2023
DOI: 10.1093/gji/ggad455
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GIA imaging of 3-D mantle viscosity based on palaeo sea level observations – Part I: Sensitivity kernels for an Earth with laterally varying viscosity

Andrew J Lloyd,
Ophelia Crawford,
David Al-Attar
et al.

Abstract: SUMMARY A key initial step in geophysical imaging is to devise an effective means of mapping the sensitivity of an observation to the model parameters, that is to compute its Fréchet derivatives or sensitivity kernel. In the absence of any simplifying assumptions and when faced with a large number of free parameters, the adjoint method can be an effective and efficient approach to calculating Fréchet derivatives and requires just two numerical simulations. In the Glacial Isostatic Adjustment pro… Show more

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Cited by 2 publications
(1 citation statement)
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“…The first model-hereafter the 'numerical model, no oceans' (NM-NO)-calculates surface deformation and gravity field changes using a numerical approach that does not employ normal modes. The model solves the rate formulation of the GIA problem in which scalar, vector, and tensor fields are represented using the canonical basis vectors of Phinney and Burridge (1973), which rely on generalized spherical harmonics (Al-Attar and Tromp, 2014;Crawford et al, 2018;Lloyd et al, 2023). The code was designed for inverse modeling using adjoint methods.…”
Section: Gia Model Descriptionmentioning
confidence: 99%
“…The first model-hereafter the 'numerical model, no oceans' (NM-NO)-calculates surface deformation and gravity field changes using a numerical approach that does not employ normal modes. The model solves the rate formulation of the GIA problem in which scalar, vector, and tensor fields are represented using the canonical basis vectors of Phinney and Burridge (1973), which rely on generalized spherical harmonics (Al-Attar and Tromp, 2014;Crawford et al, 2018;Lloyd et al, 2023). The code was designed for inverse modeling using adjoint methods.…”
Section: Gia Model Descriptionmentioning
confidence: 99%