Robust Filtering of Sequences with Periodically Stationary Multiplicative Seasonal Increments

M. Luz, M. Moklyachuk
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引用次数: 1

Abstract

We consider stochastic sequences with periodically stationary generalized multiple increments of fractional order which combines cyclostationary, multi-seasonal, integrated and fractionally integrated patterns. We solve the filtering problem for linear functionals constructed from unobserved values of a stochastic sequence of this type based on observations of the sequence with a periodically stationary noise sequence. For sequences with known matrices of spectral densities, we obtain formulas for calculating values of the mean square errors and the spectral characteristics of the optimal filtering of the functionals. Formulas that determine the least favourable spectral densities and the minimax (robust) spectral characteristics of the optimal linear filtering of the functionals are proposed in the case where spectral densities of the sequence are not exactly known while some sets of admissible spectral densities are given.
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周期平稳乘性季节增量序列的鲁棒滤波
我们考虑周期平稳广义分数阶多增量随机序列,它结合了周期平稳、多季节、积分和分数积分模式。我们解决了由这种类型的随机序列的未观测值构造的线性泛函的滤波问题,该线性泛函基于周期性平稳噪声序列的序列观测值。对于已知谱密度矩阵的序列,我们得到了均方误差的计算公式和函数最优滤波的谱特性。在序列的谱密度不完全已知的情况下,给出了一些可接受谱密度集,提出了确定最不有利谱密度和最优线性滤波的最小(鲁棒)谱特性的公式。
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