Synergistic intelligence: a novel hybrid model for precision agriculture using k-means, naive Bayes, and knowledge graphs
Keywords:
Hybrid knowledge discovery, Precision agriculture, K-means clustering, Knowledge graphsAbstract
This study presents a novel hybrid knowledge discovery model integrating K-Means clustering, Naive Bayes classification, and Knowledge Graph technology to address interpretability and data heterogeneity challenges in precision agriculture. The proposed framework first applies K-Means to segment agro-ecological zones using multi-source data (soil, climate, satellite imagery), then employs Naive Bayes to classify crop productivity tiers, achieving 89% accuracy—surpassing standalone benchmarks (Naive Bayes: 86%, Random Forest: 87.5%). A Neo4j-based Knowledge Graph contextualizes these outputs, demonstrating 95% schema completeness and efficient querying (0.1559s latency), while enabling dynamic analysis of soil-climate-crop relationships. Pilot trials confirmed actionable impacts, including 22% reduced water use and 18% less fertilizer waste in targeted farms. By unifying unsupervised/supervised learning with semantic reasoning, this work advances scalable, interpretable decision support systems for sustainable agriculture, offering a replicable template for global food security initiatives.
Published
How to Cite
Issue
Section
Copyright (c) 2025 Catherine N. Ogbizi-Ugbe, Osowomuabe Njama-Abang, Samuel Oladimeji, Idongetsit E. Eteng, Edim A. Emanuel (Author)

This work is licensed under a Creative Commons Attribution 4.0 International License.
How to Cite
Similar Articles
- Rauf I. Rauf, Ayinde Kayode, Bello A. Hamidu, Bodunwa O. Kikelomo, Alabi O. Olusegun, Enhanced methods for multicollinearity mitigation in stochastic frontier analysis estimation , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 4, November 2024
- S. D. Umoh, A. K. Asekunowo, I. S. Okoro, N. X. Siwe, R. W. M. Kraus, O. O. Okoh, A. O. T. Ashafa, O. T. Asekun, O. B. Familoni, Antioxidant evaluation and bio-guided isolation from methanol leaf extract of Acalypha godseffiana , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 3, August 2024
- L. G. Salaudeen, D. GABI, M. Garba, H. U. Suru, Deep convolutional neural network based synthetic minority over sampling technique: a forfending model for fraudulent credit card transactions in financial institution , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 2, May 2024
- Richard O. Akinola, Ezekiel O. Omole, Joshua Sunday, Stephen Y. Kutchin, A ninth-order first derivative method for numerical integration , Journal of the Nigerian Society of Physical Sciences: Volume 7, Issue 1, February 2025
- M. E Khan, E. E. Etim, V. J Anyam, A Abel, I. G Osigbemhe, C. T Agber, Computational studies on Emodin (C15H10O5) from Methanol extract of Pteridium acquilinum leaves , Journal of the Nigerian Society of Physical Sciences: Volume 3, Issue 4, November 2021
- V Umarani, A Julian, J Deepa, Sentiment Analysis using various Machine Learning and Deep Learning Techniques , Journal of the Nigerian Society of Physical Sciences: Volume 3, Issue 4, November 2021
- Muhammad Dahiru Liman, Salamatu Ibrahim Osanga, Esther Samuel Alu, Sa'adu Zakariya, Regularization Effects in Deep Learning Architecture , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 2, May 2024
- S. O. Salawu, R. A. Kareem, J. O. Ajilore, Eyring-Powell MHD nanoliquid and entropy generation in a porous device with thermal radiation and convective cooling , Journal of the Nigerian Society of Physical Sciences: Volume 4, Issue 4, November 2022
You may also start an advanced similarity search for this article.
Most read articles by the same author(s)
- Osowomuabe Njama-Abang, Denis U. Ashishie, Paul T. Bukie, Addressing class imbalance in lassa fever epidemic data, using machine learning: a case study with SMOTE and random forest , Journal of the Nigerian Society of Physical Sciences: Volume 7, Issue 3, August 2025

