Dynamic topography, phase boundary topography and latent-heat release Bernhard Steinberger Center...
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Transcript of Dynamic topography, phase boundary topography and latent-heat release Bernhard Steinberger Center...
Dynamic topography, phase boundary topography and latent-heat release
Bernhard Steinberger
Center for Geodynamics, NGU, Trondheim, Norway
Prediction of surface uplift and subsidence over time on a large scale is one of the most important outcomes of mantle flow models
•Dynamic topography influences which regions are below sea level, and at what depth, and therefore where sediments and related natural resources may form•Before attempting to compute uplift and subsidence in the geologic past, we must first understand present-day dynamic topography
Present-day topography
•Dynamic topography influences which regions are below sea level, and at what depth, and therefore where sediments and related natural resources may form•Before attempting to compute uplift and subsidence in the geologic past, we must first understand present-day dynamic topography
Present-day topography + 200 m
•Dynamic topography influences which regions are below sea level, and at what depth, and therefore where sediments and related natural resources may form•Before attempting to compute uplift and subsidence in the geologic past, we must first understand present-day dynamic topography
Present-day topography minus 200 m
Actual topography
Spherical harmonicexpansion of observed topography to degree 31
What to compare computations to for present-day
Actual topography
MINUSIsostatic topography
Computed based on densities and thicknesses of crustal layers inCRUST 2.0 model(Laske, Masters and Reif)http://mahi.ucsd.edu/Gabi/rem.html
Non-isostatic topography
MINUSThermal topography
Computed from the age_2.0 ocean floor age grid (Müller, Gaina, Sdrolias and Heine, 2005) for ages < 100 Ma
residual topography, l=1-31
residual topography, l=1-31Values above sea level multipliedwith factor 1.45, because dynamictopography is computed for globalseawater coverage
residual topography, l=1-12, above sea level mulitiplied with 1.45
residual topography, l=1-31
residual topography, l=1-31 Above sea level multiplied with 1.45
residual topography, l=1-12, our model
RMS amplitude 0.52 km
Model by Panasyuk and Hager (2000)
RMS amplitude 0.52 km
Correlation coefficient 0.74
residual topography, l=1-12, our model
RMS amplitude 0.52 km
Model by Kaban et al. (2003)
RMS amplitude 0.64 km
Correlation coefficient 0.86
Radial stress kernels Kr,l(z) describe how much a density anomaly lmat a depth z contributes to dynamic topography:
Computed for global water coverage: s= 2280 kg/m3
Figure from Steinberger, Marquart and Schmeling (2001)
l=2
l=31
l=2
l=31
l=2
l=31
l=2
l=31
Kr,l(z)
•Densities inferred from S-wave tomography -- here: model S20RTS (Ritsema et al., 2000)•Conversion factor ~ 0.25 (Steinberger and Calderwood, 2006) – 4 % velocity variation ~~ 1 % density variation
Depth 300 km
4.8 4.0 3.2 2.4 1.6 0.8 0.0 -0.8 -1.6 -2.4 -3.2 -4.0
•Densities inferred from S-wave tomography -- here: model S20RTS (Ritsema et al., 2000) •Disregard velocity anomalies above 220 km depth
Depth 200 km
4.8 4.0 3.2 2.4 1.6 0.8 0.0 -0.8 -1.6 -2.4 -3.2 -4.0
Dynamic topography •Spectral method (Hager and O’Connell, 1979,1981) for computation of flow and stresses•NUVEL plate motions for surface boundary condition (results remain similar with free-slip and no-slip surface)•Radial viscosity variation only
RMS amplitude 1.07 kmWith other tomography models:0.63 km [Grand] to 1.47 km [SB4L18, Masters et al., 2000]
Viscosity profile fromSteinberger and Calderwood (2006)
Dynamic topographyRMS amplitude 1.07 km With other tomography models:0.63 to 1.47 km
Correlation 0.33With other tomography models:0.30 to 0.53
Residual topography RMS amplitude 0.52 kmOther models: 0.47 to 0.64 km
Predicted “410” topography Thermal effect onlyRMS amplitude 4.81 kmWith other tomography models: 2.85 to 7.43 km
Predicted “410” topography Thermal effect onlyRMS amplitude 4.81 kmWith other tomography models: 2.85 to 7.43 km
Observed “410” topographyGu, Dziewonski, Ekström (2003)RMS amplitude 5.24 kmOther models: 3.90 to 5.24 kmCorrelation between different ”observed” models 0.10 to 0.44
Correlation 0.37With computation based on other tomography models:0.27 to 0.42
Predicted “660” topography Thermal effect onlyRMS amplitude 4.57 kmWith other tomography models: 2.69 to 5.59 km
Observed “660” topographyGu, Dziewonski, Ekstrøm (2003)RMS amplitude 7.31 kmOther models: 6.98 to 7.31 kmCorrelation between different “observed” models 0.33 to 0.50
Correlation 0.35With computation based on other tomography models:0.06 to 0.35
Correlation with “410”: -0.80 (-0.21 to -0.80 with other models)
Correlation with “410”: 0.24 (0.24 to 0.49 with other models)
