Probabilistic Petrophysical Reconstruction of Danta's Alpine Peatland via Electromagnetic Induction Data

Author:

Zaru N.1,Silvestri S.2ORCID,Assiri M.3,Bai P.4,Hansen T. M.5ORCID,Vignoli G.16ORCID

Affiliation:

1. DICAAR University of Cagliari Cagliari Italy

2. Department of Biological, Geological, and Environmental Sciences University of Bologna Ravenna Italy

3. TESAF University of Padua Padua Italy

4. SINOPEC Geophysical Research Institute Co. Ltd. Nanjing China

5. Department of Geoscience Aarhus University Aarhus Denmark

6. Near Surface Land and Marine Geology Department GEUS Aarhus Denmark

Abstract

AbstractPeatlands are fundamental deposits of organic carbon. Thus, their protection is of crucial importance to avoid emissions from their degradation. Peat is a mixture of organic soil that originates from the accumulation of wetland plants under continuous or cyclical anaerobic conditions for long periods. Hence, a precise quantification of peat deposits is extremely important; for that, remote‐ and proximal‐sensing techniques are excellent candidates. Unfortunately, remote‐sensing can provide information only on the few shallowest centimeters, whereas peatlands often extend to several meters in depth. In addition, peatlands are usually characterized by difficult (flooded) terrains. So, frequency‐domain electromagnetic instruments, as they are compact and contactless, seem to be the ideal solution for the quantitative assessment of the extension and geometry of peatlands. Generally, electromagnetic methods are used to infer the electrical resistivity of the subsurface. In turn, the resistivity distribution can, in principle, be interpreted to infer the morphology of the peatland. Here, to some extent, we show how to shortcut the process and include the expectation and uncertainty regarding the peat resistivity directly into a probabilistic inversion workflow. The present approach allows for retrieving what really matters: the spatial distribution of the probability of peat occurrence, rather than the mere electrical resistivity. To evaluate the efficiency and effectiveness of the proposed probabilistic approach, we compare the outcomes against the more traditional deterministic fully nonlinear (Occam's) inversion and against some boreholes available in the investigated area.

Funder

Università degli Studi di Padova

Istituto Nazionale Previdenza Sociale

Fondazione di Sardegna

Innovationsfonden

Publisher

American Geophysical Union (AGU)

Reference93 articles.

1. Bai P.(2022).Stochastic inversion of time domain electromagnetic data with non‐trivial prior(Ph.D. Thesis).University of Cagliari. Retrieved fromhttps://iris.unica.it/handle/11584/328807

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4. Resistivity and Induced Polarization

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