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Experimental Evaluation of a Distributed Kalman Filter Algorithm

机译:分布式卡尔曼滤波算法的实验评价

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This paper evaluates the performance of a distributed Kalman filter applied to an ultrasound based positioning application with seven sensor nodes. By distributed we mean that all nodes in the network desires an estimate of the full state of the observed system and there is no centralized computation center after deployment. Communication only takes place between neighbors and only once each sampling interval. The problem is solved by communicating estimates between neighbors and then forming a weighted average as the new estimate. The weights are optimized to yield a small estimation error covariance in stationarity. The minimization can be done off line thus allowing only estimates to be communicated. In the experimental setup the distributed solution performs almost as good as a centralized solution. The proposed algorithm also proved very robust against packet loss.
机译:本文评估了应用于超声的基于超声定位应用的分布式卡尔曼滤波器的性能,具有七个传感器节点。通过分布,我们的意思是网络中的所有节点都希望估计观察到的系统的完整状态,并且部署后没有集中计算中心。通信仅在邻居之间进行,只有一次每个采样间隔。通过在邻居之间传送估计,然后将加权平均值作为新估计来解决问题。优化权重,以产生实质性的小估计误差协方差。可以关闭线路最小化,从而仅允许传送估计。在实验设置中,分布式解决方案几乎与集中式解决方案一样好。该算法也证明了对数据包丢失非常稳健。

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