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Optimal sensor data quantization for best linear unbiased estimation fusion

机译:最佳传感器数据量化以获得最佳线性无偏估计融合

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Distributed estimation is useful for surveillance using sensor networks. Due to the capacity constraints at the communication links, the data from the sensors are transmitted at a rate insufficient to convey all the observations reliably. Therefore, the observations are vector quantized and the estimation is done using the compressed measurements. In this paper, under the best linear unbiased estimation (BLUE) fusion rule, we build the optimal sensor quantization scheme for state estimation in a static case, which uses only bivariate probability distributions of the state and sensor observations. For state estimation in a dynamic system, it is shown that, under the communication constraints, the state update reduces to quantizing and estimating the current state conditioned on all of the transmitted quantized measurements. To have a recursive form for state estimation update in a dynamic system, we assume the current quantized measurement is orthogonal to all past ones. For a linear system with additive white Gaussian noise, a close form of recursion for state estimation update is proposed.
机译:分布式估计对于使用传感器网络进行监视非常有用。由于通信链路上的容量限制,来自传感器的数据的传输速率不足以可靠地传达所有观察结果。因此,对观测值进行矢量量化,并使用压缩后的测量值进行估算。在本文中,根据最佳线性无偏估计(BLUE)融合规则,我们建立了用于静态情况下状态估计的最佳传感器量化方案,该方案仅使用状态和传感器观测值的双变量概率分布。对于动态系统中的状态估计,表明在通信约束下,状态更新减少为量化和估计以所有传输的量化测量为条件的当前状态。为了在动态系统中具有递归形式的状态估计更新,我们假设当前的量化度量与所有过去的度量正交。对于具有加性高斯白噪声的线性系统,提出了一种近似的递归形式用于状态估计更新。

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