LTEOC:动态物联网网络的长期能量优化聚类

Mohamed Sofiane Batta, Z. Aliouat, H. Mabed, S. Harous
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引用次数: 5

摘要

到2024年,移动通信量预计将增长30%,为了实现绿色计算,即使对智能手机等电池供电的设备来说,节能也是至关重要的。为了节约网络设备的能量,引入了聚类技术。然而,所提出的能量优化技术并不能产生最佳的电池寿命,它们主要考虑的是带有不可充电电池的设备,并且在处理有限的能量时没有考虑电池老化(短期愿景)。为此,我们着眼于长期能量优化,引入了一种考虑设备电池健康状态和退化程度的动态聚类技术。该方案有效地管理了能量资源,提高了电池的性能,延长了网络的长期使用寿命。仿真结果表明,该方法优于现有文献中的同类方法。电池寿命周期和网络寿命分别提高38%和47%。生成的集群的平均数量减少了39%。
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LTEOC: Long Term Energy Optimization Clustering For Dynamic IoT Networks
Mobile traffic is expected to grow by 30% by 2024, saving energy is a crucial necessity even for battery-powered devices such as smartphones for the sake of green computing. Clustering techniques were introduced to conserve the energy of network devices. However, proposed energy optimization techniques do not yield optimal battery life, they mostly consider devices with non-rechargeable batteries and deal with limited energy without considering battery aging (short-term vision). To this end, we focus on the long-term energy optimization and we introduce a dynamic clustering technique that take into consideration the state of health of devices batteries and their degradation level. The proposed scheme efficiently manages the energy resource to enhance the battery behavior which extends the network lifespan in the long term.Simulations results show that the proposed approach out-performs similar works available in the current literature. The batteries life cycle and the network lifetime are improved by 38% and 47% respectively. The average number of generated clusters is reduced by 39%.
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