Gross primary productivity estimation through remote sensing and machine learning techniques in the high Andean Region of Ecuador

被引:0
|
作者
Urgiles, Cindy [1 ,2 ]
Orellana-Alvear, Johanna [1 ,3 ]
Crespo, Patricio [1 ,2 ]
Carrillo-Rojas, Galo [1 ,4 ]
机构
[1] Univ Cuenca, Dept Recursos Hidr & Ciencias Ambientales, Cuenca 010207, Ecuador
[2] Univ Cuenca, Fac Ingn, Cuenca 010207, Ecuador
[3] Univ Cuenca, Fac Ciencias Med, Cuenca 010204, Ecuador
[4] Univ Cuenca, Fac Ciencias Quim, Cuenca 010207, Ecuador
基金
美国国家科学基金会;
关键词
Gross primary productivity (GPP); P & aacute; ramo; Tropical Andes; Support vector regression; Random Forest; TERRESTRIAL VEGETATION; MODEL; NET; ALPINE; FLUX; BIOSPHERE; HIGHLANDS; PARAMO; MODIS;
D O I
10.1007/s00484-024-02832-0
中图分类号
Q6 [生物物理学];
学科分类号
071011 ;
摘要
Accurately estimating gross primary productivity (GPP) is crucial for simulating the carbon cycle and addressing the challenges of climate change. However, estimating GPP is challenging due to the absence of direct measurements at scales larger than the leaf level. To overcome this challenge, researchers have developed indirect methods such as remote sensing and modeling approaches. This study estimated GPP in a humid p & aacute;ramo ecosystem in the Andean Mountains using machine learning models (ML), specifically Random Forest (RF) and Support Vector Regression (SVR), and compared them with traditional models. The study's objective was to analyze the strength and complex nonlinear relationships that govern GPP and to perform an uncertainty analysis for future climate projections. The methodology used to estimate GPP showed that ML-based models outperformed traditional models. The performance of ML models varied significantly among seasons, with the correlation coefficient (R) ranging from 0.24 to 0.86. The RF model performed better in capturing the temporal changes and magnitude of GPP in the less humid season, displaying the highest R (0.86), lowest root mean squared error (0.37 g C*m-2), and percentage bias (-3%). Additionally, the analysis indicates that solar radiation is the primary predictor of GPP in the p & aacute;ramo biome, rather than water. The study presents a method for deriving daily GPP fluxes and evaluates the impact of various variables on GPP estimates. This information can be employed in the development of vegetation prediction models.
引用
收藏
页码:541 / 556
页数:16
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