Canopy centre-based fuzzy-C-means clustering for enhancement of soil fertility prediction

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Date

2024

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Inderscience Publishers

Abstract

For plants to develop, fertile soil is necessary. Estimating soil parameters based on time change is crucial for enhancing soil fertility. Sentinel-2’s remote sensing technology produces images that can be used to gauge soil parameters. In this study, values for soil parameters such as electrical conductivity, pH, organic carbon, and nitrogen are derived using Sentinel-2 data. In order to increase the clustering accuracy, this study suggests using Canopy centre-based fuzzy-C-means clustering and comparing it to manual labelling and other clustering techniques such as Canopy, density-based, expectation-maximisation, farthest-first, k-means, and fuzzy-C-means clustering, its usefulness is demonstrated. The proposed clustering achieved the highest clustering accuracy of 78.42%. Machine learning-based classifiers were applied to classify soil fertility, including Naive Bayes, support vector machine, decision trees, and random forest (RF). Dataset labelled with the proposed RF clustering classifier achieves a high classification accuracy of 99.69% with ten-fold cross-validation. © 2024 Inderscience Enterprises Ltd.. All rights reserved.

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Keywords

Decision trees, Fuzzy systems, K-means clustering, Learning systems, Organic carbon, Remote sensing, Soils, Support vector machines, Center-based, Clustering accuracy, Clusterings, Fertile soils, Fuzzy C-Means clustering, Machine-learning, Remote-sensing, Soil fertility, Soil parameters, Time change, Classification (of information)

Citation

International Journal of Computational Science and Engineering, 2024, 27, 1, pp. 90-102

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