Distributed Kalman filtering with reduced transmission rate

Katharina Dormann, B. Noack, U. Hanebeck
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引用次数: 1

Abstract

The centralized Kalman filter can be implemented in such a way that the required calculations can be distributed over multiple nodes in a network, each of which processes only the locally acquired sensor data. The main downside of this implementation is that it requires each distributed sensor node to communicate with the fusion center in every time step so as to compute the optimal state estimate. In this paper, two distributed Kalman filtering algorithms are proposed to overcome these limitations. The first algorithm merely requires communication of each local sensor node with the fusion center in every other time step. The second algorithm even allows for a lower communicate rate. Both algorithms apply event-based communication to compute consistent estimates and to reduce the estimation error for a fixed communication rate. Simulations demonstrate that both algorithms perform better in terms of the mean squared estimation error than the centralized Kalman filter.
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降低传输速率的分布式卡尔曼滤波
集中式卡尔曼滤波可以这样实现:所需的计算可以分布在网络中的多个节点上,每个节点只处理本地获取的传感器数据。这种实现的主要缺点是需要每个分布式传感器节点在每个时间步与融合中心通信,以计算最优状态估计。本文提出了两种分布式卡尔曼滤波算法来克服这些局限性。第一种算法只要求每个局部传感器节点在每隔一个时间步与融合中心通信。第二种算法甚至允许更低的通信速率。这两种算法都应用基于事件的通信来计算一致的估计,并减少固定通信速率下的估计误差。仿真结果表明,两种算法在均方估计误差方面都优于集中式卡尔曼滤波。
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