2022
DOI: 10.2205/2022es000809
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Inverse-forward method for heat flow estimation: case study for the Arctic region

Abstract: The heat flow data are important in many aspects including interpretation of various geophysical observations, solutions of important engineering problems, modelling of the ice dynamics, and related environmental assessment. However, the distribution of the direct measurements is quite heterogeneous over the Earth. Different methods have been developed during past decades to create continuous maps of the geothermal heat flow (GHF). Most of them are based on the principle of similarity of GHF values for the lit… Show more

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Cited by 4 publications
(2 citation statements)
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“…Seismic tomography models provide consistent images of the mantle, but usually with low resolution [19]. Furthermore, variations of seismic velocities could be associated with both thermal and compositional anomalies, for which effects cannot be divided without additional information [20,21]. Heat flow determinations are also very sparse and unevenly distributed.…”
Section: Geological and Tectonic Backgroundmentioning
confidence: 99%
See 1 more Smart Citation
“…Seismic tomography models provide consistent images of the mantle, but usually with low resolution [19]. Furthermore, variations of seismic velocities could be associated with both thermal and compositional anomalies, for which effects cannot be divided without additional information [20,21]. Heat flow determinations are also very sparse and unevenly distributed.…”
Section: Geological and Tectonic Backgroundmentioning
confidence: 99%
“…To fill these gaps, we used theoretical models for global heat flux [51,52], which are based on interpolating measured data to account for the structure of the lithosphere (Figure 8A,B). Then, a method was developed for estimating the surface heat flux using inversion of seismic and magnetic data, supported by direct measurements [21]. This approach allows for using all available indirect data on the thermal structure of the lithosphere to build a thermal model by the optimization method and minimize errors arising from the uncertainty of input data.…”
Section: Heat Mapmentioning
confidence: 99%