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首页> 外文期刊>IEEE sensors journal >Markov Decision Process-Based Switching Algorithm for Sustainable Rechargeable Wireless Sensor Networks
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Markov Decision Process-Based Switching Algorithm for Sustainable Rechargeable Wireless Sensor Networks

机译:基于Markov决策过程的可持续充电无线传感器网络交换算法

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摘要

In a tree-based wireless sensor network (WSN), a tree structure rooted at sink node is usually created for efficient data collection. Recently, the use of solar harvesting technologies for rechargeable sensor nodes is evolving. Moreover, in a tree-based rechargeable WSN, the nodes that belong to different routes will have different energy dissipation due to unequal harvested-energy and utilized-energy. Network sustainability and energy efficiency are important issues in a tree-based rechargeable sensor network. In this paper, a Markov decision process-based switching algorithm has been designed for a sustainable data collection tree while reducing energy consumption in the network. Furthermore, an analysis of energy consumption has been performed using a real-time sensor traffic pattern. A prediction model has been adopted to estimate the harvesting energy (based on solar power) for the rechargeable sensor nodes. In this paper, the state of each node is defined based on different independent energy levels. The state of each node may change with time depending on harvested-energy and utilized-energy. The proposed Markov decision process approach finds the optimal switching policy for sensor nodes, which switch from one parent to another based on energy levels to preserve sustainability. A detailed theoretical analysis has been performed along with simulation results to show the efficacy of the proposed approach.
机译:在基于树的无线传感器网络(WSN)中,通常创建以接收器节点为根的树结构,以进行有效的数据收集。近来,太阳能收集技术在可再充电传感器节点上的使用正在发展。此外,在基于树的可再充电无线传感器网络中,由于收获能量和利用能量不相等,属于不同路径的节点将具有不同的能量耗散。网络可持续性和能源效率是基于树的可充电传感器网络中的重要问题。在本文中,基于Markov决策过程的交换算法已被设计用于可持续数据收集树,同时降低了网络能耗。此外,已经使用实时传感器交通模式对能耗进行了分析。已采用预测模型来估计可充电传感器节点的收获能量(基于太阳能)。在本文中,每个节点的状态是根据不同的独立能级定义的。每个节点的状态可能随时间变化,具体取决于收获的能量和利用的能量。提出的马尔可夫决策过程方法找到了传感器节点的最佳切换策略,该传感器节点根据能级从一个父节点切换到另一个父节点,以保持可持续性。进行了详细的理论分析以及仿真结果,以显示该方法的有效性。

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