Incremental collaborative trajectory estimation using WSN based on multifrontal QR factorization

Daniel I. M. Quinones, C. Margi
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Abstract

Wireless Sensor Networks (WSN) are used for a variety of applications, including the target's trajectory estimation. Most proposed solutions are based on sequential estimation. However, in this paper we present a new solution to the trajectory estimation problem using the batch estimation approach. In our solution, we model the problem as a system of equations AX = b, with matrix A being sparse and vector X being the trajectory. Next, through multifrontal QR factorization, factorization A = QR is distributed between the sensors, which calculate it collaboratively and incrementally. Simulation results show that our solution has the same performance as the centralized estimator. Also, we demonstrate its implementation viability by showing that the processing and memory requirements are compatible to generic motes characteristics.
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基于多正面QR分解的WSN增量协同轨迹估计
无线传感器网络(WSN)用于各种应用,包括目标的轨迹估计。大多数提出的解决方案都是基于顺序估计的。然而,在本文中,我们提出了一种利用批估计方法解决轨迹估计问题的新方法。在我们的解决方案中,我们将问题建模为方程组AX = b,矩阵a是稀疏的,向量X是轨迹。其次,通过多正面QR分解,在传感器之间分配分解A = QR,并进行协同增量计算。仿真结果表明,该方法具有与集中式估计器相同的性能。此外,我们通过显示处理和内存需求与通用motes特性兼容来证明其实现可行性。
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