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A metaheuristic optimization approach for energy efficiency in the IoT networks

机译:物联网中能源效率的综合优化方法

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Recently Internet of Things (IoT) is being used in several fields like smart city, agriculture, weather forecasting, smart grids, waste management, etc. Even though IoT has huge potential in several applications, there are some areas for improvement. In the current work, we have concentrated on minimizing the energy consumption of sensors in the IoT network that will lead to an increase in the network lifetime. In this work, to optimize the energy consumption, most appropriate Cluster Head (CH) is chosen in the IoT network. The proposed work makes use of a hybrid metaheuristic algorithm, namely, Whale Optimization Algorithm (WOA) with Simulated Annealing (SA). To select the optimal CH in the clusters of IoT network, several performance metrics such as the number of alive nodes, load, temperature, residual energy, cost function have been used. The proposed approach is then compared with several state-of-the-art optimization algorithms like Artificial Bee Colony algorithm, Genetic Algorithm, Adaptive Gravitational Search algorithm, WOA. The results prove the superiority of the proposed hybrid approach over existing approaches.
机译:最近的事情(物联网)正在使用智能城市,农业,天气预报,智能电网,废物管理等几个领域。即使IOT在若干应用中具有巨大的潜力,还有一些改进的领域。在目前的工作中,我们专注于最大限度地减少IOT网络中传感器的能耗,这将导致网络寿命的增加。在这项工作中,为了优化能量消耗,最合适的群集头(CH)被选中在IOT网络中。所提出的工作利用混合成群化算法,即具有模拟退火(SA)的鲸联优化算法(WOA)。为了在IOT网络集群中选择最佳CH,已经使用了几种性能度量,如活动节点,负载,温度,剩余能量,成本函数。然后将所提出的方法与人造群菌落算法,遗传算法,自适应重力搜索算法,WOA等若干最先进的优化算法进行比较。结果证明了拟议的混合方法对现有方法的优越性。

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