Compute the spectra: Difference between revisions
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To compute the spectrum of the turbulent velocity fluctuations, you need to: | To compute the spectrum of the turbulent velocity fluctuations, you need to: | ||
# Determine appropriate [[#fftlength|fft-length]] and spectral averaging for each data [[Segmenting datasets|segment]] | # Determine appropriate [[#fftlength|fft-length]] and [[#Spectral averaging techniques|spectral averaging]] for each data [[Segmenting datasets|segment]] | ||
# Compute the spectrum | # Compute the spectrum using standard techniques <ref name="EmoryThomson2nded">{{Cite journal | ||
|authors= Emery, W. J., and R. E. Thomson | |||
|journal_or_publisher= J. Fluid. Mech. | |||
|paper_or_booktitle= Data analysis methods in physical oceanography, 2nd ed | |||
|year= 2001 | |||
|doi=(ISBN)9780080477008 | |||
}}</ref> | |||
# Convert the spectrum from the time domain to the space domain using the mean speed past the sensor {{FontColor|fg=white|bg=red|text= only for steady flows, not required for surface wave analysis}} | # Convert the spectrum from the time domain to the space domain using the mean speed past the sensor {{FontColor|fg=white|bg=red|text= only for steady flows, not required for surface wave analysis}} | ||
# Compute degrees of freedom (dof) and confidence/significance levels of the final spectra. | # Compute degrees of freedom (dof) and confidence/significance levels of the final spectra. |
Revision as of 13:25, 11 July 2022
To compute the spectrum of the turbulent velocity fluctuations, you need to:
- Determine appropriate fft-length and spectral averaging for each data segment
- Compute the spectrum using standard techniques [1]
- Convert the spectrum from the time domain to the space domain using the mean speed past the sensor only for steady flows, not required for surface wave analysis
- Compute degrees of freedom (dof) and confidence/significance levels of the final spectra.
Spectral averaging techniques
The spectrum's lowest resolved frequency and final resolution are the inverses of the fft-length (unless the spectra are band-avg). Each segment is often subdivided into smaller fft-length long chunks, which are then windowed before estimating numerous spectra (FFT) that are block-averaged for increased statistical significance. Another averaging strategy is band-averaging spectra in the frequency domain, which allows the segment length to be the same as the fft-length. A combination of both strategies is also possible. The final strategy depends on whether you need increased statistical significance for correcting motion-contaminated spectra using methods based on squared coherency, and the lowest frequencies (wavenumbers) you want to resolve. The fft-length dictates the lowest frequencies resolved by the spectra, while the Nyquist frequency (half the sampling rate) dictates the largest frequency of the spectra. Whether these large frequencies are used to estimate [math]\displaystyle{ \varepsilon }[/math] depends on the measurement quality.
Remove redundant info from Segmenting datasets, and add references to figure summary page
References
- Section 5.6.7 in Emery & Thomson has a reference for band vs block averaging (2nd ed, p450).
- Confidence levels on p. 453 5.6.8
- Summary of spectral estimates on p.461
- ↑ Emery, W. J. and and R. E. Thomson. 2001. Data analysis methods in physical oceanography, 2nd ed. J. Fluid. Mech.. doi:(ISBN)9780080477008