Title: Quantifying Organization in Time Series: Applications in Atmospheric Turbulence
1Quantifying Organization in Time Series
Applications in Atmospheric Turbulence
- Gabriel Katul, Karen Wesson, and
- Brani Vidakovic
2Surface Layer and Canopy Turbulence
Canopy Sublayer
Surface Layer
3Surface Layer and Canopy Sublayer
Surface Layer
Blending Region
2h
Canopy Sublayer
h
4Degree of Organization
5Degree of Organization
THE FLOW FIELD IS A SUPERPOSITION OF THREE
CANONICAL STRUCTURES
Mixing Layer
Boundary Layer
6Techniques
7Shannon Entropy
8Wavelet Thresholding
Wavelets disbalance geophysical data because
they concentrate most of the energy in few
coefficients. The process of setting the
amplitude of wavelet coefficients to zero when a
certain threshold is exceeded is known as
thresholding. The number of coefficients
remaining after thresholding measures degree of
organization associated with energetic events
9Threshold Criterion
Frequency or Fourier Domain
Wavelet Domain
Time Domain
10Thresholding and Variance Recovery
11Threshold Selection
12Wavelet Papers - since 1990
(from Addison, 2002)
13Time-Frequency local transform
14Can reduce the effects of gaps on transformation
15(No Transcript)
16Forward Transform Time to Wavelet
Inverse Transform Wavelet to time
17Mutual Information
18Mutual Information
19Canopy Sublayer Experiments
20Shannon Entropy Results
21Wavelet Thresholding Results
22Mutual Information Results
23Conclusions
Tools from nonlinear time series permit
identification of organization using scalar
measures. In this case study, we showed that
the CSL eddy motion is more organized than the
ASL eddy motion. That is, it is more amenable
to a low-dimensional model. For some systems,
complexity, entropy, organization, and
predictability are connected.