Robust distributed positioning algorithms for cooperative networks

M. R. Gholami, H. Wymeersch, E. Strom, M. Rydstrom
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引用次数: 16

Abstract

The problem of positioning targets based on distance estimates is studied for cooperative wireless sensor networks when there is limited a priori information about measurements noise. To solve this problem, two different methods of positioning are considered: statistical and geometrical. Based on a geometric interpretation, we show that the positioning problem can be rendered as finding the intersection of a number of convex sets. To find this intersection, we propose two different methods based on projection onto convex sets and outer-approximation. In the statistical approach, a partly novel two-step linear estimator is proposed which can be expressed in a closed-form solution. We also propose a new constrained non-linear least squares algorithm based on constraints derived in the outer-approximation approach. Simulation results show that the geometrical methods are more robust against non-line-of-sight measurements than the statistical approaches while in dense networks with line-of-sight measurements statistical approaches outperform geometrical methods.
协作网络的鲁棒分布式定位算法
研究了在测量噪声先验信息有限的情况下,基于距离估计的协同无线传感器网络目标定位问题。为了解决这个问题,考虑了两种不同的定位方法:统计和几何。基于几何解释,我们证明了定位问题可以被渲染为寻找若干凸集的交集。为了找到这个交集,我们提出了两种不同的基于凸集投影和外逼近的方法。在统计方法中,提出了一种部分新颖的两步线性估计量,该估计量可以用封闭解表示。我们还提出了一种新的约束非线性最小二乘算法,该算法基于外逼近法中导出的约束。仿真结果表明,几何方法对非视距测量的鲁棒性优于统计方法,而在具有视距测量的密集网络中,统计方法的鲁棒性优于几何方法。
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