Abstract
In this study, elemental data from portable X-ray fluorescence (PXRF) spectrometry was used to test the efficiency of four machine learning techniques (random forest; linear and nonlinear support vector machine; classification and regression tree) for distinguishing three land use types in India based upon scans of mineral surface (0–20 cm) soil. Results showed similar performance among the four tested algorithms, with classification accuracy of a randomly selected validation set ranging from 83% to 91%. The classification and regression tree was favored based upon simple “IF AND THEN” rules which make classification of the data simple. In sum, PXRF data was shown highly effective at differentiating land use types in India. Future work should focus on a larger number of land use classification types and possible combination of PXRF data with complimentary proximal sensing datasets (e.g., visible near infrared spectroscopy).
Original language | English |
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Pages (from-to) | 5-13 |
Number of pages | 9 |
Journal | Geoderma |
Volume | 338 |
DOIs | |
State | Published - Mar 15 2019 |
Keywords
- India
- Land use/land classification
- Machine learning
- Portable X-ray fluorescence
- Proximal sensors