Optimal Fault-Tolerant Data Fusion in Sensor Networks: Fundamental Limits and Efficient Algorithms

Marian Temprana Alonso, Farhad Shirani, S. Iyengar
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Abstract

Distributed estimation in the context of sensor networks is considered, where distributed agents are given a set of sensor measurements, and are tasked with estimating a target variable. A subset of sensors are assumed to be faulty. The objective is to minimize i) the mean squared estimation error at each node (accuracy objective), and ii) the mean squared distance between the estimates at each pair of nodes (consensus objective). It is shown that there is an inherent tradeoff between the former and latter objectives. Assuming a general stochastic model, the sensor fusion algorithm optimizing this tradeoff is characterized through a computable optimization problem, and a Cramér-Rao type lower bound for the achievable accuracy-consensus loss is obtained. Finding the optimal sensor fusion algorithm is computationally complex. To address this, a general class of low-complexity Brooks-Iyengar Algorithms are introduced, and their performance, in terms of accuracy and consensus objectives, is compared to that of optimal linear estimators through case study simulations of various scenarios.
传感器网络中最优容错数据融合:基本限制和有效算法
考虑了传感器网络环境中的分布式估计,其中分布式代理被赋予一组传感器测量值,并被赋予估计目标变量的任务。假定一部分传感器有故障。目标是最小化i)每个节点的均方估计误差(精度目标),以及ii)每对节点的估计之间的均方距离(共识目标)。结果表明,在前一个目标和后一个目标之间存在着内在的权衡。在一般随机模型下,利用可计算优化问题对优化这一权衡的传感器融合算法进行了表征,得到了可实现精度一致性损失的cram rs - rao型下界。寻找最优的传感器融合算法计算复杂。为了解决这个问题,介绍了一类一般的低复杂性布鲁克斯-艾扬格算法,并通过各种场景的案例研究模拟,将其在准确性和共识目标方面的性能与最优线性估计器进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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