Predicted TZ thickness variationThermal effect onlyRMS amplitude 8.89 kmWith other tomography models: 5.05 to 11.86 km
Observed TZ thickness variationGu, Dziewonski, Ekstrøm (2003)RMS amplitude 7.92 kmOther models: 6.52 to 7.92 kmCorrelation between different “observed” models 0.30 to 0.41
Correlation 0.51With computation based on other tomography models:0.36 to 0.51
Dynamic topography – correlation with predicted TZ thickness variation –0.77With other tomography models: -0.48 to –0.89
Residual topography - correlationwith observed TZ thickness variation –0.17Other models: -0.17 to 0.02
Summary of results with thermal effect only:
•Predicted dynamic topography bigger than observed
•Predicted topography “660” smaller than observed
Summary of results with thermal effect only:
•Predicted dynamic topography bigger than observed
•Predicted topography “660” smaller than observed
•“410” and “660” topography correlation predicted negative, observed positive
Summary of results with thermal effect only:
•Predicted dynamic topography bigger than observed
•Predicted topography “660” smaller than observed
•“410” and “660” topography correlation predicted negative, observed positive
•TZ thickness and dyn. topography correlation predicted negative, obs. ~ zero
Summary of results with thermal effect only:
•Predicted dynamic topography bigger than observed
•Predicted topography “660” smaller than observed
•“410” and “660” topography correlation predicted negative, observed positive
•TZ thickness and dyn. topography correlation predicted negative, obs. ~ zero
•Correlations between predicted and observed models not too good
410 km: Phase boundary with positive Clapeyron slope
Latent heat causes HIGHER temperature BELOW
Phase boundary topography by latent
heat effects (Christensen, 1998, EPSL)
660 km: Phase boundary with negative Clapeyron slope
Latent heat causes LOWER temperature BELOW
In both cases:
Temperature gradient on upstream side
Constant temperature on downstream side
Boundary displaced in direction of flow
410 km: Phase boundary with positive Clapeyron slope
Latent heat causes HIGHER temperature BELOW
660 km: Phase boundary with negative Clapeyron slope
Latent heat causes LOWER temperature BELOW
In both cases:
Temperature gradient on upstream side
Constant temperature on downstream side
Boundary displaced in direction of flow
Phase boundary topography by latent
heat effects (Christensen, 1998, EPSL)
LQ = g cp) = 3.8 km cp = specific heat capacity
LQ = 4.4 km
For divariant phase change,
amount of displacement depends
on flow speed
410 km
410 km
660 km
660 km
For divariant phase change,
amount of displacement depends
on flow speed
410 km
410 km
660 km
660 km
V=
Z=
Computed flow speed – Depth 410 km
Computed flow speed – Depth 660 km
Density model inferred from S20RTS (Ritsema et al., 2000)
“660” phase boundary displacement
Thermal effect
Latent heat effect
•Predicted topography “660” smaller than observed•Increases by including latent heat effect (but not enough – note different scale!)
depth 660 km
Phase boundary displacement due to latent heat– depth 410 km
•“410” and “660” topography correlation predicted negative, observed positive•Latent heat effect displaces phase boundaries in same direction and hence contributes towards less negative correlation (but not enough – note different scale!)
depth 660 km
Phase boundary displacement due to latent heat – depth 410 km
Effect of latent heat effect on dynamic topography
Effect of latent heat effect on dynamic topography
Dynamic topography with thermal effect only
•Computed dynamic topography bigger than observed•Including latent heat effect reduces dynamic topography (note opposite sense of color scale! - but not enough – note different scale)
Residual topography RMS 0.52 km
•Computed dynamic topography bigger than observed•Including latent heat effect reduces dynamic topography •Including latent heat effect
generally somewhat increases correlations (but not by much)
Correlation 0.34
Dynamic topography with computed phase boundariesRMS 1.02 km
Residual topography -- RMS 0.52 km
•Including latent heat effect generally somewhat increases correlations (but not by much)
•Replacing computed by observed phase boundary topography in the calculation of dynamic topography generally does not improve results
Correlation 0.34
Dynamic topography with computed phase boundaries -- RMS 1.02 km
Dynamic topography with observed phase boundaries -- RMS 0.98 km Correlation
0.26
Outlook: Understanding of present-day dynamic topography A multi-disciplinary approach is required, including, but not limited to the following aspects•Improving both seismic and geodynamic models of phase boundary topography•Improving mantle density models, in particular in the lithosphere•More realistic and laterally variable rheology, in particular in the lithosphere•Regional computations