Application of the Non-Hermitian Singular Spectrum Analysis to the Exponential Retrieval Problem

D. Nicolsky, G. Tipenko
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Abstract

We present a new approach to solve the exponential retrieval problem. We derive a stable technique, based on the singular value decomposition (SVD) of lag-covariance and crosscovariance matrices consisting of covariance coefficients computed for index translated copies of an initial time series. For these matrices a generalized eigenvalue problem is solved. The initial signal is mapped into the basis of the generalized eigenvectors and phase portraits are consequently analyzed. Pattern recognition techniques could be applied to distinguish phase portraits related to the exponentials and noise. Each frequency is evaluated by unwrapping phases of the corresponding portrait, detecting potential wrapping events and estimation of the phase slope. Efficiency of the proposed and existing methods is compared on the set of examples, including the white Gaussian and auto-regressive model noise.
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非厄米奇异谱分析在指数检索问题中的应用
提出了一种解决指数检索问题的新方法。我们推导了一种稳定的技术,基于由初始时间序列的索引翻译副本计算的协方差系数组成的滞后协方差和交叉协方差矩阵的奇异值分解(SVD)。对这些矩阵求解了一个广义特征值问题。将初始信号映射到广义特征向量的基础上,分析了相位图。模式识别技术可以用于识别与指数和噪声相关的相位肖像。每个频率的评估是通过展开相应肖像的相位,检测潜在的包裹事件和估计相位斜率。在包含高斯白噪声和自回归模型噪声的实例集上,比较了本文方法和现有方法的效率。
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