Circulant singular spectrum analysis: A new automated procedure for signal extraction Articles uri icon

authors

  • BĂ“GALO, JUAN
  • PONCELA BLANCO, MARIA PILAR
  • SENRA DIAZ, EVA

publication date

  • February 2021

start page

  • 1

end page

  • 17

issue

  • 107824

volume

  • 179

International Standard Serial Number (ISSN)

  • 0165-1684

Electronic International Standard Serial Number (EISSN)

  • 1872-7557

abstract

  • Sometimes, it is of interest to single out the fluctuations associated to a given frequency. We propose a new variant of SSA, Circulant SSA (CiSSA), that allows to extract the signal associated to any frequency specified beforehand. This is a novelty when compared with other SSA procedures that need to identify ex-post the frequencies associated to the extracted signals. We prove that CiSSA is asymptotically equivalent to these alternative procedures although with the advantage of avoiding the need of the subsequent frequency identification. We check its good performance and compare it to alternative SSA methods through several simulations for linear and nonlinear time series. We also prove its validity in the nonstationary case. We apply CiSSA in two different fields to show how it works with real data and find that it behaves successfully in both applications. Finally, we compare the performance of CiSSA with other state of the art techniques used for nonlinear and nonstationary signals with amplitude and frequency varying in time.

subjects

  • Telecommunications

keywords

  • am-fm signals; circulant matrices; principal components; signal extraction; singular spectrum analysis; singular value decomposition