Litcius/Paper detail

Research on Inversion Model of Cultivated Soil Moisture Content Based on Hyperspectral Imaging Analysis

Tinghui Wu, Jian Yu, LU Jing-xia, Xiuguo Zou, Wentian Zhang

2020Agriculture24 citationsDOIOpen Access PDF

Abstract

Based on hyperspectral imaging technology, rapid and efficient prediction of soil moisture content (SMC) can provide an essential basis for the formulation of precise agricultural programs (e.g., forestry irrigation and environmental management). To build an efficient inversion model of SMC, this paper collected 117 cultivated soil samples from the Chair Hill area and tested them using the GaiaSorter hyperspectral sorter. The collected soil reflectance dataset was preprocessed by wavelet transform, before the combination of competitive adaptive reweighted sampling algorithm and successive projections algorithm (CARS-SPA) was used to select the bands optimally. Seven wavelengths of 695, 711, 736, 747, 767, 778, and 796 nm were selected and used as the factors of the SMC inversion model. The popular linear regression algorithm was employed to construct this model. The result indicated that the inversion model established by the multiple linear regression algorithm (the predicted R2 was 0.83 and the RMSE was 0.0078) was feasible and highly accurate, indicating it could play an important role in predicting SMC of cultivated soils over a large area for agricultural irrigation and remote monitoring of crop yields.

Topics & Concepts

Hyperspectral imagingInversion (geology)Water contentEnvironmental scienceSoil waterIrrigationRemote sensingPrecision agricultureLinear regressionSoil scienceAgricultureMathematicsAgronomyStatisticsEcologyGeographyGeologyBiologyGeotechnical engineeringPaleontologyStructural basinRemote Sensing in AgricultureSoil Geostatistics and MappingSoil Moisture and Remote Sensing
Research on Inversion Model of Cultivated Soil Moisture Content Based on Hyperspectral Imaging Analysis | Litcius