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A subspace method for the blind extraction of a cyclostationary source: Application to rolling element bearing diagnostics

机译:循环平稳源盲提取的子空间方法:在滚动轴承诊断中的应用

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摘要

The need for blindly separating mixtures of signals arises in many signal processing applications. A class of solutions to this problem was recently proposed by the so-called blind source separation (BSS) techniques which rely on the sole knowledge of the number of independent sources present in the mixture. This paper deals with the case where the number of sources is unknown and statistical independence may not apply, but where there is only one signal of interest (SOI) to be separated, which is cyclostationary. It proposes a blind extraction method using a subspace decomposition of the observations via their cyclic statistics. This method is first developed for instantaneous mixtures and is then extended to the convolutive case in the frequency-domain where it does not suffer from the permutation problem as does classical BSS. Experiments on industrial data are finally performed and illustrate the high performance of the proposed method.
机译:在许多信号处理应用中,需要盲目分离信号混合。最近通过所谓的盲源分离(BSS)技术提出了针对该问题的一类解决方案,该技术依赖于混合物中存在的独立源的数量的唯一知识。本文处理的情况是,光源数量未知且统计独立性可能不适用,但是只有一个感兴趣的信号(SOI)被分离,它是循环平稳的。提出了一种盲观测提取方法,该方法通过观测值的循环统计对观测值进行子空间分解。此方法首先针对瞬时混合物开发,然后扩展到频域中的卷积情况,在这种情况下,它不会像传统的BSS一样受到排列问题的困扰。最后进行了工业数据实验,并说明了该方法的高性能。

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