Ground Heat Flux Reconstruction Using Bayesian Uncertainty Quantification Machinery and Surrogate Modeling

Author:

Zhou Wenbo1ORCID,Zhang Liujing1,Sheshukov Aleksey2ORCID,Wang Jingfeng3ORCID,Zhu Modi3ORCID,Sargsyan Khachik4ORCID,Xu Donghui5ORCID,Liu Desheng6,Zhang Tianqi6ORCID,Mazepa Valeriy7ORCID,Sokolov Alexandr8,Valdayskikh Victor9ORCID,Ivanov Valeriy1ORCID

Affiliation:

1. Department of Civil and Environmental Engineering University of Michigan Ann Arbor MI USA

2. Department of Biological and Agricultural Engineering Kansas State University Manhattan KS USA

3. School of Civil and Environmental Engineering Georgia Institute of Technology Atlanta GA USA

4. Sandia National Laboratories Livermore CA USA

5. Pacific Northwest National Laboratory Richland WA USA

6. Department of Geography Ohio State University Columbus OH USA

7. Institute of Plant and Animal Ecology the Ural Branch of the Russian Academy of Sciences Yekaterinburg Russia

8. Arctic Research Station Institute of Plant and Animal Ecology the Ural Branch of the Russian Academy of Sciences Labytnangi Russia

9. Ural Federal University Yekaterinburg Russia

Abstract

AbstractGround heat flux (G0) is a key component of the land‐surface energy balance of high‐latitude regions. Despite its crucial role in controlling permafrost degradation due to global warming, G0 is sparsely measured and not well represented in the outputs of global scale model simulation. In this study, an analytical heat transfer model is tested to reconstruct G0 across seasons using soil temperature series from field measurements, Global Climate Model, and climate reanalysis outputs. The probability density functions of ground heat flux and of model parameters are inferred using available G0 data (measured or modeled) for snow‐free period as a reference. When observed G0 is not available, a numerical model is applied using estimates of surface heat flux (dependent on parameters) as the top boundary condition. These estimates (and thus the corresponding parameters) are verified by comparing the distributions of simulated and measured soil temperature at several depths. Aided by state‐of‐the‐art uncertainty quantification methods, the developed G0 reconstruction approach provides novel means for assessing the probabilistic structure of the ground heat flux for regional permafrost change studies.

Funder

National Science Foundation

Russian Foundation for Basic Research

Ministry of Education and Science of the Russian Federation

Publisher

American Geophysical Union (AGU)

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