水声网络的鲁棒图定位

George Sklivanitis, P. Markopoulos, D. Pados, R. Diamant
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引用次数: 0

摘要

我们考虑了基于成对距离测量的水下网络节点集的鲁棒定位问题。定位在水下网络优化中起着关键作用,因为准确的节点定位可以实现位置感知调度、数据路由和收集的水下传感器数据的地理参考。最先进的图定位方法包括经典多维缩放(MDS)算法的变体,修改后可以处理未标记、缺失和有噪声的距离测量。在本文中,我们提出了一种基于不完整和异常值损坏的对向距离测量的图形定位方法。该方法首先利用中位数绝对偏差(MAD)进行离群值剔除。然后,MAD-MDS执行基于秩的距离矩阵补全,以估计缺失的测量值。最后一步,MAD-MDS将MDS应用于重构的距离矩阵,估计水下网络节点的坐标。稀疏连接网络图和全连接网络图的数值研究以及以往的海上实验数据都证实了MAD-MDS对稀疏连接网络图具有较高的坐标估计性能和较高的损坏方差。
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Robust Graph Localization for Underwater Acoustic Networks
We consider the problem of robust localization of a set of underwater network nodes, based on pairwise distance measurements. Localization plays a key role in underwater network optimization, as accurate node positioning enables location-aware scheduling, data routing, and geo-referencing of the collected underwater sensor data. State-of-the-art graph localization approaches include variations of the classical multidimensional scaling (MDS) algorithm, modified to handle unlabelled, missing, and noisy distance measurements. In this paper, we present MAD-MDS, a robust method for graph localization from incomplete and outlier corrupted pair-wise distance measurements. The proposed method first conducts outlier excision by means of Median Absolute Deviation (MAD). Then, MAD-MDS performs rank-based completion of the distance matrix, to estimate missing measurements. As a last step, MAD-MDS applies MDS to the reconstructed distance matrix, to estimate the coordinates of the underwater network nodes. Numerical studies on both sparsely and fully connected network graphs as well as on data from past sea experiments corroborate that MAD-MDS attains high coordinate-estimation performance for sparsely connected network graphs and high corruption variance.
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