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Non-linear System Identification: Possibilities and Problems

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Title: Non-linear System Identification: Possibilities and Problems


1
Non-linear System Identification Possibilities
and Problems
  • Lennart Ljung
  • Linköping University

2
Outline
  • The geometry of non-linear identification
    Projections and visualization
  • Identification for control in a non-linear system
    world
  • Ongoing work with Matt Cooper, Martin Enquist,
    Torkel Glad, Anders Helmersson, Jimmy Johansson,
    David Lindgren, and Jacob Roll

3
Geometry of Nonlinear Identification
  • An elementary introduction

4
A Data Set
Output
Input
Input
5
A Simple Linear Model
Red Model Black Measured
Try the simplest model y(t) a u(t-1) b
u(t-2) Fit by Least Squares m1arx(z,0 2
1) compare(z,m1)
6
A Picture of the Model
Depict the model as y(t) as a function of u(t-1)
and u(t-2)
u(t-2)
7
A Nonlinear Model
Try a nonlinear model y(t) f(u(t-1),u(t-2)) m2
arxnl(z,0 2 1,sigm) compare(z,m2)
8
The Predictor Function
Identification is about finding a reliable
predictor function that predicts the next output
from previous measured
data
  • General structure

Common/useful special case
of fixed dimension m (state, regressors)
Think of the simple case
9
The Data and the Identification Process
The observed data ZNy(1),?(1),y(N),?(N) are N
points in Rm1
The predictor model is a surface in this space
Identification is to find the predictor surface
from the data
10
Outline
  • The geometry of non-linear identification
    Projections and visualization
  • Identification for control in a non-linear system
    world

11
Projections Examine the Data Cloud
  • In the plot of the y(t),?(t) the model surface
    can be seen as a thin projection of the data
    cloud.
  • Example Drained tank, inflow u(t), level y(t).
    Look at the points ? y(t), y(t), u(t) in 3D
  • What we saw
  • How to recognize a thin projection?

12
Nonlinearities Confined to a Subspace
  • Predictor model ytf(?t)vt , f Rm -gt R
  • Multi-index structure f(?t)b?t g(S?t) g Rk
    -gt R
  • S is a k-by-m matrix, klt m The non-linearity is
    confined to a k-dimensional subspace (SSTI)
  • If k1, the plot yt-b?t vs S?t will show the
    nonlinearity g.
  • How to find b, S and g?

13
How to Find b, S and g?
  • Predictor function f(?,?)b? g(S(?)?,?)
  • ? contains b, ? and ?
  • ? may parameterize g, e.g. as a polynomial
  • ? may parameterize S e.g. by angles in Givens
    rotations
  • This is a useful parametrization of f if the
    nonlinearity is confined to a lower-dimensional
    subspace
  • Minimization of criterion

14
Example Silver Box Data
  • Silver box data . (NOLCOS Special session)
  • Fit as above with 5 past y and 5 past u in ? and
    use k1 (22 parameters) (Sparse data!)
  • yb? g(S(?)?,?) (S R10 -gt R)

Simulation fit 0.44 Fit for ANN (with 617
pars) 0.46
Confined nonlinearities could be a good way to
deal with sparsity
15
More Serious Visualization
  • The interaction between a user and computational
    tools is essential in system identification. More
    should be done with serious visualization of data
    and estimation results, projections etc.
  • We cooperate with NVIS Norrköping Visualization
    and Interaction Studio, which has a state-of-the
    art visualization theater. For preliminary
    experiments we have hooked up the SITB with the
    visualization package AVS/Express

16
(No Transcript)
17
Outline
  • The geometry of non-linear identification
    Projections and visualization
  • Identification for control in a non-linear system
    world

18
Control Design
Nominal Model
Regulator
19
Control Design
True System
Regulator
20
Control Design
Model error model
Nominal Model
Regulator
21
Control Design
Model error model
True system
Nominal Model
Regulator
22
Control Design
Model error model
Nominal Model
Nominal closed loop system
Regulator
23
Robustness Analysis
  • All robustness analysis relies upon one way or
    another checking the model error model in
    feedback with the nominal closed loop system.
    Some variant of the small gain theorem

24
Model Error Models
  • ? y ymodel

u
?
uu
25
Identification for Control
  • Identifiction for control is the art and
    technique to design identification experiments
    and regulator design methods so that the model
    error model matches the nominal closed loop
    system in a suitable way

26
Linear Case
  • Linear model and linear system Means that the
    model error model is also linear.
  • Much work has been done on this problem (Michel
    Gevers, Brian Anderson, Graham Goodwin, Paul van
    den Hof, ) and several useful results and
    insights are available.
  • Bottom line Design experimens so that model is
    accurate in frequency ranges where the stability
    margin is essential.
  • Now for the case with nonlinear system .

