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Fully Decentralized Estimation Using Square-Root Decompositions

机译:使用平方根分解的完全分散估计

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Networks consisting of several spatially distributed sensor nodes are useful in many applications. While distributed processing of information can be more robust and flexible than centralized filtering, it requires careful consideration of dependencies between local state estimates. This paper proposes an algorithm to keep track of dependencies in decentralized systems where no dedicated fusion center is present. Specifically, it addresses double counting of measurement information due to intermediate fusion results as well as correlations due to common process noise and common prior information. To limit the necessary amount of data, this paper introduces a method to bound correlations partially, leading to a more conservative fusion result while reducing the necessary amount of data. Simulation studies compare the performance and convergence rate of the proposed algorithm to other state-of-the-art methods.
机译:由多个空间分布的传感器节点组成的网络在许多应用中很有用。尽管信息的分布式处理比集中式过滤更为健壮和灵活,但它需要仔细考虑局部状态估计之间的依赖关系。本文提出了一种算法来跟踪没有专用融合中心的分散系统中的依赖关系。具体而言,它解决了由于中间融合结果而导致的测量信息的重复计数以及由于常见的过程噪声和常见的先验信息导致的相关性。为了限制必要的数据量,本文介绍了一种对相关性进行部分绑定的方法,从而在减少必要数据量的同时,获得了更为保守的融合结果。仿真研究将所提算法的性能和收敛速度与其他最新方法进行了比较。

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