Download presentation
Presentation is loading. Please wait.
1
TR32 time series comparison Victor Venema
2
Content Jan Schween –Wind game: measurement and synthetic –Temporal resolution of 0.1 seconds Heye Bogena –Wind, air pressure, water temperature –Temporal resolution of 10 minutes –Rollesbroich Global Runoff Data Centre –Runoff Rhine Cologne –Daily, years: 1817 to 2001
3
Wind - Measurement and synthetic
4
Wind - distribution – normal plot
5
Increment distribution Measurement: (t) Increment time series for lag l: (x,l) = (t+l) - (t) Distribution jumps sizes Width of the distribution is the mean variance at scale l
6
Wind - Increment distribution
7
Daubechies wavelet family
8
Wind - Daubechies wavelet (db6)
9
Wind – Haar vs. Daubechies (db6)
10
Intermittency / Intermittence On-off intermittency –Rain, eddy in laminar flow Operationalisation: variance of variance (at a certain scale) Intermittence is typically strongest at small scales Time series modelling: Autoregressive conditional heteroskedasticity (ARCH, GARCH) Multi-fractal models (not all)
11
Wind - Increment distribution
12
Structure functions Increment time series: (x,l)= (t+l)- (t) SF(l,q) = (1/N) Σ | | q SF(l,2) is equivalent to auto-correlation function Correlated time series SF increases with l Higher q focuses on larger jumps For large l, SF equivalent to the moments
13
Wind – Structure functions
14
Fourier decomposition Decompose a time domain signal in sinuses of varying wavelength Wavelength -> scale Fourier coefficients -> variance as function of scale
15
Wind – power spectrum
16
Wind speed (Heye Bogena; 10 min.)
17
Wavelet - Wind speed (10 min.)
18
Air pressure (10 min.)
19
Air pressure (10 min.) - Wavelets
20
Water temperature
21
Water temperature - Wavelets
22
Discharge all data and zoom
23
Discharge Rhine - Wavelets
24
Discharge Rhine
26
Slope power spectrum vs. smoothness
27
Conclusions Some signals showed annual, diurnal cycle Except for this no frequency was special –Variability on all scales –Large scales: white noise or even correlated variance is never gone All signals showed intermittence –Typical for complex systems
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.