Movable Platform-Based Topology Detection for a Geographic Routing Wireless Sensor Network
Abstract
:1. Introduction
2. Background
2.1. Common MAC Protocols
2.2. RSSI Algorithm
2.3. Space Spectrum Estimation
2.4. Location-Based Routing Protocols
3. Workflow
- Capture node couples. The platform captures air data packets, determines the position of two nodes according to the direction and intensity of the electromagnetic wave that they send out and platform position in the process of data packet sending and receiving, and determines upstream nodes.
- Base address seeking. For the node couples detected, the downstream node and upstream node extension lines (defined as the direction line of node couple) should point at the station in at least one reference direction. The platform moves along the direction line of node couple and should move along the direction of new node couple after it captures node again. It will find station through changing direction line for many times.
- Global sampling. Upon arriving at station, the platform detects node couples and nodes of the whole network centering on the station according to the pre-determined design route.
- Construction of cost parameters. After the platform finishes detection, it will compare the neighbour nodes of midstream, upstream and downstream nodes according to nodes, calculate the range of cost parameter and determine the valuation of cost parameter.
- Reconstruction of network topology. Calculate all node couples of the whole network according to the cost parameters calculated, and re-calculate cost parameters and iterate as per the first result.
- Iteration and correction. Iterate the number of node hops again according to the estimated topology, and update node connection according to detection results and obtain the number of new node hops, iterate cost parameters and construct a new topology.
3.1. Node Couple Capture
3.2. Station Address Seeking
3.3. Node Acquisition
3.4. Topology Modeling
3.5. Topology Rebuilding
4. Evaluation
4.1. Experiment Setup
4.2. Setting of Prior Conditions
4.3. Accuracy Measurement
4.3.1. Accuracy of Topology
4.3.2. Accuracy of Node Positioning
4.4. Performance Measurement
5. Discussion
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Li, R.; Wang, J.; Chen, J. Movable Platform-Based Topology Detection for a Geographic Routing Wireless Sensor Network. Sensors 2020, 20, 3726. https://doi.org/10.3390/s20133726
Li R, Wang J, Chen J. Movable Platform-Based Topology Detection for a Geographic Routing Wireless Sensor Network. Sensors. 2020; 20(13):3726. https://doi.org/10.3390/s20133726
Chicago/Turabian StyleLi, Runzhi, Jian Wang, and Jiongyi Chen. 2020. "Movable Platform-Based Topology Detection for a Geographic Routing Wireless Sensor Network" Sensors 20, no. 13: 3726. https://doi.org/10.3390/s20133726
APA StyleLi, R., Wang, J., & Chen, J. (2020). Movable Platform-Based Topology Detection for a Geographic Routing Wireless Sensor Network. Sensors, 20(13), 3726. https://doi.org/10.3390/s20133726