Detecting finite bandwidth periodic signals in stationary noise using the signal coherence spectrum

نویسندگان

  • Melvin J. Hinich
  • Phillip Wild
چکیده

All signals that appear to be periodic have some sort of variability from period to period regardless of how stable they appear to be in a data plot. A true sinusoidal time series is a deterministic function of time that never changes and thus has zero bandwidth around the sinusoid’s frequency. A zero bandwidth is impossible in nature since all signals have some intrinsic variability over time. Deterministic sinusoids are used to model cycles as a mathematical convenience. Hinich (2000) introduced a parametric statistical model, called the Randomly Modulated Periodicity (RMP) that allows one to capture the intrinsic variability of a cycle. As with a deterministic periodic signal the RMP can have a number of harmonics. The likelihood ratio test for this model when the amplitudes and phases are known is given in Hinich (Hinich, 2003). A method for detecting a RMP whose amplitudes and phases are unknown random process plus a stationary noise process is addressed in this paper. The only assumption on the additive noise is that it has finite dependence and finite moments. Using simulations based on a simple RMP model we show a case where the new method can detect the signal when the signal is not detectable in a standard waterfall spectrogram display.

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عنوان ژورنال:
  • Signal Processing

دوره 85  شماره 

صفحات  -

تاریخ انتشار 2005