Segmenting datasets: Difference between revisions

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{{ADV processing
|instrument_type=ADV
|level=level 1 raw, level 2 segmented and quality controlled
}}
Once the raw observations have been [[Data processing of raw measurements|quality-controlled]], then you must split the time series into shorter segments by considering:
Once the raw observations have been [[Data processing of raw measurements|quality-controlled]], then you must split the time series into shorter segments by considering:
* [[Time and length scales of turbulence]]
* [[Time and length scales of turbulence]]
* [[Stationarity]] of the segment and [[Taylor's Frozen Turbulence| Taylor's frozen turbulence hypothesis]]
* [[Stationarity]] of the segment and [[Taylor's Frozen Turbulence| Taylor's frozen turbulence hypothesis]]
* Statistical significance of the resulting spectra
* Required statistical significance of the resulting spectra,  important mainly if you use [[Velocity decontamination by cospectral methods| cospectral or coherence-based]] methods to remove motion-induced contamination from the spectra
A good way to select the segment length is by inspecting the [[compute the spectra|computed spectra]] estimated from a  512-s long segment and an [[#fftlength|fft-length]] that is one-quarter of the segment length (128 s). Plotting these spectra against the theoretical spectral lines (see [[#specavg|Fig 2 and 3]]), enables identifying whether 1 decade of an inertial subrange is resolved with at least 8 spectral samples in this subrange.


[[File:Long timeseries.png|400px|thumb|Measured velocities at 4 Hz from an [[Acoustic-Doppler Velocimeters]] have been detrended using three different techniques. Empirical modal decomposition (EMD) <ref name="Wuetal_PNAS">{{Cite journal
== Considerations ==
|authors=Zhaohua Wu, Norden E. Huang, Steven R. Long, and Chung-Kang Peng
Measurements are typically collected in the following two ways:
|journal_or_publisher=PNAS
* continuously, or in such long [[Burst sampling|bursts]] that they can be considered continuous
|paper_or_booktitle=On the trend, detrending, and variability of nonlinear and nonstationary time series
* short [[Burst sampling|bursts]] that are typically  at most 2-3x the expected largest [[Time and length scales of turbulence|turbulence time scales]] (e.g., 10 min in ocean environments)
|year=2007
This segmenting step dictates the minimum [[Burst sampling|burst]] duration when setting up your equipment. The act of chopping a time series into smaller subsets, i.e., segments, is effectively a form of low-pass (box-car) filtering. The length of the [[Segmenting datasets|segment]] in time is usually a more important consideration than [[Detrending time series#detrend_ex|detrending the time series]] when estimating <math>\varepsilon</math> from the [[Velocity inertial subrange model|inertial subrange]] of the final spectra.
|doi=10.1073/pnas.0701020104
 
}}</ref>, linear trend, and a 2nd order low-pass Butterworth filter. A cut-off period of 10 min was targeted by both the filter and EMD]]
The shorter the segment, the higher the temporal resolution of the final <math>\varepsilon</math> time series, and the more likely the segment will be [[Stationarity|stationary]]. The segment must remain sufficiently long such that the lowest wavenumber (frequencies) of the [[Velocity inertial subrange model|inertial subrange]] are retained by the [[Compute the spectra|computed spectra]]. This is particularly important when measurement noise drowns the highest wavenumber (frequencies) of the [[Velocity inertial subrange model|inertial subrange]]. Thus, using too short segments may inadvertently render the spectra unusable for deriving  <math>\varepsilon</math> from the [[Velocity inertial subrange model|inertial subrange]] by virtue of no longer resolving this subrange as shown in  ([[#fftlength|Fig. 1]]).
 
