| Literature DB >> 30769893 |
Jiayao Wang1, Olamide Timothy Tawose2, Linhua Jiang3, Dongfang Zhao4,5.
Abstract
The wireless sensor network (WSN) is mainly composed of a large number of sensor nodes that are equipped with limited energy and resources. Therefore, energy consumption in wireless sensor networks is one of the most challenging problems in practice. On the other hand, data fusion can effectively decrease data redundancy, reduce the amount of data transmission and energy consumption in the network, extend the network life cycle, improve the utilization of bandwidth, and thus overcome the bottleneck on energy and bandwidth consumption. This paper proposes a new data fusion algorithm based on Hesitant Fuzzy Entropy (DFHFE). The new algorithm aims to reduce the collection of repeated data on sensor nodes from the source, and strives to utilize the information provided by redundant data to improve the data reliability. Hesitant fuzzy entropy is exploited to fuse the original data from sensor nodes in the cluster at the sink node to obtain higher quality data and make local decisions on the events of interest. The sink nodes periodically send local decisions to the base station that aggregates the local decisions and makes the final judgment, in which process the burden for the base station to process all the data is significantly released. According to our experiments, the proposed data fusion algorithm greatly improves the robustness, accuracy, and real-time performance of the entire network. The simulation results demonstrate that the new algorithm is more efficient than the state-of-the-art in terms of both energy consumption and real-time performance.Entities:
Keywords: WSNs; data fusion; energy consumption; hesitant fuzzy entropy
Year: 2019 PMID: 30769893 PMCID: PMC6412561 DOI: 10.3390/s19040784
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Schematic Diagram of the Network Model.
Figure 2Forest fire monitoring and early warning system.
The actual measured value after screening.
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| {150,155,160} | {15,18,24} | {45,50,57} |
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| {155,160} | {31} | {35,42,45} |
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| {160,165,169} | {24,30} | {40,45,50} |
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| {150,155} | {24,32,38} | {49} |
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| {140,145} | {24} | {41,45,48} |
Hesitant fuzzy decision matrix.
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| {0.7,0.75,0.8} | {0.04,0.17,0.2} | {0.2,0.38,0.5} |
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| {0.75,0.8} | {0.3} | {0.5,0.63,0.75} |
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| {0.8,0.85,0.89} | {0.2,0.29} | {0.38,0.5,0.58} |
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| {0.7,0.75} | {0.2,0.31,0.4} | {0.4} |
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| {0.6,0.65} | {0.2} | {0.43,0.5,0.6} |
Entropy matrix.
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| 0.7580 | 0.4782 | 0.9227 |
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| 0.7068 | 0.8460 | 0.9378 |
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| 0.5300 | 0.7480 | 0.9990 |
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| 0.8046 | 0.8499 | 0.9617 |
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| 0.9401 | 0.6505 | 0.9994 |
Additional parameters in evaluations.
| Notion | Description | Value |
|---|---|---|
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| Transmitter orreceiver energy consumption |
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| Amplifier energy consumption | 100 pJ/bit |
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| Transmitter power |
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| Receiver power |
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| Initial energy | 0.8 J |
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| Data fusion energy consumption | 5 pJ/bit |
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| Media Access Control | IEEE 802.15.4 |
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| Transmission attenuation | 4 |
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| Built-in communication equipment | Zigbee |
Figure 3Relationship between the number of network runs and the total number of surviving sensor nodes.
Figure 4Relationship between the total number of network runs and the remaining total energy.
Figure 5Relationship between the total number of network runs and the average time delay.