challenges in the use of model reduction techniques in bifurcation analysis (with an application to...

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Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1 , Henk Schuttelaars 1,2 , Daniel Calvete 3 and Henk Dijkstra 1 1: Institute for Marine and Atmospheric research, Utrecht University, Utrecht, The Netherlands 2: Faculty of Civil Engineering and Geosciences, TU Delft, The Netherlands 3: Department Fisica Aplicada, UPC, Barcelona, Spain Multipass image of sea surface temperature field of the Gulf Stream region. Photo obtained from http://fermi.jhuapl.edu/ avhrr/gallery/sst/stream .html

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Page 1: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Challenges in the use of model reduction techniques in bifurcation analysis

(with an application to wind-driven ocean gyres)

Paul van der Vaart1, Henk Schuttelaars1,2, Daniel Calvete3 and Henk Dijkstra1

1: Institute for Marine and Atmospheric research, Utrecht University, Utrecht, The Netherlands2: Faculty of Civil Engineering and Geosciences, TU Delft, The Netherlands3: Department Fisica Aplicada, UPC, Barcelona, Spain

Multipass image of sea surface temperature field of the Gulf Stream region.

Photo obtained from http://fermi.jhuapl.edu/avhrr/gallery/sst/stream.html

Page 2: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Introduction• From observations in:

• meteorology• ocean dynamics• morphodynamics• …

Warm eddy, moving to the West

Wadden Sea

Dynamics seems to be governed by only a few patterns

Often strongly nonlinear!!

Page 3: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Research Questions:

modelunderstandpredict

Can we the observed dynamical behaviour?

Model Approach: reduced dynamical models, deterministic!

• Based on a few physically relevant patterns physically interpretable patterns• Can be analysed with well-known mathematical techniques

Choice of patterns!!

Page 4: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Construction of reduced models

Define: state vector = (…), i.e. velocity fields, bed level,… parameter vector = (…), i.e. friction strength, basin geometry

Dynamics of :

M LNFddt

•M : mass matrix, a linear operator. In many problems M is singular•L : linear operator•N : nonlinear operator• F : forcing vector

Where

•coupled system of nonlinear ordinary and partial differential equations•usually NOT SELF-ADJOINT

Page 5: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Step 1: identify a steady state solution eq for a certain .

LeqNeqF

Step 2: investigate the linear stability of eq.

Writeeqand linearize the eqn’s:

M J0ddt

with the total jacobian J = L + N eq with N linearized around eq

Page 6: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

This generalized eigenvalue-problem (usually solved numerically) gives: •Eigenvectors rk

•Adjoint eigenvectors lk

These sets of eigenfunctions satisfy:

•< J rk, lk > = k

•< M rk , lm > = km <.>: inner product k : eigenvalue

with

Note: if M is singular, the eigenfunctions do not span the complete function space!

Page 7: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Step 3: model reduction by Galerkin projection on eigenfunctions.

•Expand in a FINITE number of eigenfunctions:

= rj aj(t)j=1

N

•Insert eqin the equations.•Project on the adjoint eigenfunctions evolution equations for the amplitudes aj(t):

aj,t - jk ak + cjkl ak al = 0, for j = 1...N l=1

N

k=1 k=1

N N

system of nonlinear PDE’s reduced to a system of coupled ODE’s.

Page 8: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

•Which eigenfunctions should be used?•How many eigenfunctions should be used in the expansion?•How ‘good’ is the reduced model?

Open questions w.r.t. the method of model reduction:

To focus on these research questions, the problem must satisfy the following conditions: • not self-adjoint

• validation of reduced model results with full model results must be possible • no nonlinear algebraic equations

Page 9: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Example: ocean gyres

Gulf stream: resulting from two gyres Subpolar Gyre

Subtropical GyreNot steady: •Temporal variability on many timescales•Results in low frequency signals in the climate system

“Western Intensification”

Page 10: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Temporal behaviour of gulf streamfrom observations from state-of-the-art models

Oscillation with 9-month timescale

Two distinct energy states(low frequency signal)

(After Schmeits, 2001)

Page 11: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

• Geometry: square basin of 1000 by 1000 km.• Forcing: symmetric, time-independent wind stress

One layer QG model

• Equations:

+ appropriate b.c.

• Critical parameter is the Reynolds number R:

•High friction (low R): stationary

•Low friction (high R): chaotic

Route to chaos

Step ‘0’

Page 12: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Bifurcation diagram resulting from full model (with 104 degrees of freedom):

•R<82: steady state•R=82: Hopf bifurcation•R=105: Naimark-Sacker bifurcation

Steady state: pattern of stream function near R = 82 (steady sol’n)

Step 1

Page 13: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

At R=82 this steady state becomes unstable. A linear stability analysisresults in the following spectrum:

QUESTION: which modes to select?

•Most unstable ones•Most unstable ones + steady modes•Use full model results and projections

Step 2

Page 14: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Example: take the first 20 eigenfunctions to construct reduced model.

Time series from amplitudes of eigenfunctions in reduced model

Black: Rossby basin mode

(1st Hopf)

Red + Orange: Gyre modes

(Naimark-Sacker)

Blue: Mode number 19

•Quasi-periodic behaviour at R =120: Neimark-Sacker bifurcation•Good correspondence with full model results

Step 3

Page 15: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Another selection of eigenfunctions to construct reduced model.

•Mode 19 essential•Choice only possible with information of full model

Rectification in full model

Mode #19

Page 16: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Conlusions w.r.t. reduced models of one layer QG-model:

•More modes do not necessarily improve the results:

•Mode # 19 is essential: this mode is necessary to stabilize. physical mechanism!

•Modes can be compensated by clusters of modes deep in the spectrum (both physical and numerical modes)•By non-selfadjointness, these modes do get finite amplitudes

Low frequency behaviour:

Page 17: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Two layer QG model

Instead of one layer, a second, active layer is introducedallows for an extra instability by vertical shear (baroclinic)

•Bifurcation diagram from full model: again a Hopf and N-S bifurcation.

•In reduced model (after arbitrary # of modes), a N-S bif. is observed:

N-S Reduced model

•Different R

•Different frequency

Page 18: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

•Linear spectrum looks like the spectrum from 1 layer QG model.•Use basis of eigenfunctions calculated at R=17.9 (1st Hopf bif) and increase the number of e.f. for projection:

•E = || full – proj||

|| full||E

=

•Some modes are active (clusters).•Which modes depends on R •Note weakly nonlinear beha- viour!!

Page 19: Challenges in the use of model reduction techniques in bifurcation analysis (with an application to wind-driven ocean gyres) Paul van der Vaart 1, Henk

Conclusions:•Possible to construct ‘correct’ reduced model•Insight in underlying physics•Full model results selection of eigenfunctions

Challenge:To construct a reduced model without a priori knowledgeof the underlying system’s behaviour in a systematic way

Apart from the problems mentioned above (mode selection, ..), this method should work for coupled systems of nonlinear ‘algebraic’ equations and PDE’s as well.