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Distributed Kalman Filter with Fast Consensus for Wireless Sensor Networks

机译:无线传感器网络具有快速一致性的分布式卡尔曼滤波器

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With the revolution of wireless sensor networks and the advances on microchip technologies the potential of distributed interconnected systems have exploded. Yet, even with great sensing capability and great communication throughput in the wireless links, we encounter fundamental problems: Communication Congestion and Scalability. The scalability issue and communication congestion are closely related in the application of distributed estimation algorithms. The more sensors we add to our system the more communication we will require. In general, in order to share the information gathered by all the sensors, we also get a higher likelihood of running into critical network congestion. Moreover, the scalability problem is not only related to communication issues but also to computation problems, as with higher dimensional measurement vectors it also comes a higher computational demand for the estimation algorithms. Distributed Kalman Filter (DKF) is one of the most fundamental distributed estimation algorithms. Most of the proposed DKF in the literature rely on consensus niters algorithm. The convergence rate of such distributed consensus algorithms typically depends on the network topology and the weights given to the edges between neighboring sensors. This paper proposes a DKF with fast consensus. The idea is to apply a polynomial filter on the network matrix in order to increase the convergence by minimizing its second largest eigenvalue of the polynomial. Fast convergence can contribute to significant energy saving. Moreover we redesigned the DKF to reduce its computational complexity and to reduce the communication traffic between the sensor nodes. Thus, the experimental results show that the TelosB mote can run DKF with up to seven neighbors for real application.
机译:随着无线传感器网络的革命和微芯片技术的发展,分布式互连系统的潜力得到了爆发。然而,即使在无线链路中具有出色的感知能力和出色的通信吞吐量,我们仍会遇到基本问题:通信拥塞和可伸缩性。可伸缩性问题和通信拥塞在分布式估计算法的应用中密切相关。我们向系统中添加的传感器越多,我们将需要越多的通信。通常,为了共享所有传感器收集的信息,我们还更有可能遇到严重的网络拥塞。此外,可伸缩性问题不仅与通信问题有关,而且与计算问题有关,因为对于更高维度的测量向量,估计算法的计算需求也更高。分布式卡尔曼滤波器(DKF)是最基本的分布式估计算法之一。文献中提出的大多数DKF都依赖于共识niters算法。这种分布式共识算法的收敛速度通常取决于网络拓扑和相邻传感器之间边缘的权重。本文提出了一种具有快速共识的DKF。想法是在网络矩阵上应用多项式滤波器,以通过最小化多项式的第二大特征值来提高收敛性。快速收敛可以大大节省能源。此外,我们重新设计了DKF,以降低其计算复杂度并减少传感器节点之间的通信流量。因此,实验结果表明,TelosB节点可以与最多七个邻居一起运行DKF,以进行实际应用。

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