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基于地物高光谱和无人机多光谱的黄河三角洲 土壤盐分机器学习反演模型.

Authors :
范承志
王梓文
杨兴超
罗永开
徐学欣
郭 斌
李振海
Source :
Smart Agriculture. Dec2022, Vol. 4 Issue 4, p61-73. 13p.
Publication Year :
2022

Abstract

Soil salinization in the Yellow River Delta is a difficult and miscellaneous disease to restrict the development of agri‐ cultural economy, and further hinders agricultural production. To explore the retrieval of soil salt content from remote sensing images under the condition of no vegetation coverage, the typical area of the Yellow River Delta was taken as the study area to obtain the hyperspectral of surface features, the multispectral of UAVs and the soil salt content of sample points. Three represen‐ tative experimental areas with flat terrain and obvious soil salinization characteristics were set up in the study area, and 90 sam‐ ples were collected in total. By optimizing the sensitive spectral parameters, machine learning algorithms of partial least squares regression (PLSR) and random forest (RF) for inversion of soil salt content were used in the study area. The results showed that: (1) Hyperspectral band of 1972 nm had the highest sensitivity to soil salt content, with correlation r of -0.31. The optimized spectral parameters of shortwave infrared can improve the accuracy of estimating soil salt content. (2) RF model optimized by two different data sources had better stability than PLSR model. RF model performed well in terms of generalization ability and balance error, but it had some over-fitting problems. (3) RF model based on ground feature hyperspectral (R² =0.54, verified RMSE=3.30 g/kg) was superior to the random forest model based on UAV multispectral (R² =0.54, verified RMSE=3.35 g/kg). The combination of image texture features improved the estimation accuracy of multispectral model, but the verification accuracy was still lower than that of hyperspectral model. (4) Soil salt content based on UAV multi-spectral imageries and RF model was mapped in the study area. This study demonstrates that the level of soil salinization in the Yellow River Delta region is significantly different in geographical location. The cultivated land in the study area is mainly light and moderate salinized soil with has certain restrictions on crop cultivation. Areas with low soil salt content are suitable for planting crops in low salinity fields, and farmland with high soil salt content is suitable for planting crops with high salinity tolerance. This study constructed and compared the soil salinity inversion models of the Yellow River Delta from two different sources of data, optimized them based on the advantages of each data source, explored the inversion of soil salinity content without vegetation coverage, and can provide a reference for more accurate inversion of land salinization. [ABSTRACT FROM AUTHOR]

Details

Language :
Chinese
ISSN :
20968094
Volume :
4
Issue :
4
Database :
Academic Search Index
Journal :
Smart Agriculture
Publication Type :
Academic Journal
Accession number :
161907798
Full Text :
https://doi.org/10.12133/j.smartag.SA202212001