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Distributed Kalman filtering for spatially-invariant diffusion processes: the effect of noise on communication requirements

机译:分布式卡尔曼滤波,用于空间不变扩散过程:噪声对通信要求的影响

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This work analyzes the communication requirements of Kalman filters for spatially-invariant diffusion processes with spatially-distributed sensing. In this setting Kalman filters exhibit an inherent degree of spatial localization or decentralization. We address the fundamental question of whether the statistical properties of process and measurement disturbances, namely variance and spatial-autocorrelations, can further enhance its inherent spatial localization. We show that when disturbances are spatially and temporally uncorrelated, the spatial localization of the filter depends on the ratio of model to measurement error. Building upon this result, we study exponentially-decaying spatially-autocorrelated process and measurement disturbances. We show that certain level of spatial-autocorrelation in the measurement noise reduces the communication burden of the Kalman filter: indeed, the filter is completely decentralized when a matching condition is satisfied. We also show that spatial autocorrelation of the process disturbance has no benefits in terms of communications, as the level of centralization of the filter increases with the autocorrelation length.
机译:这项工作分析了具有空间分布式传感的空间不变扩散过程的卡尔曼滤波器的通信要求。在此设置中,卡尔曼滤波器表现出固有的空间定位或分散程度。我们解决了过程和测量干扰的统计性质,即差异和空间自相关的根本问题,可以进一步提高其固有的空间本地化。我们表明,当干扰在空间和时间上不相关时,滤波器的空间定位取决于模型与测量误差的比率。在此结果上建立,我们研究指数腐烂的空间自相关工艺和测量干扰。我们发现,在测量空间自相关的一定程度的噪音降低了卡尔曼滤波器的通信负担:的确,当匹配条件满足过滤器完全分散。我们还表明,在通信方面,过程干扰的空间自相关,因为过滤器的集中水平随着自相关长度而增加。

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