Machine Learning-Based Classification of Soil Parent Materials Using Elemental Concentration and Vis-NIR Data

Author:

İnci Yüsra1ORCID,Bilgili Ali Volkan2ORCID,Gündoğan Recep2,Gözükara Gafur34,Karadağ Kerim5ORCID,Tenekeci Mehmet Emin6

Affiliation:

1. Organized Industrial Zone Vocational School, Harran University, Sanliurfa 63300, Türkiye

2. Department of Soil Science and Plant Nutrition, Faculty of Agriculture, Harran University, Sanliurfa 63300, Türkiye

3. Department of Soil Science and Plant Nutrition, Eskisehir Osmangazi University, Eskisehir 26160, Türkiye

4. Department of Soil Science, University of Wisconsin-Madison, Madison, WI 53706, USA

5. Department of Electrical and Electronics, Faculty of Engineering, Harran University, Sanliurfa 63300, Türkiye

6. Department of Computer Science, Faculty of Engineering, Harran University, Sanliurfa 63300, Türkiye

Abstract

In soil science, the allocation of soil samples to their respective origins holds paramount significance, as it serves as a crucial investigative tool. In recent times, with the increasing use of proximal sensing and advancements in machine-learning techniques, new approaches have accompanied these developments, enhancing the effectiveness of soil utilization in soil science. This study investigates soil classification based on four parent materials. For this purpose, a total of 59 soil samples were collected from 12 profiles and the vicinity of each profile at a depth of 0–30 cm. Surface soil samples were analyzed for elemental concentrations using X-Ray fluorescence (XRF) and inductively coupled plasma–optical emission spectrometry (ICP-OES) and soil spectra using a visible near-infrared (Vis-NIR) spectrometer. Soil samples collected from soil profiles (12 soil samples) and surface (47 soil samples) were used to classify parent materials using machine learning-based algorithms such as Support Vector Machine (SVM), Ensemble Subspace k-Near Neighbor (ESKNN), and Ensemble Bagged Trees (EBTs). Additionally, as a validation of the classification techniques, the dataset was subjected to five-fold cross-validation and independent sample set splitting (80% calibration and 20% validation). Evaluation metrics such as accuracy, F score, and G mean were used to evaluate prediction performance. Depending on the dataset and algorithm used, the classification success rates varied between 70% and 100%. Overall, the ESKNN (99%) produced better results than other classification methods. Additionally, Relief algorithms were employed to identify key variables for each dataset (ICP-OES: CaO, Fe2O3, Al2O3, MgO, and MnO; XRF: SiO2, CaO, Fe2O3, Al2O, and MnO; Vis-NIR: 567, 571, 572, 573, and 574 nm). Subsequent soil reclassification using these reduced variables revealed reduced accuracies using Vis-NIR data, with ESKNN still yielding the best results.

Funder

Harran University Scientific Research Projects Coordination Office

Publisher

MDPI AG

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