[[File:ADV_fft_length.png|none|thumbnail|500px|Fig.1 Contours represent the log of the  <span id="fftlength">fft-length required to resolve the non-dimensional wavenumber [rad/m] indicated in each panel's title.  The inertial subrange ends at approximately <math>\hat{k}L_k\approx0.1</math> (or <math>kL_k\approx0.015</math> in cpm), and so panel (c) denotes the fft-length that resolves the end of the inertial subrange i.e., the beginning of the viscous subrange. The fft-length must be at least 10x longer (see b), preferably 50x (panel c) given the low number of spectral observations at the lowest frequencies (wavenumbers)]]
 
== Recommendations==
A good rule of thumb for tidally-influenced environments is 5 to 15 min segments, but this may be shorter in certain energetic and fast-moving flows ([[#fastepsi|Fig. 2]]) and longer in less energetic environments ([[#lowepsi|Fig.3]]). The final segment length is partly a function of the fft-length and the desired statistical significance (degrees of freedom) of the final [[Compute the spectra| computed spectra]]. If [[Velocity decontamination by cospectral methods| cospectral  methods]] will be employed to decontaminate the velocities, then the segment length should be 4-5x larger than the [[#fftlength|fft-length]] unless band-averaging is used to [[Compute the speectra#specavg| average the (co-)spectra]].


==Application to measured velocities==
===Minimum fft-length===
Measurements are typically collected in the following two ways:
[[#fftlength|Fig. 1]] provides a guide to the fft-length required for resolving different subrange as a function of the speed past the sensor, and <math>\varepsilon</math>. For instance, an fft-length of 4 s would resolve one decade of the inertial subrange at speeds past the sensor of 0.5 m/s and <math>\varepsilon\sim10^{-7}</math> W/kg. Longer segments would be required for slower flows or lower <math>\varepsilon</math>.  At <math>\varepsilon\approx10^{-9}</math> W/kg, one decade of the inertial subrange would be resolved with an fft-length longer than 10s provided the speed was faster than 0.5 m/s.  
* continuously, or in such long bursts that they can be considered continuous
 
* short bursts that are typically  at most 2-3x the expected largest [[Time and length scales of turbulence|turbulence time scales]] (e.g., 10 min in ocean environments)
Because the inertial subrange may be contaminated at the highest wavenumbers by instrument noise, we suggest using longer segments than the minimum shown in [[#fftlength|Fig. 1b]]. This strategy also enables having a larger number of spectral observations to [[Spectral fitting|fit]] over the inertial subrange given the spectral resolution is equal to the inverse of the fft-length.
This segmenting step dictates the minimum burst duration when setting up your equipment. The act of chopping a time series into smaller subsets, i.e., segments, is effectively a form of low-pass (box-car) filtering. How to [[Segmenting datasets|segment]] the time series is usually a more important consideration than [[Detrending time series|detrending the time series]] since estimating <math>\varepsilon</math> relies on resolving the [[Velocity inertial subrange|inertial subrange]] in the final spectra computed over each segment.  


<div><ul>
===Choosing segment-length===
<li style="display: inline-block; vertical-align: top;"> [[File:Short timeseries.png|thumb|none|350px|Zoom of the first 512 s segment of the measured velocities shown above including the same trends]]  
The final segment length may be larger than the fft-length depending if you use block-averaging for [[Compute the spectra#specavg|computing the spectra]]. The maximum segment length should be shorter than the largest [[Time and length scales of turbulence|turbulent time scales]]. To increase the statistical reliability of the spectral observations, which is absolutely necessary when applying any [[Velocity decontamination by cospectral methods|co-spectral techniques]] for motion decontamination of spectra, we recommend segment length that is  5x the [[#fftlength|fft-length]] unless band-averaging is employed during the [[Compute the spectra#specavg| spectral averaging]]. More details about the minimum degrees of freedom are given in the [[velocity decontamination by cospectral methods]] wikipage.
</li>
<li style="display: inline-block; vertical-align: top;"> [[File:Short_spectra.png|thumb|none|350px|Example velocity spectra of the short 512 s of records before and after different detrending techniques applied to the original 6h  time series. The impact of the detrending method can be seen at the lowest frequencies only]] </li>
{{FontColor|fg=white|bg=red|text= Are the peaks in the MAVS data vortex shedding from the rings. Check the motion sensors onboard?}}
</ul></div>


