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Digital radio electronic systems: estimation of parameters of model of an autoregression and sliding mean on experimental data

机译:数字无线电电子系统:根据实验数据估计自回归模型的参数和滑动平均值

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摘要

Using the methods of the Markov theory of identification and adaptive estimation for an estimation of parameters of model of an autoregression and sliding mean obtain expression for a final a posteriori probability density of valued parameters on implementation of stochastic process which was written during of experiment. The main singularity of applying of the indicated methods is the representation of processes reshaping sliding mean, as state vector circumscribed by a linear stochastic difference equation. The conditional estimations of this state vector note as the broken filter so, that they depend only on observable process and unknowns of parameters of model. For estimations of parameters by criterion of a maxima of a posteriori distribution (simple loss function) on the basis of an indispensable condition of an extremum the equations are injected, which one are rather simply decided by iteration methods.
机译:利用识别和自适应估计的马尔可夫理论的方法对自回归模型和滑动均值模型的参数进行估计,得出在实验过程中实现的随机过程的最终最终值的后验概率密度表达式。应用所示方法的主要奇异之处在于重塑滑动均值的过程的表示形式,即由线性随机差分方程外接的状态向量。该状态向量的条件估计记为破损过滤器,因此它们仅取决于可观察的过程和模型参数的未知数。为了在极值的必要条件的基础上通过后验分布的最大值(简单损失函数)的准则来估计参数,注入了方程,该方程相当简单地由迭代方法确定。

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