6533b839fe1ef96bd12a6423
RESEARCH PRODUCT
Noise decomposition in random telegraph signals using the wavelet transform
Gaetano FerranteFabio Principatosubject
Statistics and ProbabilityDiscrete wavelet transformSpectral densityWavelet transformCondensed Matter PhysicsNoise (electronics)Haar waveletsymbols.namesakeWaveletFourier transformStatisticssymbolsStatistical physicsContinuous wavelet transformMathematicsdescription
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.
year | journal | country | edition | language |
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2007-07-01 | Physica A: Statistical Mechanics and its Applications |