Optimizing the Charging Mobility of WPT-Enabled UAV to Enhance the Stability of Solar-Powered LoRaWAN IoT
Abstract
:1. Introduction
- Considering the energy model for SP-nodes: The proposed method establishes a threshold, based on existing research, to differentiate between nodes with insufficient energy and nodes with sufficient energy within the SP-nodes. Then, it transmits energy exclusively to nodes with insufficient energy, where the remaining energy falls below the threshold. Nodes with residual energy exceeding the threshold do not require WPT from the drone, as they operate normally with the currently harvested solar energy.
- Considering the energy model of the drone: The drone’s energy is consumed for both flight and WPT. Therefore, even if the drone transmits energy only to nodes with insufficient energy, it may not be able to visit all of these nodes due to its limited energy.
- Considering the characteristics of RF-WPT: The RF-WPT technique enables the simultaneous charging of multiple nodes located around a single hovering location. Therefore, the method of transmitting energy by visiting every node for charging is inefficient.
2. Related Work
2.1. Solar-Powered IoT
2.2. Wireless Power Transmission for IoT
3. Proposed Method
3.1. Energy Model
3.1.1. Energy Model of SP-Nodes
3.1.2. RF-WPT Energy Model
3.2. Problem Definition
3.3. Max-Min Residual Energy (MmRE) Method
4. Experimental Results
4.1. Experimental Environments
4.2. Number of Nodes Experiencing a Blackout
4.3. Amount of Data Collected at the Base Station
4.4. Performance Comparison Based on Field Size
4.5. Performance Comparison Based on the Number of Nodes
4.6. Comparison Based on Drone’s Battery Capacity
4.7. Example of Drone’s Energy Level Variations
4.8. Analysis of Time Complexity
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Method | Power Density |
---|---|
Solar | 6.63 W/m2 |
Geothermal | 2.24 W/m2 |
Wind | 1.84 W/m2 |
Hydro | 0.14 W/m2 |
Biomass | 0.08 W/m2 |
Parameter | Value |
---|---|
Simulation time | 10,080 ticks |
Period of drone’s charging | 1 h |
Field size | 1 km × 1 km |
Number of nodes | 10,000 |
Sensor node battery capacity | 150 mAh |
Sensing data transfer rate | 1 kB/min |
LoRa data transmission range | 2 km |
Amount of harvested energy | 15–25 J/day |
Amount of consumed energy | 15–25 J/day |
Duty cycle | 0.5 |
Battery capacity of drone for WPT | 15,000 mAh |
Hovering height of drone (H in Equation (5)) | 5 m |
Total hovering time (T in Equation (13)) | 1 h |
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Gong, Y.; Yoon, I.; Noh, D.K. Optimizing the Charging Mobility of WPT-Enabled UAV to Enhance the Stability of Solar-Powered LoRaWAN IoT. Energies 2024, 17, 1617. https://doi.org/10.3390/en17071617
Gong Y, Yoon I, Noh DK. Optimizing the Charging Mobility of WPT-Enabled UAV to Enhance the Stability of Solar-Powered LoRaWAN IoT. Energies. 2024; 17(7):1617. https://doi.org/10.3390/en17071617
Chicago/Turabian StyleGong, Yujin, Ikjune Yoon, and Dong Kun Noh. 2024. "Optimizing the Charging Mobility of WPT-Enabled UAV to Enhance the Stability of Solar-Powered LoRaWAN IoT" Energies 17, no. 7: 1617. https://doi.org/10.3390/en17071617
APA StyleGong, Y., Yoon, I., & Noh, D. K. (2024). Optimizing the Charging Mobility of WPT-Enabled UAV to Enhance the Stability of Solar-Powered LoRaWAN IoT. Energies, 17(7), 1617. https://doi.org/10.3390/en17071617