| Literature DB >> 31438598 |
Addisalem Genta1, D K Lobiyal2, Jemal H Abawajy3.
Abstract
Wireless multimedia sensor networks (WMSNs) are capable of collecting multimedia events, such as traffic accidents and wildlife tracking, as well as scalar data. As a result, WMSNs are receiving a great deal of attention both from industry and academic communities. However, multimedia applications tend to generate high volume network traffic, which results in very high energy consumption. As energy is a prime resource in WMSN, an efficient routing algorithm that effectively deals with the dynamic topology of WMSN but also prolongs the lifetime of WMSN is required. To this end, we propose a routing algorithm that combines dynamic cluster formation, cluster head selection, and multipath routing formation for data communication to reduce energy consumption as well as routing overheads. The proposed algorithm uses a genetic algorithm (GA)-based meta-heuristic optimization to dynamically select the best path based on the cost function with the minimum distance and the least energy dissipation. We carried out an extensive performance analysis of the proposed algorithm and compared it with three other routing protocols. The results of the performance analysis showed that the proposed algorithm outperformed the three other routing protocols.Entities:
Keywords: GA; WMSN; energy efficiency; multipath; network lifetime; routing
Year: 2019 PMID: 31438598 PMCID: PMC6749332 DOI: 10.3390/s19173642
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
The symbols and explanation.
| Symbol | Explanation |
|---|---|
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| A sensor node in WMSN |
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| The bidirectional wireless link between |
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| Energy consumed during data transmission between |
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| The distance between the node |
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| Set of sensor nodes in the event area |
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| The total number of sensor nodes in the sensing field |
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| The total number of sensor nodes in the event area |
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| The set of neighboring nodes to node |
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| The thresholdvaluetoselect apply transmission model |
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| Transmission ability in free space model |
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| Transmission ability in multipath fading model |
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| Size of data to be transmitted or received by a node |
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| Energy consumed to send |
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| Energy consumed to receive |
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| The distance which the data traveled |
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| Energy consumed for processing data |
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| Electronic energy |
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| The overall cost incurred by a node |
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| Center of the event area |
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| Distance between a node |
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| Distance between a node |
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| Residual energy of a particular node |
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| Energy consumption along a particular routing path between the CH and BS |
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| Minimum energy consumption in path |
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| Number of hops in a particular routing path between CH and BS |
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| Network lifetime |
Figure 1Wireless multimedia sensor network model.
Figure 2Energy model.
Figure 3Efficient multipath routing based on genetic algorithm (EMRGA).
Figure 4Chromosome representation for multipath.
Experimental parameters.
| Parameters | Value |
|---|---|
| Sink | 1 |
| Sink position | (0,200) |
| Sensor nodes | 100 |
| Sensing area | 200 m × 200 m |
| Event radius | 20 m |
| Transmission range | 200 m |
| Packet size | 512 bytes |
| Message size | 10 bytes |
| Sensor initial energy (normal nodes) | 2 J (1 J for heterogeneous case) |
| Advanced sensor node initial energy | 2 J |
| 5 nJ | |
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| 10 pJ |
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| 0.0013 pJ |
| Population size | 100 |
| Crossover probability | 20% |
| Mutation probability | 10% |
Figure 5Average residual energy.
Figure 6Energy consumption.
Figure 7Standard deviations.
Figure 8Network lifetime.
Figure 9Standarddeviation.
Figure 10Energy consumption.
Figure 11Network lifetime.
Figure 12Average energy.