2025 : 4 : 20
Kamal Nabiollahi

Kamal Nabiollahi

Academic rank: Associate Professor
ORCID:
Education: PhD.
ScopusId: 56595131700
HIndex:
Faculty: Faculty of Agriculture
Address: Department of soil Science and Engineering, Faculty of Agriculture, University of Kurdistan, Sanandaj, Iran
Phone:

Research

Title
Assessment of Land Suitability Potential Using Ensemble Approaches of Advanced Multi-Criteria Decision Models and Machine Learning for Wheat Cultivation
Type
JournalPaper
Keywords
random forest; TOPSIS; GRA; SAW; remote sensing; Kurdistan
Year
2024
Journal Remote Sensing
DOI
Researchers Kamal Nabiollahi ، Ndiye M. Kebonye ، ّFereshteh Molani ، Mohammad Hossein Tahari-Mehrjardi ، Roholah taghizade ، Hadi Shokati ، Thomas Scholten

Abstract

Abstract: Land suitability assessment, as an important process in modern agriculture, involves the evaluation of numerous aspects such as soil properties, climate, relief, hydrology and so-cio-economic aspects. The aim of this study was to evaluate the suitability of soils for wheat cul-tivation in the Gavshan region, Iran, as the country is facing the task of becoming self-sufficient in wheat. Various methods were used to evaluate the land, such as multi-criteria decision-making (MCDM), which is proving to be important for land use planning. MCDM and machine learning (ML) are useful for decision-making processes because they use complicated spatial data and methods that are widely available. Using a geomorphological map, seventy soil profiles were se-lected and described, and ten soil properties and wheat yields were determined. Three MCDM approaches, including the technique of preference ordering by similarity to the ideal solution (TOPSIS), gray relational analysis (GRA), and simple additive weighting (SAW), were used and evaluated. The criteria weights were extracted using Shannon’s entropy method. Random forest (RF) model and auxiliary variables (remote sensing data, terrain data, and geomorphological maps) were used to represent the land suitability values. Spatial autocorrelation analysis as a statistical method was applied to analyze the spatial variability of the spatial data. Slope, CEC (cation ex-change capacity), and OC (organic carbon) were the most important factors for wheat cultivation. The spatial autocorrelation between the key criteria (slope, CEC, and OC) and wheat yield con-firmed these results. These results also showed a significant correlation between the land suita-bility values of TOPSIS, GRA, and SAW and wheat yield (0.74, 0.72, and 0.57, respectively). The spatial distribution of land suitability values showed that the areas classified as good according to TOPSIS and GRA were larger than those classified as moderate and weak according to the SAW approach. These results were also confirmed by the autocorrelation of the MCDM techniques with wheat yield. In addition, the RF model showed its effectiveness in processing complex spatial data and improved the accuracy of land suitability assessment. In this study, by integrating advanced MCDM techniques and ML, an applicable land evaluation approach for wheat cultivation was proposed, which can improve the accuracy of land suitability and be useful for considering sus-tainability principles in land management.