An efficient resource scheduling mechanism in LoRaWAN environment using coati optimal Q-reinforcement learning

被引:0
|
作者
Mahesh, J. Uma [1 ]
Mahapatro, Judhistir [1 ]
机构
[1] Natl Inst Technol, Dept Comp Sci & Engn, Rourkela 769008, India
关键词
coati optimization; energy consumption; fuzzy clustering; long range wide area network; optimal reinforcement learning; resource scheduling; server-based scheduling;
D O I
10.1002/dac.5965
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
It is estimated that there will be over two dozen billion Internet of Things (IoT) connections in the future as the number of connected IoT devices grows rapidly. Due to characteristics like low power consumption and extensive coverage, low-power wide area networks (LPWANs) have become particularly relevant for the new paradigm. Long range wide area network (LoRaWAN) is one of the most alluring technological advances in these networks. Although it is one of the most developed LPWAN platforms, there are still unresolved issues, such as capacity limitations. Hence, this research introduces a novel resource scheduling technique for the LoRAWAN network using deep reinforcement learning. Here, the information on the LoRaWAN nodes is learned by the reinforcement technique, and the knowledge is utilized to allocate resources to improve the packet delivery ratio (PDR) performance through a proposed coati optimal Q-reinforcement learning (CO_QRL) model. Here, Q-reinforcement learning is utilized to learn the information about nodes, and the coati optimization algorithm (COA) helps to choose the optimal action for enhancing the reward. In the proposed scheduling algorithm, the weighted sum of successfully received packets is treated as a reward, and the server allocates resources to maximize this Q-reward. The evaluation of the proposed method based on PDR, packet success ratio (PSR), packet collision rate (PCR), time, delay, and energy accomplished the values of 0.917, 0.759, 0.253, 85, 0.029, 7.89, and 10.08, respectively. To reduce the packet retransmission rate and delay, fuzzy-based clustering mechanisms are used. To introduce a Q-reinforcement learning model, which helps to schedule the task effectively. To utilize a metaheuristic optimization to improve the performance of the long range wide area network (LoRaWAN) environment. image
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页数:18
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