传感器网络中相对测量的分布式估计

P. Barooah, J. Hespanha
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引用次数: 45

摘要

我们考虑从有噪声的“相对”测量中估计向量值变量的问题。测量模型可以用图来表示,图中的节点对应于待估计的变量,边对应于两个变量之间的差值的噪声测量。我们以一个特定变量的值作为参考,并考虑其余变量与参考之间差异的最优估计量。这种测量模型出现在传感器定位和时间同步等传感器网络问题中。提出了两种以分布式迭代方式计算最优估计的算法。第一种算法采用Jacobi方法迭代计算最优估计,假设所有通信都是完美的。第二种算法对临时通信故障具有鲁棒性,当故障率满足一定的温和条件时收敛到最优估计。尽管Jacobi方法收敛速度慢,但它还采用了初始化方案来提高精度
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Estimation from Relative Measurements in Sensor Networks
We consider the problem of estimating vector-valued variables from noisy "relative" measurements. The measurement model can be expressed in terms of a graph, whose nodes correspond to the variables being estimated and the edges to noisy measurements of the difference between the two variables. We take the value of one particular variable as a reference and consider the optimal estimator for the differences between the remaining variables and the reference. This type of measurement model appears in several sensor network problems, such as sensor localization and time synchronization. Two algorithms are proposed to compute the optimal estimate in a distributed, iterative manner. The first algorithm implements the Jacobi method to iteratively compute the optimal estimate, assuming all communication is perfect. The second algorithm is robust to temporary communication failures, and converges to the optimal estimate when certain mild conditions on the failure rate are satisfied. It also employs an initialization scheme to improve accuracy in spite of the slow convergence of the Jacobi method
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