Environmental Research Letters (Jan 2022)

Irrigation characterization improved by the direct use of SMAP soil moisture anomalies within a data assimilation system

  • Yonghwan Kwon,
  • Sujay V Kumar,
  • Mahdi Navari,
  • David M Mocko,
  • Eric M Kemp,
  • Jerry W Wegiel,
  • James V Geiger,
  • Rajat Bindlish

DOI
https://doi.org/10.1088/1748-9326/ac7f49
Journal volume & issue
Vol. 17, no. 8
p. 084006

Abstract

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Prior soil moisture data assimilation (DA) efforts to incorporate human management features such as agricultural irrigation has only shown limited success. This is partly due to the fact that observational rescaling approaches for bias correction used in soil moisture DA systems are less effective when unmodeled processes such as irrigation are the dominant source of systematic biases. In this article, we demonstrate an alternative approach, i.e. anomaly correction for overcoming this limitation. Unlike the rescaling approaches, the proposed method does not scale remote sensing soil moisture retrievals to the model climatology, but it extracts the temporal variability information from the retrievals. The study demonstrates this approach through the assimilation of soil moisture retrievals from the Soil Moisture Active Passive mission into the Noah land surface model. The results demonstrate that DA using the anomaly correction method can better capture the effect of irrigation on soil moisture in agricultural areas while providing comparable performance to the DA integrations using rescaling approaches in non-irrigated areas. These findings emphasize the need to reduce inconsistencies between remote sensing and the models so that assimilation methods can employ information from remote sensing more directly to develop representations of unmodeled processes such as irrigation.

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