New approaches for distributed sensor networks consensus in the presence of communication time delay

N. Sadeghzadeh, A. Afshar
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引用次数: 5

Abstract

This paper introduces new methods for sensor fusion in homogenous sensor networks in the presence of the communication time delay. It allows the sensor nodes to solve consensus problems despite the network induced delay. It is shown that such approaches guarantee tracking of each consensus filter output to the original value of the measured signal in both regular and non-regular network graph topology. In the non-regular case, there is a sufficient condition to prove the convergence. In the networks with communication time delay, consensus problem is solved by considering time delay as a constant as well as using the idea of the variable sampling period in order for time delay compensation. In the second case, each sensor sampling period is variable and it is taken as maximum predicted time delay of the all channels in the network at each sampling period. In this way, an MLP neural network is used for time delay prediction and a majority consensus filter is introduced for approximating maximum predicted time delay in the network. Simulation results are provided that demonstrate the effectiveness of these methods for distributed sensor fusion and solving consensus problem in the presence of the time delay.
存在通信时延的分布式传感器网络共识新方法
本文介绍了存在通信时延的同质传感器网络中传感器融合的新方法。它允许传感器节点在网络导致延迟的情况下解决共识问题。结果表明,无论在规则和非规则网络图拓扑中,这种方法都能保证每个一致性滤波器输出都能跟踪到测量信号的原始值。在非正则情况下,存在证明收敛性的充分条件。在具有通信时延的网络中,将时延视为常数,并采用变采样周期的思想进行时延补偿,从而解决了共识问题。在第二种情况下,每个传感器采样周期是可变的,取网络中所有信道在每个采样周期的最大预测时延。该方法采用MLP神经网络进行时延预测,并引入多数共识滤波器来逼近网络的最大预测时延。仿真结果证明了这些方法在分布式传感器融合和解决存在时间延迟的一致性问题方面的有效性。
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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