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Crustal Deformation Analysis from Permanent GPS Networks

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Presentation on theme: "Crustal Deformation Analysis from Permanent GPS Networks"— Presentation transcript:

1 Crustal Deformation Analysis from Permanent GPS Networks
European Geophysical Union General Assembly - EGU2009 April 2009, Vienna, Austria Crustal Deformation Analysis from Permanent GPS Networks Ludovico Biagi & Athanasios Dermanis Politecnico di Milano, DIIAR Aristotle University of Thessaloniki, Department of Geodesy and Surveying

2 Our approach - Departure from classical horizontal deformation analysis:

3 Our approach - Departure from classical horizontal deformation analysis:
- New rigorous equations for deformation invariant parameters: Principal (max-min) linear elongation factors & their directions Dilatation, (maximum) shear strain & its direction

4 Our approach - Departure from classical horizontal deformation analysis:
- New rigorous equations for deformation invariant parameters: Principal (max-min) linear elongation factors & their directions Dilatation, (maximum) shear strain & its direction - New rigorous equations for “horizontal” deformation analysis on the reference ellipsoid Attention: NOT for the physical surface of the earth, NOT 3-dimentional !

5 Our approach - Departure from classical horizontal deformation analysis:
- New rigorous equations for deformation invariant parameters: Principal (max-min) linear elongation factors & their directions Dilatation, (maximum) shear strain & its direction - New rigorous equations for “horizontal” deformation analysis on the reference ellipsoid Attention: NOT for the physical surface of the earth, NOT 3-dimentional ! - Separation of relative rigid motion of (sub)regions from actual deformation: Identification of regions with different kinematic behavior (clustering) Use of best fitting reference system for each region (Concept of regional discrete Tisserant reference system)

6 Our approach - Departure from classical horizontal deformation analysis:
- New rigorous equations for deformation invariant parameters: Principal (max-min) linear elongation factors & their directions Dilatation, (maximum) shear strain & its direction - New rigorous equations for “horizontal” deformation analysis on the reference ellipsoid Attention: NOT for the physical surface of the earth, NOT 3-dimentional ! - Separation of relative rigid motion of (sub)regions from actual deformation: Identification of regions with different kinematic behavior (clustering) Use of best fitting reference system for each region (Concept of regional discrete Tisserant reference system) PLUS Study of signal-to-noise ratio (significance) of deformation parameters from spatially interpolated GPS velocity estimates using: - Finite element method (triangular elements) - Minimum Mean Square Error Prediction (collocation) CASE STUDY: Central Japan

7 x = coordinates at epoch t x = coordinates at epoch t
Deformation as comparison of two shapes (at two epochs) x = coordinates at epoch t x = coordinates at epoch t Mathematical Elasticity: Deformation studied via the deformation gradient local linear approximation to the deformation function

8 x = coordinates at epoch t x = coordinates at epoch t
Deformation as comparison of two shapes (at two epochs) x = coordinates at epoch t x = coordinates at epoch t u = x - x = displacements Mathematical Elasticity: Deformation studied via the deformation gradient Geophysics-Geodesy: Deformation studied via the displacement gradient local linear approximation to the deformation function and approximation to strain tensor

9 Classical horizontal deformation analysis
A short review

10 Classical horizontal deformation analysis
Strain tensor E : description of (quadratic) variation of length element

11 Classical horizontal deformation analysis
Strain tensor E : description of (quadratic) variation of length element Geodetic data: Discrete initial coordinates x0i and velocities vi at GPS permanent stations Pi Displacements: ui = (t – t0) vi

12 Classical horizontal deformation analysis
Strain tensor E : description of (quadratic) variation of length element Geodetic data: Discrete initial coordinates x0i and velocities vi at GPS permanent stations Pi Displacements: ui = (t – t0) vi Require: SPATIAL INTERPOLATION for the determination of or DIFFERENTIATION for the determination of or

13 Classical horizontal deformation analysis
Discrete geodetic information at GPS permanent stations

14 Classical horizontal deformation analysis
SPATIAL INTERPOLATION Discrete geodetic information at GPS permanent stations Interpolation to obtain continuous information, e.g. displacements at every point

