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Power consumption in wireless sensor networks is high, and the lifetime of a battery has become a bottleneck, restricting network performance. Wireless power transfer with a ground mobile charger is vulnerable to interference from the terrain and other factors, and hence it is difficult to deploy in practice. Accordingly, a novel paradigm is adopted where a multi-UAV (unmanned aerial vehicle) with batteries can transfer power and information to SDs (sensor devices) in a large-scale sensor network. However, there are discrete events, continuous process, time delay, and decisions in such a complicated system. From the perspective of a hybrid system, a hybrid colored cyber Petri net system is proposed here to depict and analyze this problem. Furthermore, the energy utilization rate and information collection time delay are conflict with each other; therefore, UAV-aided wireless power and information transfer is formulated as a multi-objective optimization problem. For this reason, the MAC-NSGA II (multiple ant colony-nondominated sorting genetic algorithm II) is proposed in this work. Firstly, the optimal trajectory of multiple UAVs was obtained, and on this basis, the above two objectives were optimized simultaneously. Large-scale simulation results show that the proposed algorithm is superior to NSGA II and MOEA/D in terms of energy efficiency and information collection delay.
Huaiyu Qin; Buhui Zhao; Leijun Xu; Xue Bai. Petri-Net Based Multi-Objective Optimization in Multi-UAV Aided Large-Scale Wireless Power and Information Transfer Networks. Remote Sensing 2021, 13, 2611 .
AMA StyleHuaiyu Qin, Buhui Zhao, Leijun Xu, Xue Bai. Petri-Net Based Multi-Objective Optimization in Multi-UAV Aided Large-Scale Wireless Power and Information Transfer Networks. Remote Sensing. 2021; 13 (13):2611.
Chicago/Turabian StyleHuaiyu Qin; Buhui Zhao; Leijun Xu; Xue Bai. 2021. "Petri-Net Based Multi-Objective Optimization in Multi-UAV Aided Large-Scale Wireless Power and Information Transfer Networks." Remote Sensing 13, no. 13: 2611.
Wireless charging provides continuous energy for wireless sensor networks. However, it is difficult to replenish enough energy for all sensor nodes with fixed charging alone, and even more unrealistic to charge a large number of nodes within a short time via mobile charging. In order to overcome the above weaknesses, this paper firstly puts forward a Master-Slave Charging mode for the WRSN (Wireless Rechargeable Sensor Network), where fixed charging is the master mode and mobile charging is the slave mode, respectively. However, Master-Slave Charging is a typical hybrid system involving discrete event decision and continuous energy transfer. Therefore, the Hybrid Cyber Petri net system is proposed to build a visual specification with mathematical expression of Master-Slave Charging. Moreover, wireless charging in the WRSN is modeled and evaluated from the perspective of a hybrid system for the first time. Furthermore, a greedy-genetic algorithm is proposed to obtain the deployment of fixed chargers and the path planning of a mobile charger, by maximizing the actual electric quantity of the master charging problem and minimizing the mobile charger’s travelling path of the slave charging problem. Finally, the simulation results confirm and verify the Hybrid Cyber Petri net model for Master-Slave Charging. It is worth noting that the proposed model in this paper is highly adaptable to various charging modes in the WRSN.
Huaiyu Qin; Buhui Zhao; Leijun Xu; Xue Bai. Hybrid Cyber Petri Net Modelling, Simulation and Analysis of Master-Slave Charging for Wireless Rechargeable Sensor Networks. Sensors 2021, 21, 551 .
AMA StyleHuaiyu Qin, Buhui Zhao, Leijun Xu, Xue Bai. Hybrid Cyber Petri Net Modelling, Simulation and Analysis of Master-Slave Charging for Wireless Rechargeable Sensor Networks. Sensors. 2021; 21 (2):551.
Chicago/Turabian StyleHuaiyu Qin; Buhui Zhao; Leijun Xu; Xue Bai. 2021. "Hybrid Cyber Petri Net Modelling, Simulation and Analysis of Master-Slave Charging for Wireless Rechargeable Sensor Networks." Sensors 21, no. 2: 551.