INTERNATIONAL JOURNAL OF COMPUTER SCIENCE AND MATHEMATICAL THEORY (IJCSMT )

E-ISSN 2545-5699
P-ISSN 2695-1924
VOL. 10 NO. 4 2024
DOI: 10.56201/ijcsmt.v10.no4.2024.pg134.144


Assessing Agricultural Land and Determining Crop Suitability for Optimum Yield using Machine Learning Approach

KOIRANGA, Abdullahi Hammanadama Dr. Yusuf Musa Malgwi HAMIDU, Mohammed


Abstract


Machine Learning has developed rapidly and increasingly becoming significant in agricultural domain as there is need of efficient logical practice for detecting new and valuable information in agricultural domain. Agriculture serves as the primary economic driver and major employment provider for the majority of the population in Nigeria. However, the sector is vulnerable to challenges stemming from inadequate agronomic practices. This study built an Agricultural land assessment model that predict optimum yield using logistic regression model and Support Vector Machine (SVM) classifiers using Python and VScode. Comparing Logistic Regression and Support Vector Machine (SVM) for classifying crops based on their nutrient content and yield, both algorithms exhibit high overall accuracy of around 87%. However, SVM stands out due to its consistently high precision, recall, and F1-scores across various crops. This indicates that SVM provides a more balanced and robust performance, vital for accurate agricultural predictions. The study also introduces a novel application of machine learning techniques to the field of agriculture and bridges the gap between traditional agricultural practices and modern data analytics, fostering innovation and improving agricultural efficiency and sustainability. The study can further enhance its impact on agricultural productivity and sustainability by Incorporate Internet of Things (IoT) devices to collect real-time data on soil moisture, temperature, and other environmental factors, promote improving the accuracy of crop suitability predictions. Also to extend the model to include a wider variety of crops and explore its applicability to different climatic and geographical regions, ensuring broader relevance and utility


keywords:

Assessing, Agricultural Land, Crop Suitability, Optimum Yield, Machine Learning


References:


Aguboshim, F. C., & Otuu, O. O. (2023). Using computer expert system to solve complications
primarily due to low and excessive birth weights at delivery: Strategies to reviving the
ageing and diminishing population. World Journal of Advanced Research and Reviews,
17(3), 396–405.
Akulwar, P. (2020). A Recommended System for Crop Disease Detection and Yield Prediction
Using Machine Learning Approach. In S. N. Mohanty, J. M. Chatterjee, S. Jain, A. A.
Elngar, & P. Gupta (Eds.), Recommender System with Machine Learning and Artificial
Intelligence (1st ed., pp. 141–163). Wiley. https://doi.org/10.1002/9781119711582.ch8.
Anguraj, K., Thiyaneswaran, B., Megashree, G., Shri, J. P., Navya, S., & Jayanthi, J. (2021).
Crop recommendation on analyzing soil using machine learning. Turkish Journal of
Computer and Mathematics Education, 12(6), 1784–1791.
Choudhary, M., Sartandel, R., Arun, A., Ladge, L., Hiranwal, S., & Mathur, G. (2022). Crop
Recommendation System and Plant Disease Classification using Machine Learning for
Precision Agriculture. Artificial Intelligence and Communication Technologies, SCRS,
39–49.
https://www.publications.scrs.in/uploads/final_menuscript/7e6d4680313ad60e32d6e3f82d98
1a8e.pdf
Cockburn, M. (2020). Application and prospective discussion of machine learning for the
management of dairy farms. Animals, 10(9), 1690.
Cropland Area by Country—Worldometer. (n.d.). Retrieved December 25, 2023, f
rom
https://www.worldometers.info/food-agriculture/cropland-by-country/
Dandotiya, B., & Sharma, H. K. (2022). Climate change and its impact on terrestrial
ecosystems. In Research Anthology on Environmental and Societal Impacts of Climate
Change (pp. 88–101). IGI Global.
https://www.igi-global.com/chapter/climate-change-and-its-impact-on-terrestrial-
ecosystems/293895
Durai, S. K. S., & Shamili, M. D. (2022). Smart farming using machine learning and deep

