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Lossless Linear Transformation of Sensor Data for Distributed Estimation Fusion

机译:用于分布式估计融合的传感器数据的无损线性变换

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摘要

In distributed estimation fusion, processed data from each sensor is sent to the fusion center. By taking linear transformation of the raw measurements of each sensor, two optimal distributed fusion algorithms are proposed in this paper. Compared with existing fusion algorithms, they have three nice properties. First, they are optimal in the sense that they are equivalent to the optimal centralized fusion. Second, their communication requirements from each sensor to the fusion center are equal to or less than those of the centralized and most existing distributed fusion algorithms. Third, they do not need the inverses of estimation error covariance matrices, which are assumed to exist in most existing algorithms but can not be guaranteed to exist. So the proposed algorithms can be applied in more cases. Pros and cons of these two new algorithms are analyzed. A possible way to reduce the computational complexity of the new algorithms, an extension to the case of a singular covariance matrix of measurement noise, and an extension to the reduced-rate communication case for some simple systems are also discussed.
机译:在分布式估计融合中,来自每个传感器的已处理数据被发送到融合中心。通过对每个传感器的原始测量值进行线性变换,提出了两种最优的分布式融合算法。与现有的融合算法相比,它们具有三个不错的特性。首先,它们在等效于最佳集中式融合的意义上是最优的。其次,它们从每个传感器到融合中心的通信需求等于或小于集中式和大多数现有的分布式融合算法的通信需求。第三,它们不需要估计误差协方差矩阵的逆,假设大多数现有算法中都存在逆估计矩阵,但不能保证它们存在。因此,所提出的算法可以在更多情况下应用。分析了这两种新算法的优缺点。还讨论了减少新算法的计算复杂性的可能方法,扩展了测量噪声的奇异方差矩阵的情况以及扩展了某些简单系统的降低速率通信的情况。

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