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Adaptive Mobility Models for Cluster-Based Wireless Sensor Network with Mobile Sink

机译:具有移动接收器的基于集群的无线传感器网络的自适应移动性模型

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Wireless Sensor Network is considered as an important technology in recent years, especially with introducing mobility to this kind of network. Mobility Control and management represent a challenge for Cluster-Based Wireless Sensor Network. For the aim of handling this challenge, many mobility models are proposed in the literature. In this paper, we propose two hybrid mobility models for the Mobile Sink with adaptive pause time in order to improve the data collection process in Wireless Sensor Network organized in clusters using LEACH protocol. The proposed mobility models are divided into two phases, which are the discovery phase of cluster heads in the network using Grid Mobility Model and data collection phase using mobility models based on metaheuristics algorithms in order to find the optimal trajectory of the Mobile Sink passing by all cluster heads discovered. The mobility models based on metaheuristics used in this paper are Tabu Search and Simulated Annealing algorithms, where we have adapted to Cluster-Based Wireless Sensor Network with adaptive pause time. To evaluate the efficiency of our proposal on data collection, we compare the proposed hybrid mobility models to Grid Mobility Model and Random Way Point Mobility Model. The simulation results show that our proposed hybrid mobility models perform better than other mobility models in data collection.
机译:近年来,无线传感器网络被认为是一项重要技术,尤其是在将移动性引入此类网络中。移动性控制和管理对基于集群的无线传感器网络构成了挑战。为了应对这一挑战,文献中提出了许多移动性模型。在本文中,我们为具有自适应暂停时间的移动接收器提出了两种混合移动性模型,以改善使用LEACH协议在集群中组织的无线传感器网络中的数据收集过程。提出的移动性模型分为两个阶段,分别是使用网格移动性模型的网络中簇头的发现阶段和使用基于元启发式算法的移动性模型的数据收集阶段,以便找到所有人都能通过的移动接收器的最佳轨迹。发现簇头。本文使用的基于元启发式的移动性模型是禁忌搜索和模拟退火算法,其中我们已经适应了具有自适应暂停时间的基于集群的无线传感器网络。为了评估我们的建议在数据收集方面的效率,我们将提出的混合移动性模型与网格移动性模型和随机路径点移动性模型进行了比较。仿真结果表明,我们提出的混合出行模型在数据收集方面的表现优于其他出行模型。

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