Inversion model of soil salinity in alfalfa covered farmland based on sensitive variable selection and machine learning algorithms
Hong Ma,
Wenju Zhao,
Weicheng Duan
et al.
Abstract:Purpose
Timely and accurate monitoring of soil salinity content (SSC) is essential for precise irrigation management of large-scale farmland. Uncrewed aerial vehicle (UAV) low-altitude remote sensing with high spatial and temporal resolution provides a scientific and effective technical means for SSC monitoring. Many existing soil salinity inversion models have only been tested by a single variable selection method or machine learning algorithm, and the influence of variable selection method combined with mach… Show more
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