27
Non-linear System Approximation
  • Given an LTI Output-error model structure
    yG(q,?)ue, what will the resulting model be for
    a non-linear system?
  • Assume that the inputs and outputs u and y are
    such that the spectra ?u and ?yu are well
    defined.
  • Then the LTI second order equivalent (LTI-SOE) is

Note G0 depends on u
  • The limit model will be

28
Example
  • Consider the static system z(t)? u3(t)
  • Let u(t) v(t)-2cv(t-1)c2v(t-2) where v is
    white noise with uniform distribution
  • Then the LTI equivalent of the system is
  • Note (1) Dynamic! (2) Static gain
    (?0.01,c0.99) 233

29
Additivity of LTI-SOE
  • Note that the LTI equivalent is additive (under
    mild conditions)

30
Simulation
Blue without NL term Red With NL term
31
Bode Plot
  • Blue Estimated (LTI equivalent) model
  • Green Linear part

32
Lesson from the Example
  • So, the gain of the model error model for ult1
    is 0.01 if the green linear model is chosen.
  • And the gain of the model error model is (at
    least) 230 if the blue linear model is chosen.
  • Unfortunately, System Identification will yield
    the blue model as the nominal (LTI-SOE) model!
  • Lesson 1 The LTI-SOE linear model may not be
    the nominal linear model you should go for!

33
Gain of Model Error Models
  • Idea 1
  • Traditional definition, possible problems with
    relay effect in the origin
  • Idea 2 Affine power gain

34
Model Error Model Gain
  • So go for
  • For all u?
  • Impossible to establish
  • Very conservative, typically relative error 1 at
    best.
  • Lesson 2 For NL MEM necessary to let
  • Must consider non-linear regulator!

35
Possible Result for Nonlinear System
  • Nominal model, linear or nonlinear
  • Design an H1 non-linear regulator with the
    constraint
  • and gain ? from output disturbance to
    controlled variable z
  • The model error model obeys
  • Then
  • Where V(x(0)) is the loss for the nominal
    closed loop system

36
Conclusions
  • Geometry of non-linear identification
    Projections and visualization
  • Identification for control with non-linear
    systems
  • LTI-SOE may not be the best model
  • Non-linear control synthesis necessary even with
    linear nominal model

37
Epilogue
  • Four Challenges for the Control Community
  • A working theory for stability of black-box
    models.
  • Prediction/Simulation
  • Fully integrated software for modeling and
    identification
  • Object oriented modeling
  • Differential algebraic equations
  • Full support of disturbance models
  • Robust parameter initialization techniques
  • Algebraic/Numeric
  • Dealing with LTI-equivalents for good control
    design

38
Global Patterns Lower Dimensional Structures
  • In the linear case, experience shows that the
    data cloud often is concentrated to lower
    dimensional subspaces. This is the basis for PCA
    and PLS.
  • Corresponding structure in the nonlinear case
  • f(?)g(P?) P m n matrix, mltltn
  • How to find P? (the multi-index regression
    problem)
  • Note that sigmodial neural networks use basis
    functions fk?(?k? -?k) where ?? is a scalar
    product (ridge expansion). This is a similar
    idea (m1), that partly explains the success of
    these structures,

39
More Flexibility
A more flexible, nonlinear model y(t)
f(u(t-1),u(t-2)) m3 arxnl(z,0 2
1,sigm,numb,100) compare(z,m3) compare(zv,m3)
40
The Fit Between Model and Data
41
Some Geometric Issues
  • Look at the Data Cloud and figure out what may be
    good surface candidates (model structures)
  • The cloud may be sparse.

42
How to Recognize a Thin Projection?
  • Idea 1 Measure the area of a collection of
    points by the area of its covariance ellipsoid
  • SVD, Principal components, TLS etc Linear models

43
How to Recognize a Thin Projection?
  • Idea 1 Measure the area of a collection of
    points by the area of its covariance ellipsoid
  • SVD, Principal components, TLS etc Linear models
  • Idea 2 Delaunay Triangulation (Zhang)
  • OK, but non-smooth criterion
  • Idea 3 .

44
How to Deal with Sparsity
  • Sparsity Think of Johan Schoukenss Silver box
    data 120000 data points and 10 regressors
  • Need ways to interpolate and extrapolate in the
    data space.
  • Use Physical Insight Allow for few parameters to
    parameterize the predictor surface, despite the
    high dimension.
  • Leap of Faith Search for global patterns in
    observed data to allow for data-driven
    interpolation.
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