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1/f Noise decomposition in random telegraph signals using the wavelet transform

Author

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  • Principato, Fabio
  • Ferrante, Gaetano

Abstract

By using the continuous wavelet transform with Haar basis the second-order properties of the wavelet coefficients are derived for the random telegraph signal (RTS) and for the 1/f noise which is obtained by summation of many RTSs. The correlation structure of the Haar wavelet coefficients for these processes is found. For the wavelet spectrum of the 1/f noise some characteristics related to the distribution of the relaxation times of the RTS are derived. A statistical test based on the characterization of the time evolution of the scalogram is developed, which allows to detect non-stationarity in the times τ's which compose the 1/f process and to identify the time scales of the relaxation times where the non-stationarity is localized. The proposed method allows to distinguish noise signals with 1/f power spectral density generated by RTSs, and thus gives informations on the origin of this type of 1/f noise which cannot be obtained using the Fourier transform or other methods based on second-order statistical analysis. The reported treatment is applied to both simulated and experimental signals. The present analysis is based on the McWhorter [1/f Noise and germanium surface properties, in: R.H. Kingstone (Ed.), Semiconductor Surface Physics, University of Pennsylvania Press, Philadelphia, PA, 1957, pp. 207–228] model of low frequency electric noise, and the obtained results are expected to prove especially useful for semiconductor devices.

Suggested Citation

  • Principato, Fabio & Ferrante, Gaetano, 2007. "1/f Noise decomposition in random telegraph signals using the wavelet transform," Physica A: Statistical Mechanics and its Applications, Elsevier, vol. 380(C), pages 75-97.
  • Handle: RePEc:eee:phsmap:v:380:y:2007:i:c:p:75-97
    DOI: 10.1016/j.physa.2007.02.111
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