Title: Comparison of Dynamical Systems
1Uncertain, High-Dimensional Dynamical Systems
Igor Mezic
University of California, Santa Barbara
IPAM, UCLA, February 2005
2Introduction
- Measure of uncertainty?
- Uncertainty and spectral theory of dynamical
systems. - Model validation and data assimilation.
- Decompositions.
3Dynamical evolution of uncertainty an example
Output measure
Input measure
Tradeoff Bifurcation
vs. contracting dynamics
4Dynamical evolution of uncertainty general set-up
Skew-product system.
5Dynamical evolution of uncertainty general set-up
6Dynamical evolution of uncertainty general set-up
F(z)
1
0
7Dynamical evolution of uncertainty simple
examples
Expanding maps x2x
8A measure of uncertainty of an observable
9Computation of uncertainty in CDF metric
10Maximal uncertainty for CDF metric
11Variance, Entropy and Uncertainty in CDF metric
0
12Uncertainty in CDF metric Pitchfork bifurcation
Output measure
Input measure
13Time-averaged uncertainty
14Conclusions
15Introduction
- Example thermodynamics from statistical mechanics
PVNkT
Any rarified gas will behave that way, no
matter how queer the dynamics of its
particles Goodstein (1985)
- Example Galerkin truncation of evolution
equations.
- Information comes from a single observable
time-series.
16Introduction
When do two dynamical systems exhibit
similar behavior?
17Introduction
- Constructive proof that ergodic partitions and
invariant - measures of systems can be compared using a
- single observable (Statistical Takens-Aeyels
theorem). - A formalism based on harmonic analysis that
extends - the concept of comparing the invariant measure.
18Set-up
Time averages and invariant measures
19Set-up
20Pseudometrics for Dynamical Systems
- Pseudometric that captures statistics
where
21Ergodic partition
22Ergodic partition
23An example analysis of experimental data
24Analysis of experimental data
25Analysis of experimental data
26Koopman operator, triple decomposition, MOD
-Efficient representation of the flow field can
be done with vectors -Lagrangian analysis
FLUCTUATIONS
MEAN FLOW
PERIODIC
APERIODIC
Desirable Triple decomposition
27Embedding
28Conclusions
- Constructive proof that ergodic partitions and
invariant - measures of systems can be compared using a
- single observable deterministicstochastic.
- A formalism based on harmonic analysis that
extends - the concept of comparing the invariant measure
- Pseudometrics on spaces of dynamical systems.
- Statistics based, linear (but
infinite-dimensional).
29Introduction
Everson et al., JPO 27 (1997)
30Introduction
- 4 modes -99
- of the variance!
- -no dynamics!
Everson et al., JPO 27 (1997)
31(No Transcript)
32Introduction
In this talk -Account explicitly for dynamics
to produce a decomposition. -Tool lift to
infinite-dimensional space of functions on
attractor consider properties of Koopman
operator. -Allows for detailed comparison of
dynamical properties of the evolution and
retained modes. -Split into deterministic and
stochastic parts useful for prediction
purposes.
33Factors and harmonic analysis
34Factors and harmonic analysis
35Harmonic analysis an example
36Evolution equations and Koopman operator
37Evolution equations and Koopman operator
SimilarWold decomposition
38Evolution equations and Koopman operator
But how to get this from data?
39Evolution equations and Koopman operator
is almost-periodic.
-Remainder has continuous spectrum!
40Conclusions
-Use properties of the Koopman operator to
produce a decomposition -Tool lift to
infinite-dimensional space of functions on
attractor. -Allows for detailed comparison of
dynamical properties of the evolution and
retained modes. -Split into deterministic and
stochastic parts useful for prediction
purposes. -Useful for Lagrangian studies in
fluid mechanics.
41Invariant measures and time-averages
Example Probability histograms!
42Dynamical evolution of uncertainty simple
examples
- Types of uncertainty
- Epistemic (reducible)
- Aleatory (irreducible)
- A-priori (initial conditions,
- parameters, model structure)
- A-posteriori (chaotic dynamics,
- observation error)
Expanding maps x2x
43Uncertainty in CDF metric Examples
Uncertainty strongly dependent on distribution of
initial conditions.