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An unmanned aerial vehicle-aided node localization using an efficient multilayer perceptron neural network in wireless sensor networks

机译:无线传感器网络中的高效多层的Perceptron神经网络的无人空中车辆辅助节点定位

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摘要

Localization of sensor node is decisive for many localization-based scenarios of wireless sensor networks (WSNs). Node localization using fixed terrestrial anchor nodes (ANs) equipped with global positioning system (GPS) modules suffers from high deployment cost and poor localization accuracy, because the terrestrial AN propagates signals to the unknown nodes (UNs) through unreliable ground-to-ground channel. However, the ANs deployed in unmanned aerial vehicles (UAVs) with a single GPS module communicate over reliable air-to-ground channel, where almost clear line-of-sight path exists. Thus, the localization accuracy and deployment cost are better with aerial anchors than terrestrial anchors. However, still the nonlinear distortions imposed in propagation channel limit the performance of classical RSSI and least square localization schemes. So, the neural network (NN) models can become good alternative for node localization under such nonlinear conditions as they can do complex nonlinear mapping between input and output. Since the multilayer perceptron (MLP) is a robust tool in the assembly of NNs, MLP-based localization scheme is proposed for UN localization in UAV-aided WSNs. The detailed simulation analysis provided in this paper prefers the MLP localization scheme as they exhibit improved localization accuracy and deployment cost.
机译:传感器节点的定位对于许多基于本地化的无线传感器网络(WSN)的情景是决定性的。节点本地化使用配备有全球定位系统(GPS)模块的固定地面锚点(ANS)遭受高部署成本和差的定位精度,因为地面通过不可靠的地面通道将信号传播到未知节点(Uns) 。然而,在无人机的空中车辆(UAV)中部署的ANS,具有单个GPS模块,通过可靠的空对地通道进行通信,存在几乎清晰的视线路径。因此,与陆地锚定的空中锚定位精度和部署成本更好。然而,传播信道中施加的非线性扭曲限制了经典RSSI和最小二乘定位方案的性能。因此,神经网络(NN)模型可以在这种非线性条件下为节点定位变为良好的替代方案,因为它们可以在输入和输出之间进行复杂的非线性映射。由于Multilayer Perceptron(MLP)是NNS组装中的鲁棒工具,因此提出了基于MLP的定位方案,以便在UAV辅助WSN中的UN本地化。本文提供的详细仿真分析更加喜欢MLP定位方案,因为它们表现出改善的本地化精度和部署成本。

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