Segmenting datasets: Difference between revisions
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* continuously, or in such long [[Burst sampling|bursts]] that they can be considered continuous | * continuously, or in such long [[Burst sampling|bursts]] that they can be considered continuous | ||
* 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) | * 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) | ||
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. 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. | 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. 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 model|inertial subrange]] in the final spectra computed over each segment. | ||
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Revision as of 02:06, 6 July 2022
Once the raw observations have been quality-controlled, then you must split the time series into shorter segments by considering:
- Time and length scales of turbulence
- Stationarity of the segment and Taylor's frozen turbulence hypothesis
- Statistical significance of the resulting spectra
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. How to segment the time series is usually a more important consideration than detrending the time series since estimating [math]\displaystyle{ \varepsilon }[/math] relies on resolving the inertial subrange in the final spectra computed over each segment.
Trade-offs
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. However, the spectrum's lowest resolved frequency and frequency resolution depends on the duration of the signal used to construct the spectrum. Therefore, the segment must remain sufficiently long such that the lowest wavenumber (frequencies) of the inertial subrange are retained by the 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 resulting spectra unusable for deriving [math]\displaystyle{ \varepsilon }[/math] from the inertial subrange by virtue of no longer resolving this subrange.
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. 1) and longer in less energetic environments (Fig.2). Are the peaks in the MAVS data vortex shedding from the rings. Check the motion sensors onboard?
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