15 Classical horizontal deformation analysis
SPATIAL INTERPOLATION Discrete geodetic information at GPS permanent stations Interpolation to obtain continuous information, e.g. displacements at every point Differentiation to obtain the deformation gradient F or displacement gradient J = F - I

16 Classical horizontal deformation analysis
Analysis of the displacement gradient J into symmetric and antisymmetric part:

17 Classical horizontal deformation analysis
Analysis of the displacement gradient J into symmetric and antisymmetric part:  = small rotation angle

18 Classical horizontal deformation analysis
Analysis of the displacement gradient J into symmetric and antisymmetric part:  = small rotation angle emax, emin = principal strains  = direction of emax diagonalization

19 Classical horizontal deformation analysis
Analysis of the displacement gradient J into symmetric and antisymmetric part:  = small rotation angle emax, emin = principal strains  = direction of emax diagonalization  = dilataton  = maximum shear strain  = direction of 

20 Classical horizontal deformation analysis
Analysis of the displacement gradient J into symmetric and antisymmetric part:  = small rotation angle emax, emin = principal strains  = direction of emax diagonalization  = dilataton  = maximum shear strain  = direction of 

21 SVD Horizontal deformational analysis using
the Singular Value Decomposition (SVD) A new approach SVD

22 Horizontal deformational analysis using Singular Value Decomposition
from diagonalizations: SVD

23 Horizontal deformational analysis using Singular Value Decomposition

24 Horizontal deformational analysis using Singular Value Decomposition

25 Horizontal deformational analysis using Singular Value Decomposition

26 Horizontal deformational analysis using Singular Value Decomposition

27 Horizontal deformational analysis using Singular Value Decomposition

28 Rigorous derivation of invariant deformation parameters
without the approximations based on the infinitesimal strain tensor

29 Rigorous derivation of invariant deformation parameters
2 alternative 4-parametric representations shear along the 1st axis linear scale factor direction of shear additional rotation not contributing to deformation

30 Rigorous derivation of invariant deformation parameters
2 alternative 4-parametric representations shear along the 1st axis linear scale factor direction of shear additional rotation not contributing to deformation

31 Rigorous derivation of invariant deformation parameters
2 alternative 4-parametric representations shear along the 1st axis linear scale factor direction of shear additional rotation not contributing to deformation

32 Rigorous derivation of invariant deformation parameters
2 alternative 4-parametric representations shear along the 1st axis linear scale factor direction of shear additional rotation not contributing to deformation

33 Rigorous derivation of invariant deformation parameters
2 alternative 4-parametric representations shear along the 1st axis linear scale factor direction of shear additional rotation not contributing to deformation

34 Rigorous derivation of invariant deformation parameters
2 alternative 4-parametric representations shear along the 1st axis linear scale factor direction of shear additional rotation not contributing to deformation

35 Rigorous derivation of invariant deformation parameters
shear along the 1st axis

36 Rigorous derivation of invariant deformation parameters
shear along direction 

37 Rigorous derivation of invariant deformation parameters
additional rotation  (no deformation)

38 Rigorous derivation of invariant deformation parameters
additional scaling (scale factor s)

39 Rigorous derivation of invariant deformation parameters
Compare the two representations and express s, , ,  as functions of 1, 2, , 

40 Rigorous derivation of invariant deformation parameters
Derivation of dilatation 

41 Rigorous derivation of invariant deformation parameters
Derivation of shear , and its direction  Use Singular Value Decomposition and replace

42 Rigorous derivation of invariant deformation parameters
Derivation of shear , and its direction  Compare

43 Rigorous derivation of invariant deformation parameters
Derivation of shear , and its direction 

44 Rigorous derivation of invariant deformation parameters
Derivation of shear , and its direction 

45 Horizontal deformation on the surface of the reference ellipsoid

46 Horizontal deformation on ellipsoidal surface
Actual deformation is 3-dimensional

47 Horizontal deformation on ellipsoidal surface
But we can observe only on 2-dimensional earth surface !

48 Horizontal deformation on ellipsoidal surface
INTERPOLATION EXTRAPOLATION Why not 3D deformation? 3D deformation requires not only interpolation but also an extrapolation outside the surface Extrapolation from surface geodetic data is not reliable – requires additional geophysical hypothesis

