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Q-learning based routing for in-network aggregation in wireless sensor networks

机译:基于Q学习无线传感器网络中网络聚合的路由

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摘要

In-network data aggregation is an inherent paradigm that extends the lifetime of resource-constrained wireless sensor networks (WSNs). By aggregating sensor data at intermediate nodes, it eliminates data redundancy, minimizes the number of transmissions and saves energy. A key component of in-network data aggregation is the design of an optimal routing structure. However, when the monitoring environment is highly dynamic, the conventional in-network aggregation routing algorithms lead to unnecessary redesign, high overhead and inferior performance, and make in-network aggregation a challenging task. This paper proposes a novel adaptive routing algorithm for in-network aggregation (RINA) in wireless sensor networks. The proposed approach employs a reinforcement learning method called Q-learning to build a routing tree based on minimal information such as residual energy, distance between nodes and link strength. In addition, it finds the aggregation points in the routing structure to maximize the number of overlapping routes in order to increase the aggregation ratio. Theoretical analysis proves the feasibility of the proposed approach. Simulation results show that the aggregation tree constructed by RINA increases the network lifetime by achieving optimum data aggregation and outperform other state-of-the-art approaches in terms of different significant features under different simulation scenarios.
机译:网络内数据聚合是一个固有的范例,它扩展了资源受限无线传感器网络(WSN)的生命周期。通过在中间节点处聚合传感器数据,它消除了数据冗余,最小化了传输的数量并节省能量。网络内数据聚合的关键组件是设计最佳路由结构。然而,当监视环境高度动态时,传统的网络内聚合路由算法导致不必要的重新设计,高开销和较差的性能,并使网络聚合成为一个具有挑战性的任务。本文提出了一种用于无线传感器网络中网络聚合(RINA)的新型自适应路由算法。所提出的方法采用一种称为q-学习的加强学习方法,以基于诸​​如剩余能量,节点之间的距离和链路强度之间的最小信息构建路由树。此外,它发现路由结构中的聚合点以最大化重叠路由的数量以增加聚合比。理论分析证明了提出的方法的可行性。仿真结果表明,RINA构建的聚合树通过在不同仿真场景下实现最佳数据聚集和优于不同的显着特征,通过实现最佳的数据聚集和优于其他最先进的方法来增加网络生命周期。

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