| Literature DB >> 27916917 |
Xu Xia1,2, Zhigang Chen3, Hui Liu4,5, Huihui Wang6, Feng Zeng7.
Abstract
Traditional underground coalmine monitoring systems are mainly based on the use of wired transmission. However, when cables are damaged during an accident, it is difficult to obtain relevant data on environmental parameters and the emergency situation underground. To address this problem, the use of wireless sensor networks (WSNs) has been proposed. However, the shape of coalmine tunnels is not conducive to the deployment of WSNs as they are long and narrow. Therefore, issues with the network arise, such as extremely large energy consumption, very weak connectivity, long time delays, and a short lifetime. To solve these problems, in this study, a new routing protocol algorithm for multisink WSNs based on transmission power control is proposed. First, a transmission power control algorithm is used to negotiate the optimal communication radius and transmission power of each sink. Second, the non-uniform clustering idea is adopted to optimize the cluster head selection. Simulation results are subsequently compared to the Centroid of the Nodes in a Partition (CNP) strategy and show that the new algorithm delivers a good performance: power efficiency is increased by approximately 70%, connectivity is increased by approximately 15%, the cluster interference is diminished by approximately 50%, the network lifetime is increased by approximately 6%, and the delay is reduced with an increase in the number of sinks.Entities:
Keywords: coalmine tunnels; multisink; power control; routing protocol
Year: 2016 PMID: 27916917 PMCID: PMC5191013 DOI: 10.3390/s16122032
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The haulage roadway.
Figure 2Architecture of multisink WSNs.
Figure 3WSN with two sinks.
Figure 4Frame format of a handshake packet in the distributed power control algorithm (DPCA).
Figure 5Selection of wireless ranges by three sinks in the network: (a) extremely large; (b) suitable; and (c) extremely small.
Figure 6Calculation process for determining the sink wireless range.
Figure 7Procedure of DPCA algorithm.
Figure 8Unequal clustering mechanism.
Neighbor nodes of a candidate cluster head.
| ID | State | Residual Energy (J) | Distance to Sink (m) |
|---|---|---|---|
| 3 | Candidate | 1.38 | 10 |
| 7 | Candidate | 0.21 | 20 |
| 8 | Candidate | 0.15 | 80 |
| 5 | Candidate | 0.38 | 60 |
Simulation parameters.
| Parameters | Values |
|---|---|
| Network coverage | (0, 0)–(1000, 20) m |
| Number of sink nodes | 1–12 |
| 200 | |
| Initial energy of sensor node | 0.5 J |
| 0.0013 pJ/bit/m4 | |
| 5 nJ/bit/signal | |
| 10 pJ/bit/m2 | |
| 50 nJ/bit | |
| 4 s | |
| Data grouping | 512 bit |
| 25 dBi | |
| 25 dBi | |
| 0.1 |
Figure 9Comparison of total energy consumption of sinks.
Figure 10Comparison of average connectivity.
Figure 11Cluster interface comparison.
Figure 12Comparison of network lifetime with different numbers of sinks.
Figure 13Comparison of data packet delay using varying numbers of sinks.