基于压缩感知的不完全记录功率谱估计方法

Liam A. Comerford, M. Beer, I. Kougioumtzoglou
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引用次数: 17

摘要

提出了一种基于压缩感知的随机过程功率谱估计方法和自适应基重加权方法。特别是,随机过程记录的采样间隙问题,发生的原因,如传感器故障,数据损坏,和带宽限制,被解决。具体而言,由于风、海浪和地震等随机过程记录在频域上可以用相对稀疏性表示,因此可以采用CS框架进行功率谱估计。为了达到这个目的,通常假定随机过程实现的集合是可用的。基于这一属性,引入了自适应数据挖掘过程来修改谐波基系数,大大改进了标准的CS重构。该方法在平稳和非平稳过程中表现良好,即使丢失数据高达75%。几个数值例子证明了该方法在处理有噪声的间隙信号时的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressive sensing based power spectrum estimation from incomplete records by utilizing an adaptive basis
A compressive sensing (CS) based approach is developed in conjunction with an adaptive basis reweighting procedure for stochastic process power spectrum estimation. In particular, the problem of sampling gaps in stochastic process records, occurring for reasons such as sensor failures, data corruption, and bandwidth limitations, is addressed. Specifically, due to the fact that many stochastic process records such as wind, sea wave and earthquake excitations can be represented with relative sparsity in the frequency domain, a CS framework can be applied for power spectrum estimation. To this aim, an ensemble of stochastic process realizations is often assumed to be available. Relying on this attribute an adaptive data mining procedure is introduced to modify harmonic basis coefficients, vastly improving on standard CS reconstructions. The procedure is shown to perform well with stationary and non-stationary processes even with up to 75% missing data. Several numerical examples demonstrate the effectiveness of the approach when applied to noisy, gappy signals.
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