==Trade-offs when choosing segment length==
[[File:Segment_anisotropy.png|left|thumbnail|350px|Fig. 2: Example theoretical velocity spectra for different  <math>\varepsilon</math> with the empirical limit <math>\hat{k}L_k\sim0.1</math>  denoted by the diamonds (<math>\hat{k}</math> is in rad/m). The inertial subrange extends to smaller wavenumber <math>k</math> [cpm] as <math>\varepsilon</math> increases. The lowest frequency resolved by a spectra is the inverse of the fft-length used when computing the spectra. The colored lines are spectral observations from a dataset with <span id="fastepsi">fast speeds and large</span> <math>\varepsilon</math>. In this example, we used relatively short segments (128s) to estimate the spectra from fft-length of 32 s (2048 samples @ 64 Hz). The impact of [[Velocity inertial subrange model#anisotropy|turbulence anisotropy]] is also visible through the flattening of the spectra around 1 cpm. The secondary x-axis show the corresponding frequencies for a range of mean speeds past the sensors]]
The shorter the segment, the higher the temporal resolution of the final <math>\varepsilon</math> time series. However, the segment must remain sufficiently long such that the lowest wavenumber (frequencies) of the inertial subrange are resolved by the spectra. This is particularly important when measurement noise drowns the highest wavenumber (frequencies) of the inertial subrange. Using short segments may inadvertently render the resulting spectra unusable for turbulence analysis.


The spectrum's lowest resolved frequency and frequency resolution depends on the duration of the signal used to construct the spectrum.
[[File:SegmentAnisotropyLowE.png|center|thumbnail|350px|Fig. 3: Same as Fig 1 but for a different  dataset with <span id="lowepsi">low speeds and low</span> <math>\varepsilon</math>, requiring the use of relatively long segments (1024s) to estimate the spectra from fft-length of 512 s (4096 samples @ 8 Hz).]]


==Notes==
===Overlapping segments===
<references/>
Using overlapping segments, i.e., obtaining your first <math>\varepsilon</math> estimate from time 0 to 5 min, and the second estimate from 2.5 to 5 min (50% overlap) essentially smoothes the final timeseries <math>\varepsilon</math>. One advantage of using overlapping segments is that you can recover estimates before and after sudden changes in flow conditions that render one segment unusable for getting <math>\varepsilon</math>. The use of overlapping segments is purely a matter of preference, and does not impact the quality of the final timeseries of epsilon.


[[Category:Velocity point-measurements]]
----
Return to [[Preparing_quality-controlled_velocities|Preparing quality-controlled velocities]]

Latest revision as of 00:03, 14 July 2022


Once the raw observations have been quality-controlled, then you must split the time series into shorter segments by considering:

A good way to select the segment length is by inspecting the computed spectra estimated from a  512-s long segment and an fft-length that is one-quarter of the segment length (128 s). Plotting these spectra against the theoretical spectral lines (see Fig 2 and 3), enables identifying whether 1 decade of an inertial subrange is resolved with at least 8 spectral samples in this subrange. 

Considerations

Measurements are typically collected in the following two ways:

  • continuously, or in such long bursts that they can be considered continuous
  • short bursts that are typically at most 2-3x the expected largest turbulence time scales (e.g., 10 min in ocean environments)

This segmenting step dictates the minimum burst duration when setting up your equipment. The act of chopping a time series into smaller subsets, i.e., segments, is effectively a form of low-pass (box-car) filtering. The length of the segment in time is usually a more important consideration than detrending the time series when estimating [math]\displaystyle{ \varepsilon }[/math] from the inertial subrange of the final spectra.

The shorter the segment, the higher the temporal resolution of the final [math]\displaystyle{ \varepsilon }[/math] time series, and the more likely the segment will be stationary. The segment must remain sufficiently long such that the lowest wavenumber (frequencies) of the inertial subrange are retained by the computed spectra. This is particularly important when measurement noise drowns the highest wavenumber (frequencies) of the inertial subrange. Thus, using too short segments may inadvertently render the spectra unusable for deriving [math]\displaystyle{ \varepsilon }[/math] from the inertial subrange by virtue of no longer resolving this subrange as shown in (Fig. 1).

