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Accurate Wireless Sensor Localization Technique Based on Hybrid PSO-ANN Algorithm for Indoor and Outdoor Track Cycling

机译:基于混合PSO-ANN算法的准确无线传感器定位技术,室内和室外轨道循环

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This paper aims to determine the distance between the mobile sensor node (i.e., bicycle) and the anchor node (i.e., coach) in outdoor and indoor environments. Two approaches were considered to estimate such a distance. The first approach was based on the traditional channel propagation model that used the log-normal shadowing model (LNSM), while the second approach was based on a proposed hybrid particle swarm optimization-artificial neural network (PSO-ANN) algorithm to improve the distance estimation accuracy of the mobile node. The first method estimated the distance according to the LNSM and the measured received signal strength indicator (RSSI) of the anchor node, which in turn used the ZigBee wireless protocol. The LNSM parameters were measured based on the RSSI measurements in both outdoor and indoor environments. A feed-forward neural network type and the Levenberg-Marquardt training algorithm were used to estimate the distance between the mobile node and the coach. The hybrid PSO-ANN algorithm significantly improved the distance estimation accuracy more than the traditional LNSM method without additional components. The hybrid PSO-ANN algorithm achieved a mean absolute error of 0.022 and 0.208 m for outdoor and indoor environments, respectively. The effect of anchor node density on localization accuracy was also investigated in the indoor environment.
机译:本文旨在确定户外和室内环境中的移动传感器节点(即,自行车)和锚节点(即,教练)之间的距离。考虑了两种方法来估计这样的距离。第一种方法是基于传统的信道传播模型,该模型使用了日志普通阴影模型(LNSM),而第二种方法是基于提出的混合粒子群优化 - 人工神经网络(PSO-ANN)算法来提高距离估计移动节点的准确性。第一方法估计根据LNSM的距离和锚节点的测量的接收信号强度指示符(RSSI),其又使用了ZigBee无线协议。基于户外和室内环境中的RSSI测量来测量LNSM参数。前馈神经网络类型和Levenberg-Marquardt训练算法用于估计移动节点和教练之间的距离。混合PSO-ANN算法比传统的LNSM方法显着提高了距离估计精度,而无需额外的组件。杂交PSO-ANN算法分别实现了室外和室内环境的平均绝对误差0.022和0.208米。在室内环境中还研究了锚点节点密度对本地化精度的影响。

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