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Adaptive Period Estimation For Sparse Point Processes

机译:稀疏点过程的自适应周期估计

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In this paper, adaptive period estimation for time varying sparse point processes is addressed. Sparsity results from signal loss, which reduces the number of samples available for period estimation. We discuss bounds and minima of the mean square error of fundamental period estimation suitable in these situations. A ruleset is derived to determine the optimum memory length which achieves the minimum estimation error. The used low complex adaptive algorithm operates with variable memory length N to fit optimally for the recorded time varying process. The algorithm is of complexity 3O(N), in addition to that the overall complexity is reduced to 3O(1), if a recursive implementation is applied. This algorithm is the optimal implementation candidate to keep synchronicity in industrial wireless sensor networks operating in harsh and time varying environments.
机译:在本文中,解决了时变稀疏点过程的自适应周期估计。稀疏性是由信号损失引起的,信号损失减少了可用于周期估计的样本数量。我们讨论了适用于这些情况的基本周期估计的均方误差的范围和最小值。导出规则集以确定实现最小估计误差的最佳存储长度。使用的低复杂度自适应算法以可变的存储长度N进行操作,以最适合记录的时变过程。该算法的复杂度为3O(N),此外,如果应用了递归实现,则总的复杂度将降低为3O(1)。该算法是在恶劣和时变环境中运行的工业无线传感器网络中保持同步性的最佳实现方案。

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