Fig.1 Contours represent the log of the fft-length required to resolve the non-dimensional wavenumber [rad/m] indicated in each panel's title. The inertial subrange ends at approximately [math]\displaystyle{ \hat{k}L_k\approx0.1 }[/math] (or [math]\displaystyle{ kL_k\approx0.015 }[/math] in cpm), and so panel (c) denotes the fft-length that resolves the end of the inertial subrange i.e., the beginning of the viscous subrange. The fft-length must be at least 10x longer (see b), preferably 50x (panel c) given the low number of spectral observations at the lowest frequencies (wavenumbers)

Recommendations

A good rule of thumb for tidally-influenced environments is 5 to 15 min segments, but this may be shorter in certain energetic and fast-moving flows (Fig. 2) and longer in less energetic environments (Fig.3). The final segment length is partly a function of the fft-length and the desired statistical significance (degrees of freedom) of the final computed spectra. If cospectral methods will be employed to decontaminate the velocities, then the segment length should be 4-5x larger than the fft-length unless band-averaging is used to average the (co-)spectra.

Minimum fft-length

Fig. 1 provides a guide to the fft-length required for resolving different subrange as a function of the speed past the sensor, and [math]\displaystyle{ \varepsilon }[/math]. For instance, an fft-length of 4 s would resolve one decade of the inertial subrange at speeds past the sensor of 0.5 m/s and [math]\displaystyle{ \varepsilon\sim10^{-7} }[/math] W/kg. Longer segments would be required for slower flows or lower [math]\displaystyle{ \varepsilon }[/math]. At [math]\displaystyle{ \varepsilon\approx10^{-9} }[/math] W/kg, one decade of the inertial subrange would be resolved with an fft-length longer than 10s provided the speed was faster than 0.5 m/s.

Because the inertial subrange may be contaminated at the highest wavenumbers by instrument noise, we suggest using longer segments than the minimum shown in Fig. 1b. This strategy also enables having a larger number of spectral observations to fit over the inertial subrange given the spectral resolution is equal to the inverse of the fft-length.

Choosing segment-length

The final segment length may be larger than the fft-length depending if you use block-averaging for computing the spectra. The maximum segment length should be shorter than the largest turbulent time scales. To increase the statistical reliability of the spectral observations, which is absolutely necessary when applying any co-spectral techniques for motion decontamination of spectra, we recommend segment length that is 5x the fft-length unless band-averaging is employed during the spectral averaging. More details about the minimum degrees of freedom are given in the velocity decontamination by cospectral methods wikipage.

Are the peaks in the MAVS data vortex shedding from the rings. Check the motion sensors onboard?

Fig. 2: Example theoretical velocity spectra for different [math]\displaystyle{ \varepsilon }[/math] with the empirical limit [math]\displaystyle{ \hat{k}L_k\sim0.1 }[/math] denoted by the diamonds ([math]\displaystyle{ \hat{k} }[/math] is in rad/m). The inertial subrange extends to smaller wavenumber [math]\displaystyle{ k }[/math] [cpm] as [math]\displaystyle{ \varepsilon }[/math] increases. The lowest frequency resolved by a spectra is the inverse of the fft-length used when computing the spectra. The colored lines are spectral observations from a dataset with fast speeds and large [math]\displaystyle{ \varepsilon }[/math]. In this example, we used relatively short segments (128s) to estimate the spectra from fft-length of 32 s (2048 samples @ 64 Hz). The impact of turbulence anisotropy is also visible through the flattening of the spectra around 1 cpm. The secondary x-axis show the corresponding frequencies for a range of mean speeds past the sensors
Fig. 3: Same as Fig 1 but for a different dataset with low speeds and low [math]\displaystyle{ \varepsilon }[/math], requiring the use of relatively long segments (1024s) to estimate the spectra from fft-length of 512 s (4096 samples @ 8 Hz).

Overlapping segments

Using overlapping segments, i.e., obtaining your first [math]\displaystyle{ \varepsilon }[/math] estimate from time 0 to 5 min, and the second estimate from 2.5 to 5 min (50% overlap) essentially smoothes the final timeseries [math]\displaystyle{ \varepsilon }[/math]. One advantage of using overlapping segments is that you can recover estimates before and after sudden changes in flow conditions that render one segment unusable for getting [math]\displaystyle{ \varepsilon }[/math]. The use of overlapping segments is purely a matter of preference, and does not impact the quality of the final timeseries of epsilon.


Return to Preparing quality-controlled velocities