support@kaust.edu.sa
+966 (12) 808-3463
logo-black
  • Home
  • People
    • Current
    • Alumni
    • Visiting Students
  • Research
  • Publications
    • 2020
    • 2019
    • 2018
    • 2017
    • 2016
    • 2015
    • 2014
    • 2013
  • Data
  • News
  • Contact us
Hydrology, Agriculture and Land Observation
breadcrumb-bg

Retrieval of High-Resolution Soil Moisture through Combination of Sentinel-1 and Sentinel-2 Data

  1. Home
  2. Publications
  3. 2020
  • Clear filters

Retrieval of High-Resolution Soil Moisture through Combination of Sentinel-1 and Sentinel-2 Data

by Ch. Ma, X. Li, M.F. McCabe
Year: 2020 DOI: 10.3390/rs12142303

Extra Information

Remote Sens. 2020, 12(14), 2303

Abstract

Estimating soil moisture based on synthetic aperture radar (SAR) data remains challenging due to the influences of vegetation and surface roughness. Here we present an algorithm that simultaneously retrieves soil moisture, surface roughness and vegetation water content by jointly using high-resolution Sentinel-1 SAR and Sentinel-2 multispectral imagery, with an application directed towards the provision of information at the precision agricultural scale. Sentinel-2-derived vegetation water indices are investigated and used to quantify the backscatter resulting from the vegetation canopy. The proposed algorithm then inverts the water cloud model to simultaneously estimate soil moisture and surface roughness by minimizing a cost function constructed by model simulations and SAR observations. To examine the performance of VV- and VH-polarized backscatters on soil moisture retrievals, three retrieval schemes are explored: a single channel algorithm using VV (SCA-VV) and VH (SCA-VH) polarizations and a dual channel algorithm using both VV and VH polarizations (DCA-VVVH). An evaluation of the approach using a combination of a cosmic-ray soil moisture observing system (COSMOS) and Soil Climate Analysis Network measurements over Nebraska shows that the SCA-VV scheme yields good agreement at both the COSMOS footprint and single-site scales. The features of the algorithms that have the most impact on the retrieval accuracy include the vegetation water content estimation scheme, parameters of the water cloud model and the specification of initial ranges of soil moisture and roughness, all of which are comprehensively analyzed and discussed. Through careful consideration and selection of these factors, we demonstrate that the proposed SCA-VV approach can provide reasonable soil moisture retrievals, with RMSE ranging from 0.039 to 0.078 m3/m3 and R2 ranging from 0.472 to 0.665, highlighting the utility of SAR for application at the precision agricultural scale.

Keywords

synthetic aperture radar precision agriculture microwave remote sensing Soil moisture
logo-white

"KAUST shall be a beacon for peace, hope and reconciliation, and shall serve the people of the Kingdom and the world."

King Abdullah bin Abdulaziz Al Saud, 1924 – 2015

Contact Us

  • matthew.mccabe@kaust.edu.sa
  • hydrology@kaust.edu.sa
  • 4700 King Abdullah University of Science and Technology

    Thuwal 23955-6900

    Kingdom of Saudi Arabia

Quick links

  • Data
  • Contact us

© King Abdullah University of Science and Technology. All rights reserved

Privacy Policy
Terms of Use
Loading...