Abstract

Soil heat flux (G) is an important component for the closure of the surface energy balance (SEB) and the estimation of evapotranspiration (ET) by remote sensing algorithms. Over the last decades, efforts have been focused on parameterizing empirical models for G prediction, based on biophysical parameters estimated by remote sensing. However, due to the existing models’ empirical nature and the restricted conditions in which they were developed, using these models in large-scale applications may lead to significant errors. Thus, the objective of this study was to assess the ability of the artificial neural network (ANN) to predict mid-morning G using extensive remote sensing and meteorological reanalysis data over a broad range of climates and land covers in South America. Surface temperature (Ts), albedo (α), and enhanced vegetation index (EVI), obtained from a moderate resolution imaging spectroradiometer (MODIS), and net radiation (Rn) from the global land data assimilation system 2.1 (GLDAS 2.1) product, were used as inputs. The ANN’s predictions were validated against measurements obtained by 23 flux towers over multiple land cover types in South America, and their performance was compared to that of existing and commonly used models. The Jackson et al. (1987) and Bastiaanssen (1995) G prediction models were calibrated using the flux tower data for quadratic errors minimization. The ANN outperformed existing models, with mean absolute error (MAE) reductions of 43% and 36%, respectively. Additionally, the inclusion of land cover information as an input in the ANN reduced MAE by 22%. This study indicates that the ANN’s structure is more suited for large-scale G prediction than existing models, which can potentially refine SEB fluxes and ET estimates in South America.

Highlights

  • Soil heat flux (G) is one of the main components of the surface energy balance (SEB)and accounts for the energy transferred to and from the land surface and deeper layers of the ground [1]

  • The complexity analysis of the artificial neural network (ANN) indicated that its performance improves initially with higher complexity but is stable for complexities greater than four neurons

  • The inclusion of land cover information into the ANNs as an input improved the accuracy of the G predictions

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Summary

Introduction

Soil heat flux (G) is one of the main components of the surface energy balance (SEB). Accounts for the energy transferred to and from the land surface and deeper layers of the ground [1]. Several remote sensing products provide valuable knowledge at different spatiotemporal scales to assess land surface and meteorological conditions. Motivated by this availability, many models were developed to calculate SEB fluxes from the integration of remote sensing data, mainly focused on actual evapotranspiration (ET) estimation [7,8,9,10,11,12,13,14,15,16,17,18]

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