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Max Consensus in Sensor Networks: Non-Linear Bounded Transmission and Additive Noise

机译:传感器网络的最大共识:非线性有界传输和加性噪声

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摘要

A distributed consensus algorithm for estimating the maximum value of the initial measurements in a sensor network with communication noise is proposed. In the absence of communication noise, max estimation can be done by updating the state value with the largest received measurements in every iteration at each sensor. In the presence of communication noise, however, the maximum estimate will incorrectly drift and the estimate at each sensor will diverge. As a result, a soft-max approximation together with a non-linear consensus algorithm is introduced herein. A design parameter controls the tradeoff between the soft-max error and convergence speed. An analysis of this tradeoff gives a guideline toward how to choose the design parameter for the max estimate. We also show that if some prior knowledge of the initial measurements is available, the consensus process can converge faster by using an optimal step size in the iterative algorithm. A shifted non-linear bounded transmit function is also introduced for faster convergence when sensor nodes have some prior knowledge of the initial measurements. Simulation results corroborating the theory are also provided.
机译:提出了一种分布式共识算法,用于估计具有通信噪声的传感器网络中初始测量的最大值。在没有通信噪声的情况下,可以通过在每个传感器的每次迭代中以接收到的最大测量值更新状态值来完成最大估计。但是,在存在通信噪声的情况下,最大估计值将错误地漂移,并且每个传感器的估计值将发散。结果,本文引入了soft-max近似以及非线性共识算法。设计参数控制软最大误差和收敛速度之间的权衡。对这种折衷的分析为如何选择最大估计的设计参数提供了指导。我们还表明,如果可以获得一些有关初始测量的先验知识,则在迭代算法中使用最佳步长可以使共识过程收敛得更快。当传感器节点对初始测量有一些先验知识时,还引入了移位的非线性有界发射函数以加快收敛速度​​。仿真结果也证实了这一理论。

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