Abstract

Abstract. The prevalent soil moisture probe algorithms are based on a polynomial function that does not account for the variability in soil organic matter. Users are expected to choose a model before application: either a model for mineral soil or a model for organic soil. Both approaches inevitably suffer from limitations with respect to estimating the volumetric soil water content in soils with a wide range of organic matter content. In this study, we propose a new algorithm based on the idea that the amount of soil organic matter (SOM) is related to major uncertainties in the in situ soil moisture data obtained using soil probe instruments. To test this theory, we derived a multiphase inversion algorithm from a physically based dielectric mixing model capable of using the SOM amount, performed a selection process from the multiphase model outcomes, and tested whether this new approach improves the accuracy of soil moisture (SM) data probes. The validation of the proposed new soil probe algorithm was performed using both gravimetric and dielectric data from the Soil Moisture Active Passive Validation Experiment in 2012 (SMAPVEX12). The new algorithm is more accurate than the previous soil-probe algorithm, resulting in a slightly improved correlation (0.824 to 0.848), 12 % lower root mean square error (RMSE; 0.0824 to 0.0727 cm3 cm−3), and 95 % less bias (−0.0042 to 0.0001 cm3 cm−3). These results suggest that applying the new dielectric mixing model together with global SOM estimates will result in more reliable soil moisture reference data for weather and climate models and satellite validation.

Highlights

  • Soil moisture (SM) plays a critical role in weather and climate by affecting atmospheric variables via latent and sensible heat exchange

  • It showed that the existing probe soil moisture could not follow both features that appeared in the measurements

  • It means that soil organic carbon is a critical factor in the application of the soil moisture sensors from portable to satellite based

Read more

Summary

Introduction

Soil moisture (SM) plays a critical role in weather and climate by affecting atmospheric variables via latent and sensible heat exchange. Near-surface air temperature can be affected by the evapotranspiration of surface and root zone soil moisture. Soil moisture influences precipitation formation and storm tracks by coupling with the atmosphere (Koster et al, 2004; Taylor et al, 2012; Guillod et al, 2015; Santanello et al, 2018, 2019; Zhang et al, 2019). Inaccurate SM information in the land-surface model hinders accurate predictions of extreme climate and weather because of unrealistic land–atmosphere interactions that result from uncertainties in air temperature, moisture, dynamics, cloud formation, and precipitation

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call