Spectral Kurtosis Theory-A Review through Simulations
Keywords:
spectral kurtosis, stft, random amplitude sinusoid, chirp, harmonic sinusoid, higher order statistics, wold-cramer2019;s decomposition, mixing processes
Abstract
Kurtosis of a time signal has been a popular tool for detecting nongaussianity Recently kurtosis as a function frequency defined in spectral domain has been successfully used in the fault detection of induction motors machine bearings A link between the nongaussianity and nonstationaity has been established through Wold-Cramer s decomposition of a nonstationary signal and the properties of the so-designated conditional nonstationary CNS process have been analytically obtained As the nonstationary signals are abundantly found in music the spectral kurtosis could find applications in audio processing e g music instrument classification and music-speech classification In this paper the theory of spectral kurtosis is briefly reviewed from the first principles and the spectral kurtosis properties of some popular stationary signals nonstationary signals and mixed processes are analytically obtained Extensive Monte Carlo simulations are carried out to support the theory
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Published
2015-03-15
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