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Wavelet-Variance-Based Estimation for Composite Stochastic Processes

机译:基于小波方差的复合随机过程估计

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摘要

This article presents a new estimation method for the parameters of a time series model. We consider here composite Gaussian processes that are the sum of independent Gaussian processes which, in turn, explain an important aspect of the time series, as is the case in engineering and natural sciences. The proposed estimation method offers an alternative to classical estimation based on the likelihood, that is straightforward to implement and often the only feasible estimation method with complex models. The estimator furnishes results as the optimization of a criterion based on a standardized distance between the sample wavelet variances (WV) estimates and the model-based WV. Indeed, the WV provides a decomposition of the variance process through different scales, so that they contain the information about different features of the stochastic model. We derive the asymptotic properties of the proposed estimator for inference and perform a simulation study to compare our estimator to the MLE and the LSE with different models. We also set sufficient conditions on composite models for our estimator to be consistent, that are easy to verify. We use the new estimator to estimate the stochastic error's parameters of the sum of three first order Gauss-Markov processes by means of a sample of over 800,000 issued from gyroscopes that compose inertial navigation systems. Supplementary materials for this article are available online.
机译:本文提出了一种新的时间序列模型参数估计方法。我们在这里考虑复合高斯过程,这些过程是独立的高斯过程的总和,而高斯过程又可以解释时间序列的一个重要方面,例如工程学和自然科学。所提出的估计方法为基于可能性的经典估计提供了一种替代方法,该方法易于实现并且通常是唯一可行的具有复杂模型的估计方法。估计器提供结果,作为基于样本小波方差(WV)估计值与基于模型的WV之间的标准距离的标准优化。实际上,WV通过不同的尺度对方差过程进行分解,因此它们包含有关随机模型不同特征的信息。我们导出拟议估计量的渐近性质以进行推理,并进行仿真研究,以将我们的估计量与不同模型的MLE和LSE进行比较。我们还在复合模型上设置了足够的条件,以使我们的估算器保持一致,并且易于验证。我们使用新的估算器,通过构成惯性导航系统的陀螺仪发出的800,000多个样本,估算三个一阶高斯-马尔可夫过程之和的随机误差参数。可在线获得本文的补充材料。

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