1.2000 | 201.60 | 1.1758 | 197.53 |
| 7 | 16-QAM | 1.3333 | 224.00 | 1.4766 | 248.07 |
| 8 | 16-QAM | 2.0000 | 336.00 | 1.9141 | 321.57 |
| 9 | 16-QAM | 2.4000 | 403.20 | 2.4063 | 404.26 |
| 10 | 64-QAM | 3.0000 | 504.00 | 2.7305 | 458.72 |
| 11 | 64-QAM | 3.0000 | 504.00 | 3.3223 | 558.72 |
| 12 | 64-QAM | 3.6000 | 604.80 | 3.9023 | 655.59 |
| 13 | 64-QAM | 4.5000 | 756.00 | 4.5234 | 759.93 |
| 14 | 64-QAM | 5.0000 | 840.00 | 5.1152 | 859.35 |
| 15 | 64-QAM | 5.5000 | 924.00 | 5.5547 | 933.19 |
Figure 2Energy efficient IoT data collection uploading solution. The overhead refers to the link layer (i.e., L2) and varies according to the LTE Modulation and Coding Scheme adopted to guarantee a BLER of 10%. (a) Fixed number of RBs; (b) Variable number of RBs.
Figure 3Message diagram for the proposed D2D cluster-based IoT data uploading.
LTE-D2D CQI Matrix.
| Device 1 | Device 2 | Device 3 | ... | Device | |
|---|---|---|---|---|---|
| device 1 | 0 | ... | |||
| device 2 | 0 | ... | |||
| ... | ... | ... | ... | ... | ... |
| device | ... |
Main Simulation Parameters.
| Parameter | Value |
|---|---|
| Cell radius | 250 m |
| Bandwidth | 20 MHz |
| Frame Structure | Type 2 (TDD) |
| TTI | 1 ms |
| TDD configuration | 0 |
| eNodeB Tx power | 46 dBm |
| 23 dBm | |
| 10 dBm [ | |
| Noise power | |
| D2D transmission range | 50 m [ |
| Path loss (cell link) | 128.1 + 37.6 log(d), d[km] |
| Path loss (D2D link, NLOS) | 40 log(d) + 30 log(f) + 49, d[km], f[Hz] |
| Path loss (D2D link, LOS) | 16.9 log(d) + 20 log (f/5) + 46.8, d[m], f[GHz] |
| Shadowing standard deviation | 10 dB (cell mode); 12 dB (D2D mode) |
| Sub-carrier spacing | 15 kHz |
| BLER target | 10% |
| # of Runs | 1500 |
Figure 4Transport Block utilization. (a) Varying the packet size (number of devices is 50); (b) Varying the number of devices (data size is 10 byte).
Figure 5Energy efficiency. (a) Varying the packet size (number of devices is 50); (b) Varying the number of devices (data size is 10 bytes).
Figure 6Performance for varying device density in the cell. (a) Transport Block utilization; (b) Energy efficiency.
Figure 7Performance for varying number of devices and data size: Aggregator vs. cluster devices. (a) Transport Block utilization; (b) Energy efficiency; (c) Energy consumption.
Figure 8Performance with aggregator role shifting among the devices (50 devices and 10 Bytes data). (a) Transport Block utilization; (b) Energy efficiency.