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Self-localization System of Wireless Sensor Based on Orthogonal Basis Neural Network Algorithm

机译:基于正交基神经网络算法的无线传感器自定位系统

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摘要

In order to improve the locating accuracy of wireless sensor self-localization system, it is necessary to study the self-localization method of wireless sensor. When using the current method to locate nodes in wireless sensor networks, there are many problems, such as low signalto-noise ratio, low location efficiency, low accuracy of node identification and low accuracy of location results. Based on orthogonal basis neural network algorithm, a self-localization method for wireless sensor networks is proposed. According to compressed sensing theory, the noise signal in wireless sensor networks is removed. The initial position information of nodes in wireless sensor networks is obtained by RSSI, and the initial position information is input into orthogonal basis neural networks as input value. In the network, by adjusting the weights to correct the error function, the localization results of the wireless sensor network nodes are output to complete the localization of the wireless sensor itself. Experimental results show that the proposed method has high signal-to-noise ratio, high positioning efficiency, high accuracy of node recognition and high positioning accuracy.
机译:为了提高无线传感器自定位系统的定位精度,有必要研究无线传感器的自定位方法。当使用当前方法在无线传感器网络中定位节点时,存在许多问题,例如低信噪比,位置效率低,节点识别的低精度和位置结果的低精度。基于正交基础神经网络算法,提出了一种用于无线传感器网络的自定位方法。根据压缩感测理论,去除无线传感器网络中的噪声信号。无线传感器网络中的节点的初始位置信息由RSSI获得,并且初始位置信息被输入到正交基神经网络作为输入值。在网络中,通过调整权重来校正错误功能,输出无线传感器网络节点的定位结果以完成无线传感器本身的定位。实验结果表明,该方法具有高信噪比,定位效率高,节点识别的高精度和高定位精度。

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