Abstract

Soil moisture plays an important role in understanding climate change and hydrology, and L-band passive microwave radiometers have been verified as effective tools for monitoring soil moisture. This paper proposes a novel, simplified algorithm for bare surface soil moisture retrieval using L-band radiometer. The algorithm consists of two sub-algorithms: a surface emission model and a soil moisture retrieval model. In analyses of the advanced integral equation model (AIEM) simulated database, the surface emission model was developed to diminish the effects of surface roughness using dual-polarization surface reflectivity. The soil moisture retrieval model, which was calibrated using the Dobson simulated database, is based on the relationship between the adjusted real refractive index N r and the volumetric soil moisture. Soil moisture can be determined via a numerical solution that uses several freely available input parameters: dual-polarization microwave brightness temperature, surface temperature, and the contents of sand and clay. The results showed good agreement with the input soil moisture values simulated by the AIEM model, with root mean square errors (RMSEs) lower than 3% at all incidence angles. The algorithm was then verified based on data from the four-year L-band experiments conducted at Beltsville Agricultural Research Center (BARC) test sites, achieving RMSEs of 4.3% and 3.4% at 40° and 50°, respectively. These results indicate that the simplified algorithm proposed in this paper shows a very good accuracy in soil moisture retrieval. Additionally, the algorithm exhibits a better performance for the large incidence angle radiometers in L-band such as those produced by the Soil Moisture Active and Passive (SMAP).

Highlights

  • Soil moisture is an important parameter in the global energy balance and water cycle

  • The objective of this study is to develop a new algorithm that can be applied for L-band soil moisture retrieval

  • Soil Moisture Estimation with Simulated Data To calibrate the coefficients of the surface emission model (Equation (8)), we generated a simulated surface emission database under the sensor parameters of the Soil Moisture and Ocean Salinity (SMOS) frequency, including 1.41 GHz and V- and H-polarization, using the advanced integral equation model (AIEM) model

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Summary

Introduction

Soil moisture is an important parameter in the global energy balance and water cycle. It plays a crucial role in water resources management, vegetation growth, flood monitoring, and climate prediction [1,2,3]. Remote sensing is one of the most effective tools used in soil moisture monitoring due to its wide range of observations and the high frequency of repeated measurements. Microwave remote sensing is considered an effective way to measure soil moisture because it can penetrate clouds and vegetation and works in both daytime and nighttime in all-weather conditions, in L-band. Many satellite missions use L-band radiometers for soil moisture monitoring. The Soil Moisture and Ocean Salinity (SMOS) mission uses a multi-angle L-band radiometer [1], while the Soil Moisture Active and Passive (SMAP)

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