Turbulence spectrum: Difference between revisions
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Spectra in the frequency domain are converted into the spatial domain via [[Taylor's Frozen Turbulence]] hypothesis. | |||
Taylor's Frozen Turbulence | |||
Convert time derivatives to spatial gradients along the direction of profiling using | Convert time derivatives to spatial gradients along the direction of profiling using | ||
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and | and | ||
<math> \Psi(k) = U_P \Psi(f) </math> . | <math> \Psi(k) = U_P \Psi(f) </math> . | ||
If a sampled quantity, say <math>\zeta</math>, has a spectrum, <math>\Psi(k)</math>, then this spectrum provides the wavenumber distribution of the variance of <math>\zeta</math>. | |||
For example, | |||
<math>\overline{\zeta^2}=\int_0^{k_N} \Psi(k)\, \mathrm{d}k </math> | |||
provides the total variance of <math>\zeta</math>, where <math>k_N = \frac{1}{2} f_s / U_P</math> is the Nyquist wavenumber and <math>f_s</math> is the sampling rate <math>\zeta</math>. | |||
The variance located in the wavenumber band of <math>k_1</math> to <math>k_2</math> is | |||
<math>\int_{k_1}^{k_2} \Psi(k)\, \mathrm{d}k \ \ .</math> | |||
Thus, a spectrum has units of variance per wavenumber. | |||
Latest revision as of 19:35, 1 December 2021
| Short definition of Turbulence spectrum |
|---|
| Turbulence energy cascade and its expected spectral representation |
This is the common definition for Turbulence spectrum, but other definitions maybe discussed within the wiki.
{{#default_form:DefineConcept}} {{#arraymap:|,|x||}}
Spectra in the frequency domain are converted into the spatial domain via Taylor's Frozen Turbulence hypothesis. Convert time derivatives to spatial gradients along the direction of profiling using
<math> \frac{\partial}{\partial x} = \frac{1}{U_P} \frac{\partial}{\partial t} </math> .
Convert frequency spectra into wavenumber spectra using
<math> k = f/U_P </math> and <math> \Psi(k) = U_P \Psi(f) </math> .
If a sampled quantity, say <math>\zeta</math>, has a spectrum, <math>\Psi(k)</math>, then this spectrum provides the wavenumber distribution of the variance of <math>\zeta</math>. For example,
<math>\overline{\zeta^2}=\int_0^{k_N} \Psi(k)\, \mathrm{d}k </math>
provides the total variance of <math>\zeta</math>, where <math>k_N = \frac{1}{2} f_s / U_P</math> is the Nyquist wavenumber and <math>f_s</math> is the sampling rate <math>\zeta</math>. The variance located in the wavenumber band of <math>k_1</math> to <math>k_2</math> is
<math>\int_{k_1}^{k_2} \Psi(k)\, \mathrm{d}k \ \ .</math>
Thus, a spectrum has units of variance per wavenumber.
- Missing the y-axi variables
- Lowest frequency and wavenumber resolvable
