Understanding Sampling Bias in the Global Heat Flow Compilation

This is a Preprint and has not been peer reviewed. The published version of this Preprint is available: https://doi.org/10.3389/feart.2022.963525. This is version 2 of this Preprint.

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Comment #71 Tobias Stål @ 2022-08-17 17:25

The manuscript has now been accepted for publication with some minor corrections and clarifications.
https://doi.org/10.3389/feart.2022.963525

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Authors

Tobias Stål , Anya M. Reading, Sven Fuchs, Jacqueline A Halpin, Mareen Lösing, Ross J. Turner

Abstract

Geothermal heat flow is commonly inferred from the gradient of temperature values in boreholes. Such measurements are expensive and logistically challenging in remote locations and, therefore, often targeted to regions of economic interest. As a result, measurements are not distributed evenly. Some tectonic, geologic and even topographic settings are overrepresented in global heat flow compilations; other settings are underrepresented or completely missing. These limitations in representation have implications for empirical heat flow models that use catalogue data to assign heat flow by the similarity of observables.

In this contribution, we analyse the sampling bias in the Global Heat Flow Database of the International Heat Flow Commission (IHFC), the most recent and extensive heat flow catalogue, and discuss the implications for accurate prediction and global appraisals. We also suggest correction weights to reduce the bias when the catalogue is used for empirical modelling.

From comparison with auxiliary variables, we find that each of the following settings is highly overrepresented for heat flow measurements; continental crust, sedimentary rocks, volcanic rocks, and Phanerozoic regions with hydrocarbon exploration. Oceanic crust, cratons, and metamorphic rocks are underrepresented. The findings also suggest a general tendency to measure heat flow in areas where the values are elevated; however, this conclusion depends on which auxiliary variable is under consideration to determine the settings. We anticipate that the use of our correction weights to balance disproportional representation will improve empirical heat flow models for remote regions and assist in the ongoing assessment of the Global Heat Flow Database.

DOI

https://doi.org/10.31223/X5592T

Subjects

Databases and Information Systems, Earth Sciences, Geology, Tectonics and Structure

Keywords

Heat flow, Geothermal, sampling bias, compilation, thermal, regionalisation, geomorphometrics

Dates

Published: 2022-06-17 16:36

Last Updated: 2022-08-17 18:24

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License

CC BY Attribution 4.0 International

Additional Metadata

Conflict of interest statement:
None

Data Availability (Reason not available):
https://zenodo.org/record/6626377