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Q-learning based energy-efficient and void avoidance routing protocol for underwater acoustic sensor networks

机译:基于Q学习的水下声学传感器网络的节能和空隙避免路由协议

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摘要

The routing in underwater acoustic sensor networks (UASNs) has become a challenging issue due to several problems. First, in UASN, the distance between the nodes changes due to their mobility with the water current, thus increasing the network's energy consumption. Second problem in UASNs is the occurrence of the void hole, which affects the network's performance. Because nodes are unable to deliver data towards the destination due to the absence of forwarder nodes (FNs) in the network. Thus, the objective of routing in UASNs is to overcome the issues mentioned earlier to prolong the network's lifetime. Therefore, a Q-learning based energy-efficient and balanced data gathering (QL-EEBDG) routing protocol is proposed in this paper. In QLEEBDG, the FNs are selected according to their residual energy and grouped according to their neighboring nodes' energies. Using energy as the main selection parameter assures efficient energy consumption in the network. Moreover, efficient selection of the FNs increases the lifetime of the network. However, the void node recovery process fails when the topology of the network is changed. Therefore, to avoid void holes in QL-EEBDG, a QL-EEBDG adjacent node (QL-EEBDG-ADN) scheme is proposed. It finds alternate neighbor routes for packet transmission and ensures continuous communication in the network. Extensive simulations are carried out for the performance evaluation of the proposed technique with existing baseline protocols, namely efficient balanced energy consumption based data gathering (EBDG), enhanced EBDG (EEBDG) and QELAR. The performance parameters used in the simulations are network lifetime, energy tax, network stability period and packet delivery ratio (PDR). The simulation results depict that the proposed QL-EEBDG-ADN outperforms the baseline protocols by approximately 11% better PDR and 25% better energy tax.
机译:由于几个问题,水下声学传感器网络(UASNS)的路由已成为一个具有挑战性的问题。首先,在UASN中,节点之间的距离由于其与水流的移动性而改变,从而增加了网络的能量消耗。 UASN中的第二个问题是空隙孔的发生,这会影响网络性能。因为在没有网络中没有转发器节点(FNS),节点无法向目的地提供数据。因此,在UASNS中路由的目的是克服前面提到的问题延长了网络的一生。因此,本文提出了基于Q学习的节能和平衡数据收集(QL-EEBDG)路由协议。在QLeebdg中,根据其剩余能量选择FN,并根据其邻近节点的能量进行分组。使用能源作为主选择参数,确保网络中的高效能耗。此外,有效选择FNS增加了网络的寿命。但是,当网络拓扑改变时,void节点恢复过程失败。因此,为了避免QL-EEBDG中的空隙孔,提出了QL-EEBDG相邻节点(QL-EEBDG-ADN)方案。它找到了用于数据包传输的备用邻居路由,并确保网络中的连续通信。对具有现有基线协议的提出技术的性能评估进行了广泛的模拟,即高效的平衡能耗基于数据收集(EBDG),增强的EBDG(EEBDG)和QElar。模拟中使用的性能参数是网络寿命,能源税,网络稳定期和分组传递比(PDR)。仿真结果表明,所提出的QL-EEBDG-ADN优于基线方案比较优越的PDR和25%更好的能源税。

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