Author_Institution :
Courant Inst. of Math. Sci., New York Univ., NY, USA
Abstract :
Complex demodulation of evolutionary spectra is formulated as a two-dimensional kernel smoother in the time-frequency domain. First, a tapered Fourier transform, yv(f, t), is calculated. Then the log-spectral estimate, is smoothed. As the characteristic widths of the kernel smoother increase, the bias from the temporal and frequency averaging increases while the variance decreases. The demodulation parameters, such as the order, length, and bandwidth of spectral taper and the kernel smoother, are determined by minimizing the expected error. For well-resolved evolutionary, spectra, the optimal taper length is a small fraction of the optimal kernel halfwidth. The optimal frequency bandwidth, w, for the spectral window scales as w2~λ/τ, where τ is the characteristic time and λF is the characteristic frequency scalelength. In contrast, the optimal halfwidths for the second stage kernel smoother scales as h~1/(τλF )1(p+2)/ where p is the order of the kernel smoother. The ratio of the optimal-frequency halfwidth to the optimal-time halfwidth is determined
Keywords :
demodulation; parameter estimation; spectral analysis; time-frequency analysis; complex demodulation; data-based kernel estimation; error minimisation; evolutionary spectra; log-spectral estimate; optimal frequency bandwidth; optimal kernel halfwidth; optimal taper length; optimal-time halfwidth; spectral analysis; spectral window; tapered Fourier transform; time-frequency domain; two-dimensional kernel smoother; Bandwidth; Demodulation; Frequency domain analysis; Frequency estimation; Hafnium; Kernel; Sampling methods; Signal processing; Stochastic processes; Time frequency analysis;