4.7 Article

Deforestation reshapes land-surface energy-flux partitioning

期刊

ENVIRONMENTAL RESEARCH LETTERS
卷 16, 期 2, 页码 -

出版社

IOP Publishing Ltd
DOI: 10.1088/1748-9326/abd8f9

关键词

climate change; deforestation; cause-effect relationship; earth system model

资金

  1. Reducing Uncertainties in Biogeochemical Interactions through Synthesis and Computation (RUBISCO) Scientific Focus Area
  2. Energy Exascale Earth System Modeling (E3SM) Project - Earth and Environmental Systems Modeling (EESM) Program under the Office of Biological and Environmental Research of the US Department of Energy Office of Science
  3. US Department of Energy [DE-AC02-05CH11231]
  4. Laboratory Directed Research and Development project - Pacific Northwest National Laboratory of the US Department of Energy

向作者/读者索取更多资源

Changes in land use and land cover can significantly impact land-surface characteristics, water/energy exchanges, atmospheric circulation, and regional climate. Deforestation is a major driver of global land-use changes, converting forests into other land cover types. Information theory-based transfer entropy is a powerful tool for understanding the causal relationships between land-atmosphere-water/energy flux responses to deforestation.
Land-use and land-cover change significantly modify local land-surface characteristics and water/energy exchanges, which can lead to atmospheric circulation and regional climate changes. In particular, deforestation accounts for a large portion of global land-use changes, which transforms forests into other land cover types, such as croplands and grazing lands. Many previous efforts have focused on observing and modeling land-atmosphere-water/energy fluxes to investigate land-atmosphere coupling induced by deforestation. However, interpreting land-atmosphere-water/energy-flux responses to deforestation is often complicated by the concurrent impacts from shifts in land-surface properties versus background atmospheric forcings. In this study, we used 29 paired FLUXNET sites, to improve understanding of how deforested land surfaces drive changes in surface-energy-flux partitioning. Each paired sites included an intact forested and non-forested site that had similar background climate. We employed transfer entropy, a method based on information theory, to diagnose directional controls between coupling variables, and identify nonlinear cause-effect relationships. Transfer entropy is a powerful tool to detective causal relationships in nonlinear and asynchronous systems. The paired eddy covariance flux measurements showed consistent and strong information flows from vegetation activity (gross primary productivity (GPP)) and physical climate (e.g. shortwave radiation, air temperature) to evaporative fraction (EF) over both non-forested and forested land surfaces. More importantly, the information transfers from radiation, precipitation, and GPP to EF were significantly reduced at non-forested sites, compared to forested sites. We then applied these observationally constrained metrics as benchmarks to evaluate the Energy Exascale Earth System Model (E3SM) land model (ELM). ELM predicted vegetation controls on EF relatively well, but underpredicted climate factors on EF, indicating model deficiencies in describing the relationships between atmospheric state and surface fluxes. Moreover, changes in controls on surface energy flux partitioning due to deforestation were not detected in the model. We highlight the need for benchmarking model simulated surface-energy fluxes and the corresponding causal relationships against those of observations, to improve our understanding of model predictability on how deforestation reshapes land surface energy fluxes.

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