A platform for research: civil engineering, architecture and urbanism
Research on the Prediction of Several Soil Properties in Heihe River Basin Based on Remote Sensing Images
Soil property monitoring is useful for sustainable agricultural production and environmental modeling. It is possible to automatically predict soil properties in a wide range based on remote sensing images. Heihe River Basin was chosen as the research area. Measurements on three soil properties, which were pH, organic carbon, and bulk density, were available there. Two kinds of attributes were extracted, which were the remote sensing index and terrain attributes. The prediction models were constructed by random forest algorithms. The features were determined by combining correlation statistics with prediction error, and different features were selected for each of the three properties. The validation experimental results are presented. The error results were as follows: pH (MAE = 0.28, RMSE = 0.39, = 0.41), organic carbon (MAE = 4.75, RMSE = 8.26, = 0.75), and bulk density (MAE = 0.11, RMSE = 0.13, = 0.70). Through the analysis and comparison of the experimental results, it was proven that the algorithm in this paper had a good performance in the prediction of organic carbon and bulk density.
Research on the Prediction of Several Soil Properties in Heihe River Basin Based on Remote Sensing Images
Soil property monitoring is useful for sustainable agricultural production and environmental modeling. It is possible to automatically predict soil properties in a wide range based on remote sensing images. Heihe River Basin was chosen as the research area. Measurements on three soil properties, which were pH, organic carbon, and bulk density, were available there. Two kinds of attributes were extracted, which were the remote sensing index and terrain attributes. The prediction models were constructed by random forest algorithms. The features were determined by combining correlation statistics with prediction error, and different features were selected for each of the three properties. The validation experimental results are presented. The error results were as follows: pH (MAE = 0.28, RMSE = 0.39, = 0.41), organic carbon (MAE = 4.75, RMSE = 8.26, = 0.75), and bulk density (MAE = 0.11, RMSE = 0.13, = 0.70). Through the analysis and comparison of the experimental results, it was proven that the algorithm in this paper had a good performance in the prediction of organic carbon and bulk density.
Research on the Prediction of Several Soil Properties in Heihe River Basin Based on Remote Sensing Images
Zhihui Li (author) / Yang Yang (author) / Siyu Gu (author) / Boyu Tang (author) / Jing Zhang (author)
2021
Article (Journal)
Electronic Resource
Unknown
Metadata by DOAJ is licensed under CC BY-SA 1.0
British Library Online Contents | 2009
|Estimate Soil Organic Matter Content in the Heihe River Basin Using Hyperspectral Method
British Library Online Contents | 2012
|Effects of Different Land Use Types on Soil Surface Temperature in the Heihe River Basin
DOAJ | 2023
|Mapping the Soil Texture in the Heihe River Basin Based on Fuzzy Logic and Data Fusion
DOAJ | 2017
|