在数据稀缺的背景下利用机器学习和遥感技术建立流域尺度的土壤湿度估算模型

IF 1 Q3 AGRICULTURE, DAIRY & ANIMAL SCIENCE Scientia Agropecuaria Pub Date : 2024-03-11 DOI:10.17268/sci.agropecu.2024.008
Marcelo Bueno Dueñas, Carlos Baca García, Nilton Montoya, Pedro Rau, Hildo Loayza
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引用次数: 0

摘要

土壤水分含量比降水量更能预测干旱对农业产量的影响。遥感是仪器稀缺地区土壤水分数据的可行来源。然而,基于空间的土壤水分估算结果并不适合日常和高分辨率的农业、水文和环境应用。本研究旨在评估随机森林机器学习技术在提高 SMAP 卫星遥感土壤水分产品的空间分辨率方面的潜力。利用随机森林技术建立了用于空间降尺度的 SMAP-L3-E 模型,然后对分解质量进行了视觉和统计评估。研究了地形、土壤特性和降水对降级土壤水分的影响。分析了降尺度土壤水分与原位土壤水分之间的关系。结果表明,所提出的方法具有空间和水文一致性,降尺度质量令人满意。统计验证表明,概括误差适合科学和实际应用(RMSE < 0.05 cm3 cm-3)。随机森林有效地实现了研究区域 SMAP-L3-E 的空间降尺度。主成分和空间分析表明,降尺度土壤水分主要在近饱和条件下与海拔、土壤有机碳含量、粘土含量和饱和导水率有关。在与原位数据验证方面,降尺度土壤水分在土壤含水量较低时(= 0.624)能很好地解释原位土壤水分。当土壤含水量在 0.40 至 0.50 cm3 cm-3 之间时,降尺度的效果会变差,这表明在接近饱和的条件下,以每天的时间频率降尺度的效果并不理想。然而,无论饱和度条件如何,较粗的时间聚合(7 至 10 天)产生的平均相关系数为 0.98。这些结果可用于灌溉规划、土壤物理研究和水文监测、干旱发生预报、污染物沥滤、地表径流建模、碳循环研究、土壤储存和提供养分的能力。
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Watershed scale soil moisture estimation model using machine learning and remote sensing in a data-scarce context
Soil moisture content can be used to predict drought impact on agricultural yield better than precipitation. Remote sensing is viable source of soil moisture data in instrument-scarce areas. However, space-based soil moisture estimates lack suitability for daily and high-resolution agricultural, hydrological, and environmental applications. This study aimed to assess the potential of the random forest machine learning technique to enhance the spatial resolution of remote soil moisture products from the SMAP satellite. Models were built using random forest for spatial downscaling of SMAP-L3-E, then visually and statistically evaluated for disaggregation quality. The impact of topography, soil properties, and precipitation on the downscaled soil moisture was examined. The relationship between downscaled soil moisture and in-situ soil moisture was analyzed. The results indicate that the proposed method demonstrated spatial and hydrological coherence, along with a satisfactory downscaling quality. Statistical validation indicated suitable generalization error for scientific and practical use (RMSE < 0.05 cm3 cm-3). Random forest effectively achieved spatial downscaling of SMAP-L3-E in the study area. Principal component and spatial analysis revealed dependence of downscaled soil moisture on elevation, soil organic carbon content, clay content, and saturated hydraulic conductivity, mainly under near-saturation conditions. Regarding validation against in-situ data, downscaled soil moisture explained in-situ soil moisture well under low soil water content ( = 0.624). Downscaling performance deteriorates for water contents between 0.40 to 0.50 cm3 cm-3, suggesting inadequacy under near saturation conditions at a daily temporal frequency. However, coarser temporal aggregations (7 to 10 days) yielded an average 0.98 correlation coefficient, regardless of saturation conditions. These results could potentially be applied in irrigation planning, soil physics studies and hydrology monitoring, to forecasting the occurrence of droughts, leaching of contaminants, surface runoff modeling, carbon cycle studies, soil's capacity to store and provide nutrients.
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来源期刊
Scientia Agropecuaria
Scientia Agropecuaria AGRICULTURE, DAIRY & ANIMAL SCIENCE-
CiteScore
3.50
自引率
0.00%
发文量
27
审稿时长
12 weeks
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