learning techniques. Decision Analytics Journal, 3, 100041.
Elbasi, E., Zaki, C., Topcu, A. E., Abdelbaki, W., Zreikat, A. I., Cina, E., Shdefat, A., & Saker,
L. (2023). Crop prediction model using machine learning algorithms. Applied Sciences,
13(16), 9288.
https://pdfs.semanticscholar.org/6e08/7108aa8048da8cfc82cdecb7071a55bab488.pdf
Esri.
(n.d.). ArcGIS Hub. Retrieved July 6, 2024, from https://hub.arcgis.com/
Gosai, D., Raval, C., Nayak, R., Jayswal, H., & Patel, A. (2021). Crop recommendation system
using machine learning. International Journal of Scientific Research in Computer
Science, Engineering and Information Technology, 7(3), 558–569.
Ibiyemi, M. A. (2022). Enhancing the Productivity of the Nigerian Agricultural Sector
Through Innovation and Technology [PhD Thesis, Northcentral University].
https://search.proquest.com/openview/f0bcd389eae7c3e1a519b9eb1104e92c/1?pq-
origsite=gscholar&cbl=18750&diss=y
Jadhav, R., & Bhaladhare, P. (2022). A Machine Learning Based Crop Recommendation
System: A Survey. Journal of Algebraic Statistics, 13(1), 426–430.
Jha, G. K., Ranjan, P., & Gaur, M. (2020). A Machine Learning Approach to Recommend
Suitable Crops and Fertilizers for Agriculture. In S. N. Mohanty, J. M. Chatterjee, S. Jain,
A. A. Elngar, & P. Gupta (Eds.), Recommender System with Machine Learning and
Artificial
Intelligence
(1st
ed.,
pp.
89–99).
Wiley.
https://doi.org/10.1002/9781119711582.ch5
Liliane, T. N., & Charles, M. S. (2020). Factors affecting yield of crops. Agronomy Climate
Change & Food Security, 9.
Priya, P. K., & Yuvaraj, N. (2019). An IoT based gradient descent approach for precision crop
suggestion using MLP. Journal of Physics: Conference Series, 1362(1), 012038.
https://iopscience.iop.org/article/10.1088/1742-6596/1362/1/012038/meta
Priyadharshini, A., Chakraborty, S., Kumar, A., & Pooniwala, O. R. (2021). Intelligent crop
recommendation system using machine learning. 2021 5th International Conference on
Computing
Methodologies
and
Communication
(ICCMC),
843–848.
https://ieeexplore.ieee.org/abstract/document/9418375/
Rakhra, M., Sanober, S., Quadri, N. N., Verma, N., Ray, S., & Asenso, E. (2022).
Implementing machine learning for smart farming to forecast farmers’ interest in hiring
equipment.
Journal
of
Food
Quality,
https://www.hindawi.com/journals/jfq/2022/4721547/
Sharma, A., Bhargava, M., & Khanna, A. V. (2021). AI-Farm: A crop recommendation system.
2021 International Conference on Advances in Computing and Communications
(ICACC), 1–7. https://ieeexplore.ieee.org/abstract/document/9708104/
Sharma, A., Jain, A., Gupta, P., & Chowdary, V. (2020). Machine learning applications for

precision agriculture: A comprehensive review. IEEE Access, 9, 4843–4873.
Vincent, D. R., Deepa, N., Elavarasan, D., Srinivasan, K., Chauhdary, S. H., & Iwendi, C.
(2019). Sensors driven AI-based agriculture recommendation model for assessing land
suitability. Sensors, 19(17), 3667.


DOWNLOAD PDF

Back


Google Scholar logo
Crossref logo
ResearchGate logo
Open Access logo
Google logo