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Advances in hypothesizing distributed Kalman filtering

机译:假设分布式卡尔曼滤波的研究进展

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In this paper, linear distributed estimation is revisited on the basis of the hypothesizing distributed Kalman filter and equations for a flexible application of the algorithm are derived. We propose a new approximation for the mean-squared-error matrix and present techniques for automatically improving the hypothesis about the global measurement model. Utilizing these extensions, the precision of the filter is improved so that it asymptotically yields optimal results for time-invariant models. Pseudo-code for the implementation of the algorithm is provided and the lossless inclusion of out-of-sequence measurements is discussed. An evaluation demonstrates the effect of the new extensions and compares the results to state-of-the-art methods.
机译:本文在假设分布式卡尔曼滤波器的基础上,重新讨论了线性分布估计,并推导了该算法的灵活应用方程。我们提出了均方误差矩阵的新近似值,并提出了用于自动改善有关全局测量模型的假设的技术。利用这些扩展,可以提高滤波器的精度,从而渐近地为时不变模型产生最佳结果。提供了用于算法实现的伪代码,并讨论了无序测量的无损包含。评估显示了新扩展的效果,并将结果与​​最新方法进行了比较。

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