Abstract

Soil moisture (SM) is one of the key measures to understand the land-atmosphere interaction and permafrost dynamics in the Qinghai-Tibet Plateau (QTP). ERA5-Land is a new reanalysis product with high spatial resolution (9 km), which can provide long-term SM data with a large spatial coverage as well as at multi-layer soil depths. However, preliminary comparisons with <i>in-situ</i> data show that the ERA5-Land SM product generally underestimates the seasonal variability and demonstrate a positive bias on the QTP. In this paper, we proposed to utilize the mode decomposition method to correct such bias. Specifically, through using the variational mode decomposition (VMD), we decomposed the long time-series of ERA5-Land SM data into a series of Intrinsic Mode Functions (IMFs), and found that the SM seasonal variation can be well represented by the low-frequency modes, which were then selected to feed a regression model for the bias correction. The single-site bias correction results show that our method significantly improves the accuracy of ERA5-Land SM product with bias reduced by 0.22 m<sup>3</sup>&#x002F;m<sup>3</sup>, 0.31 m<sup>3</sup>&#x002F;m<sup>3</sup>, 0.15 m<sup>3</sup>&#x002F;m<sup>3</sup> for alpine meadow, alpine steppe, and alpine desert sites respectively. Together with the slightly reduced accuracy but still acceptable results for the cross-site bias correction, we successfully demonstrate the potential of the mode decomposition method for the bias correction of the ERA5-Land SM product at regional scale. Our method is of great use to study climate impact on regional ecohydrological processes and the permafrost changes in the QTP region.

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