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Mobile node localization method based on KF-LSSVR algorithm

机译:基于KF-LSSVR算法的移动节点定位方法

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Abstract As the mobile node localization algorithm in three-dimensional environment cannot meet the demand of actual application, a hybrid mobile node localization algorithm for a wireless sensor network (WSN) in three-dimensional environment is proposed in this paper, which is based on the least squares support vector regression (LSSVR) and Kalman filter (KF). The proposed algorithm firstly constructs the LSSVR localization model by sampling measurement area and training sample sets. Then, the KF model is used to iterate and correct the measured distance in order to obtain the distance between the unknown node and each anchor node. Finally, the LSSVR localization model is employed to obtain the estimated location of the unknown node. The experiments were conducted and the experimental results were analyzed according to ranging errors, anchor node density, communication radius, moving speed, and node localization errors. Simulation results show that the proposed algorithm using a joint KF and LSSVR algorithm is superior to the KF algorithm and the LSSVR algorithm, and it can reduce the localization errors and improve the localization accuracy.
机译:摘要由于三维环境中的移动节点定位算法不能满足实际应用的需求,本文提出了三维环境中的无线传感器网络(WSN)的混合移动节点定位算法,这是基于最小二乘支持向量回归(LSSVR)和卡尔曼滤波器(KF)。所提出的算法首先通过采样测量区域和训练样本集来构造LSSVR定位模型。然后,KF模型用于迭代和校正测量距离以获得未知节点和每个锚节点之间的距离。最后,采用LSSVR定位模型来获得未知节点的估计位置。进行实验,并根据测距误差,锚点密度,通信半径,移动速度和节点定位误差进行实验结果。仿真结果表明,使用关节KF和LSSVR算法的提出算法优于KF算法和LSSVR算法,可以降低本地化误差并提高本地化精度。

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