Toward Understanding Parametric Controls on Runoff Sensitivity to Climate in the Community Land Model: A Case Study Over the Colorado River Headwaters

Ahmed Elkouk, Yadu Pokhrel, Ben Livneh, Elizabeth Payton, Lifeng Luo, Yifan Cheng, Katherine Dagon, Sean Swenson, Andrew W. Wood, David M. Lawrence, Wim Thiery

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Crucial to the assessment of future water security is how the land model component of Earth System Models partition precipitation into evapotranspiration and runoff, and the sensitivity of this partitioning to climate. This sensitivity is not explicitly constrained in land models nor the model parameters important for this sensitivity identified. Here, we seek to understand parametric controls on runoff sensitivity to precipitation and temperature in a state-of-the-science land model, the Community Land Model version 5 (CLM5). Process-parameter interactions underlying these two climate sensitivities are investigated using the sophisticated variance-based sensitivity analysis. This analysis focuses on three snow-dominated basins in the Colorado River headwaters region, a prominent exemplar where land models display a wide disparity in runoff sensitivities. Runoff sensitivities are dominated by indirect or interaction effects between a few parameters of subsurface, snow, and plant processes. A focus on only one kind of parameters would therefore limit the ability to constrain the others. Surface runoff exhibits strong sensitivity to parameters of snow and subsurface processes. Constraining snow simulations would require explicit representation of the spatial variability across large elevation gradients. Subsurface runoff and soil evaporation exhibit very similar sensitivities. Model calibration against the subsurface runoff flux would therefore constrain soil evaporation. The push toward a mechanistic treatment of processes in CLM5 have dampened the sensitivity of parameters compared to earlier model versions. A focus on the sensitive parameters and processes identified here can help characterize and reduce uncertainty in water resource sensitivity to climate change.

Original languageEnglish
Article numbere2024WR037718
JournalWater Resources Research
Volume60
Issue number12
DOIs
StatePublished - Dec 2024

Keywords

  • Colorado River
  • climate change
  • hydrologic sensitivity
  • land model
  • parameter sensitivity
  • runoff sensitivity

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