序列预滤波辅助无线传感器网络定位协同方案

Wei Wei, Liu Zhang
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引用次数: 0

摘要

在无线传感器网络(WSNs)的应用中,定位感兴趣的目标是非常重要的。然而,强烈的测量噪声会污染每个传感器节点的观测值,可能会影响定位性能。广泛研究的适应性和合作方案通过与社区的可靠合作和适应策略来对抗噪音。然而,他们低估了物体运动的平滑相关性,从而留下了改进的空间。在本文中,我们主要通过在每个节点上预过滤其污染观测值来改进现有的合作方案。通过利用目标移动度的平滑相关性,我们设计了一个序列预滤波器,它能够使用先前估计的信息作为先验来克服强烈的噪声。因此,它有助于在每个节点上获得较小的噪声观测值,从而提高合作方案的定位精度。数值仿真结果表明,所提出的顺序预滤波方法确实可以更好地实现协同方案,并获得更理想的定位性能。
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Sequential pre-filter assisted cooperative scheme for localization in wireless sensor networks
In the applications of wireless sensor networks (WSNs), it is important to locate an object of interest. However, the intensive measurement noise that contaminates the observations from each sensor node, may impair the localization performance. The widely studied adaptive and cooperative schemes combat the noise via reliable cooperation and adaption strategies with the neighborhoods. However, they underestimate the smooth correlations of the object’s movements, thereby remaining space for improvement. In this paper, we focus on improving the existing cooperative schemes by prefiltering its contaminated observations on each node. By exploiting the smooth correlations of the object’s mobility, we design a sequential pre-filter, which is capable of using the previously estimated information as a priori to overcome the intensive noise. As such, it helps to derive a less-noisy observation on each node, and therefore improves the localization accuracy of the cooperative schemes. Numerical simulations demonstrate the effect of the proposed sequential pre-filter, which can indeed better the cooperative schemes and gain a more promising localization performance.
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