首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >LSRR-LA: An Anisotropy-Tolerant Localization Algorithm Based on Least Square Regularized Regression for Multi-Hop Wireless Sensor Networks
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LSRR-LA: An Anisotropy-Tolerant Localization Algorithm Based on Least Square Regularized Regression for Multi-Hop Wireless Sensor Networks

机译:LSRR-LA:多跳无线传感器网络基于最小二乘正则回归的各向异性容忍定位算法

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摘要

As is well known, multi-hop range-free localization algorithms demonstrate pretty good performance in isotropic networks in which sensor nodes distribute evenly and densely. However, these algorithms are easily affected by network topology, causing a significant decrease in positioning accuracy. To improve the localization performance in anisotropic networks, this paper presents a multi-hop range-free localization algorithm based on Least Square Regularized Regression (LSRR). By building a mapping relationship between hop counts and real distances, we can regard the process of localization as a regularized regression. Firstly, the proximity information of the given network is measured. Then, a mapping model between the geographical distances and the hop distances is constructed by LSRR. Finally, each sensor node finds its own position via this mapping. The Average Localization Error (ALE) metric is used to evaluate the proposed method in our experiments, and results show that, compared with similar methods, our approach can effectively decrease the effect of anisotropy, thus considerably improving the positioning accuracy.
机译:众所周知,多跳无范围定位算法在各向同性网络中表现出相当好的性能,在各向同性网络中,传感器节点均匀且密集地分布。但是,这些算法很容易受到网络拓扑的影响,从而大大降低了定位精度。为了提高各向异性网络的定位性能,本文提出了一种基于最小二乘正则化回归(LSRR)的多跳无范围定位算法。通过在跳数和实际距离之间建立映射关系,我们可以将定位过程视为正则化回归。首先,测量给定网络的邻近度信息。然后,通过LSRR建立了地理距离与跳距之间的映射模型。最后,每个传感器节点通过此映射找到自己的位置。实验中使用平均定位误差(ALE)评估方法,结果表明,与类似方法相比,该方法可以有效降低各向异性的影响,从而显着提高定位精度。

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