Abstract

Abstract. Arid and semiarid ecosystems contain relatively high species diversity and are subject to intense use, in particular extensive cattle grazing, which has favored the expansion and encroachment of perennial thorny shrubs into the grasslands, thus decreasing the value of the rangeland. However, these environments have been shown to positively impact global carbon dynamics. Machine learning and remote sensing have enhanced our knowledge about carbon dynamics, but they need to be further developed and adapted to particular analysis. We measured the net ecosystem exchange (NEE) of C with the eddy covariance (EC) method and estimated gross primary production (GPP) in a thorny scrub at Bernal in Mexico. We tested the agreement between EC estimates and remotely sensed GPP estimates from the Moderate Resolution Imaging Spectroradiometer (MODIS), and also with two alternative modeling methods: ordinary-least-squares (OLS) regression and ensembles of machine learning algorithms (EMLs). The variables used as predictors were MODIS spectral bands, vegetation indices and products, and gridded environmental variables. The Bernal site was a carbon sink even though it was overgrazed, the average NEE during 15 months of 2017 and 2018 was −0.78 gCm-2d-1, and the flux was negative or neutral during the measured months. The probability of agreement (θs) represented the agreement between observed and estimated values of GPP across the range of measurement. According to the mean value of θs, agreement was higher for the EML (0.6) followed by OLS (0.5) and then MODIS (0.24). This graphic metric was more informative than r2 (0.98, 0.67, 0.58, respectively) to evaluate the model performance. This was particularly true for MODIS because the maximum θs of 4.3 was for measurements of 0.8 gCm-2d-1 and then decreased steadily below 1 θs for measurements above 6.5 gCm-2d-1 for this scrub vegetation. In the case of EML and OLS, the θs was stable across the range of measurement. We used an EML for the Ameriflux site US-SRM, which is similar in vegetation and climate, to predict GPP at Bernal, but θs was low (0.16), indicating the local specificity of this model. Although cacti were an important component of the vegetation, the nighttime flux was characterized by positive NEE, suggesting that the photosynthetic dark-cycle flux of cacti was lower than ecosystem respiration. The discrepancy between MODIS and EC GPP estimates stresses the need to understand the limitations of both methods.

Highlights

  • Deserts and semideserts occupy more than 30 % of terrestrial ecosystems

  • When the sum of the precipitation of the current month and that of the previous month was considered, the correlation with net ecosystem exchange (NEE) was −0.7, suggesting that continuous availability of soil moisture is important for the absorption of CO2 in this environment

  • An important question for modeling upscaling is the capacity to extrapolate results temporally and spatially; here we explored the latter, posing the following question: would predictions of gross primary production (GPP) from ensembles of machine learning algorithms (EMLs) for an eddy covariance (EC) site agree with EC observations from another site with “similar” environmental conditions? First, an EML solution was found, training 80 % of the Santa Rita dataset and obtaining a bestof-family ensemble with 0.23 deviance out of 634 trained models

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Summary

Introduction

Deserts and semideserts occupy more than 30 % of terrestrial ecosystems. In Mexico, almost 2 × 106 km (50 %) correspond to arid and semiarid ecosystems, mainly the Sonoran and the Chihuahuan deserts (Verbist et al, 2010). A. Guevara-Escobar et al.: Machine learning estimates of eddy covariance carbon flux woody areas increased, rural–urban migration being an important driver of that transition (Bonilla-Moheno and Aide, 2020). The transition from grasslands to shrublands or scrub is linked to the extremely heavy grazing by domestic livestock (Wilcox et al, 2018)

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