49 Horizontal deformation on ellipsoidal surface
Standard horizontal deformation: Project surface points on horizontal plane, Study the deformation of the derived (abstract) planar surface

50 Horizontal deformation on ellipsoidal surface
Why not study deformation of actual earth surface? Local surface deformation is a view of actual 3D deformation through a section along the tangent plane to the surface. For variable terrain: we look on 3D deformation from different directions ! Horizontal and vertical deformation caused by different geophysical processes (e.g. plate motion vs postglacial uplift)

51 Horizontal deformation on ellipsoidal surface
Our approach to horizontal deformation: Project surface points on reference ellipsoid, Study the deformation of the derived (abstract) ellipsoidal surface

52 Horizontal deformation on ellipsoidal surface
HOW IT IS DONE: Use curvilinear coordinates on the surface (geodetic coordinates) Formulate coordinate gradient

53 Horizontal deformation on ellipsoidal surface
HOW IT IS DONE: Fq refers to local (non orthonormal) coordinate bases:

54 Horizontal deformation on ellipsoidal surface
HOW IT IS DONE: Fq refers to local (non orthonormal) coordinate bases: Change to orthonormal bases: converting metric matrices to identity

55 Horizontal deformation on ellipsoidal surface
HOW IT IS DONE: Fq refers to local (non orthonormal) coordinate bases: Change to orthonormal bases: converting metric matrices to identity Transform Fq to orthonormal bases:

56 Horizontal deformation on ellipsoidal surface
HOW IT IS DONE: THEN PROCEED AS IN THE PLANAR CASE

57 Separation of rigid motion from deformation
The concept of the discrete Tisserant reference system best adapted to a particular region

58 Separation of rigid motion from deformation
SPATIAL INTERPOLATION

59 Separation of rigid motion from deformation

60 Separation of rigid motion from deformation
BAD SPATIAL INTERPOLATION

61 Separation of rigid motion from deformation
GOOD SPATIAL INTERPOLATION PIECEWISE INTERPOLATION INVOLVES DISCONTINUITIES = FAULTS !

62 Separation of rigid motion from deformation
Horizontal Displacements

63 Separation of rigid motion from deformation
Horizontal Displacements

64 Separation of rigid motion from deformation
Different displacements behavior in 3 regions Apart from internal deformation regions are in relative motion

65 Separation of rigid motion from deformation
HOW TO REPRESENT THE MOTION OF A DEFORMING REGION AS A WHOLE ? BY THE MOTION OF A REGIONAL OPTIMAL REFERENCE SYSTEM ! OPTIMAL = SUCH THAT THE CORRESPONDING DISPLACEMENTS (OR VELOVITIES) BECOME AS SMALL AS POSSIBLE

66 Separation of rigid motion from deformation
ORIGINAL REFERENCE SYSTEM OPTIMAL REFERENCE SYSTEM Motion as whole ( = motion of reference system) + internal deformation ( = motion with respect to the reference system)

67 Separation of rigid motion from deformation
Horizontal motion on earth ellipsoid (  sphere): Rotation around an axis with angular velocity 

68 Separation of rigid motion from deformation
Horizontal motion on earth ellipsoid (  sphere): Rotation around an axis with angular velocity  DEFINITION OF OPTIMAL FRAME: Minimization of relative kinetic energy of regional network Discrete Tisserant reference system

69 Separation of rigid motion from deformation
Horizontal motion on earth ellipsoid (  sphere): Rotation around an axis with angular velocity  DEFINITION OF OPTIMAL FRAME: Minimization of relative kinetic energy of regional network Discrete Tisserant reference system SOLUTION: Migrating pole, variable angular velocity versus usual constant rotation (Euler rotation) = inertia matrix = relative angular momentum

