1. Machine learning to estimate surface soil moisture from remote sensing data
- Author
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Carla Saltalippi, Mahmoud Moradian, Gholamabbas Fallah Ghalhari, Hamed Adab, and Renato Morbidelli
- Subjects
Elastic net regularization ,Geospatial analysis ,lcsh:Hydraulic engineering ,010504 meteorology & atmospheric sciences ,0208 environmental biotechnology ,Geography, Planning and Development ,02 engineering and technology ,Aquatic Science ,Machine learning ,computer.software_genre ,01 natural sciences ,Biochemistry ,lcsh:Water supply for domestic and industrial purposes ,lcsh:TC1-978 ,Water content ,0105 earth and related environmental sciences ,Water Science and Technology ,Remote sensing ,lcsh:TD201-500 ,Artificial neural network ,business.industry ,Semi-arid region of Iran ,Vegetation ,020801 environmental engineering ,Random forest ,Support vector machine ,Environmental science ,Precision agriculture ,Artificial intelligence ,Soil moisture ,business ,computer - Abstract
Soil moisture is an integral quantity parameter in hydrology and agriculture practices. Satellite remote sensing has been widely applied to estimate surface soil moisture. However, it is still a challenge to retrieve surface soil moisture content (SMC) data in the heterogeneous catchment at high spatial resolution. Therefore, it is necessary to improve the retrieval of SMC from remote sensing data, which is important in the planning and efficient use of land resources. Many methods based on satellite-derived vegetation indices have already been developed to estimate SMC in various climatic and geographic conditions. Soil moisture retrievals were performed using statistical and machine learning methods as well as physical modeling techniques. In this study, an important experiment of soil moisture retrieval for investigating the capability of the machine learning methods was conducted in the early spring season in a semi-arid region of Iran. We applied random forest (RF), support vector machine (SVM), artificial neural network (ANN), and elastic net regression (EN) algorithms to soil moisture retrieval by optical and thermal sensors of Landsat 8 and knowledge of land-use types on previously untested conditions in a semi-arid region of Iran. The statistical comparisons show that RF method provided the highest Nash&ndash, Sutcliffe efficiency value (0.73) for soil moisture retrieval covered by the different land-use types. Combinations of surface reflectance and auxiliary geospatial data can provide more valuable information for SMC estimation, which shows promise for precision agriculture applications.
- Published
- 2020