70 Spatial interpolation or prediction

71 Spatial interpolation or prediction
TRIANGULAR FINITE ELEMENTS MINIMUM MEAN SQUARE ERROR PREDICTION (COLLOCATION) interpolated interpolated true true

72 Spatial interpolation or prediction
TRIANGULAR FINITE ELEMENTS MINIMUM MEAN SQUARE ERROR PREDICTION (COLLOCATION) interpolated interpolated true true Deterministic interpolation Interpolation by stochastic prediction

73 Spatial interpolation or prediction
TRIANGULAR FINITE ELEMENTS MINIMUM MEAN SQUARE ERROR PREDICTION (COLLOCATION) interpolated interpolated true true Deterministic interpolation Interpolation by stochastic prediction Piecewise linear displacements Piecewise constant deformation parameters Continuous displacements Continuous deformation parameters

74 Spatial interpolation or prediction
TRIANGULAR FINITE ELEMENTS MINIMUM MEAN SQUARE ERROR PREDICTION (COLLOCATION) interpolated interpolated true true Deterministic interpolation Interpolation by stochastic prediction Piecewise linear displacements Piecewise constant deformation parameters Continuous displacements Continuous deformation parameters Observation errors completely absorbed in deformation parameters estimates Observation errors partially removed by interpolation smoothing

75 Spatial interpolation or prediction
TRIANGULAR FINITE ELEMENTS MINIMUM MEAN SQUARE ERROR PREDICTION (COLLOCATION) interpolated interpolated true true Deterministic interpolation Interpolation by stochastic prediction Piecewise linear displacements Piecewise constant deformation parameters Continuous displacements Continuous deformation parameters Observation errors completely absorbed in deformation parameters estimates Observation errors partially removed by interpolation smoothing Accuracy estimates of deformation parameters reflect only data uncertainty Accuracy estimates of deformation parameters reflect both data and interpolation uncertainty

76 Principal linear elongation factors
vs principal strains A comparison

77 Linear elongations and strains
Linear elongation factors Definitions

78 Linear elongations and strains
Linear elongation factors Definitions Computation from diagonalizations

79 Linear elongations and strains
Linear elongation factors Definitions Computation from diagonalizations Interpretation clear meaning ! Meaning ?

80 Linear elongations and strains
Linear elongation factors Definitions Computation from diagonalizations Interpretation clear meaning ! Meaning ? Relation

81 National permanent GPS network
Case study: National permanent GPS network in Central Japan

82

83 Case study: Central Japan
Original velocities

84 Case study: Central Japan
Original velocities Reduced velocities (removal of rotation)

85 Case study: Central Japan
Reduced velocities

86 Case study: Central Japan
Division in 3 regions. Relative velocities w.r. region R2 after removal of rigid rotations

87 Linear elongation factors max = 1, min = 2
FINITE ELEMENTS SEPARATE COLLOCATIONS IN EACH REGION

88 Dilatation  and shear 
FINITE ELEMENTS COLLOCATION

89 SNR = Signal to Noise Ration
FINITE ELEMENTS COLLOCATION

90 SNR = Signal to Noise Ration
FINITE ELEMENTS COLLOCATION

91 Linear trends in each sub-region
(max-1)  106 0.001  0.013 (min-1)  106 0.116  0.021 69.5  5.8   106 0.117  0.024   106 0.116  0.026 24.5  5.8 R3 R3 (max-1)  106 0.004  0.007 (min-1)  106 0.072  0.008 89.6  3.9   106 0.068  0.011   106 0.076  0.011 134.6  3.9 R2 R2 R1 (max-1)  106 0.002  0.006 (min-1)  106 0.044  0.008 57.1  6.0   106 0.043  0.010   106 0.046  0.010 12.1  6.0 R1

92 Conclusions Minimum Mean Square Error Prediction (collocation) has the following advantages: - Produces continuous results for any desired point in the region of application -Provides smooth results where the effect of the data errors is partially removed - Provides more realistic variances-covariances which in addition to the data uncertainty reflect also the interpolation uncertainty

93 http://der.topo.auth.gr/ THANKS FOR YOUR ATTENTION
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