Home
International Journal of Science and Research Archive
International, Peer reviewed, Open access Journal ISSN Approved Journal No. 2582-8185

Main navigation

  • Home
    • Journal Information
    • Abstracting and Indexing
    • Editorial Board Members
    • Reviewer Panel
    • Journal Policies
    • IJSRA CrossMark Policy
    • Publication Ethics
    • Issue in Progress
    • Current Issue
    • Past Issues
    • Instructions for Authors
    • Article processing fee
    • Track Manuscript Status
    • Get Publication Certificate
    • Become a Reviewer panel member
    • Join as Editorial Board Member
  • Contact us
  • Downloads

ISSN Approved Journal || eISSN: 2582-8185 || CODEN: IJSRO2 || Impact Factor 8.2 || Google Scholar and CrossRef Indexed

Peer Reviewed and Referred Journal || Free Certificate of Publication

Research and review articles are invited for publication in March 2026 (Volume 18, Issue 3) Submit manuscript

Predictive crop protection using machine learning: A scalable framework for U.S. Agriculture

Breadcrumb

  • Home
  • Predictive crop protection using machine learning: A scalable framework for U.S. Agriculture

Oluwabukola Emi-Johnson 1, *, Oluwafunmibi Fasanya 2 and Ayodele Adeniyi 1

1 Department of Statistics, Wake Forest University, United States of America.
2 Department of Statistics, Institute of Agriculture and Natural Resources, University of Nebraska, Lincoln, United States of America.

Review Article

 

International Journal of Science and Research Archive, 2024, 12(02), 3065-3083.
Article DOI: 10.30574/ijsra.2024.12.2.1536
DOI url: https://doi.org/10.30574/ijsra.2024.12.2.1536

Received on 10 July 2024; revised on 19 August 2024; accepted on 22 August 2024

The increasing unpredictability of biotic stressors—such as pests, pathogens, and invasive species—poses a major threat to crop productivity, profitability, and food security across U.S. agricultural systems. Traditional crop protection approaches, often reactive and resource-intensive, struggle to cope with the dynamic interactions between environmental conditions, crop genotypes, and pathogen evolution. As the agricultural sector transitions toward climate-resilient and precision-based farming systems, there is a growing imperative for scalable, data-driven solutions that can anticipate disease outbreaks and optimize interventions before yield losses occur. This study proposes a machine learning (ML)-based framework for predictive crop protection that integrates multi-source agricultural datasets including satellite imagery, IoT sensor data, weather forecasts, and historical disease incidence records. Using supervised learning algorithms—such as random forests, support vector machines, and LSTM neural networks—the framework is trained to identify high-risk spatiotemporal patterns in pest and disease proliferation. The resulting predictive models are embedded into a modular decision-support platform accessible to farmers, agronomists, and policymakers. Real-world case studies from U.S. corn, soybean, and wheat production systems demonstrate the framework’s ability to deliver early-warning alerts, reduce unnecessary pesticide usage, and support site-specific treatment recommendations. The model’s scalability, interoperability with existing farm management platforms, and explainability make it suitable for widespread adoption. The framework aligns with USDA’s goals for sustainable intensification, economic efficiency, and environmental protection in modern agriculture.

ML; Crop protection; Precision agriculture; Predictive analytics; Pest forecasting; Decision support systems

https://ijsra.net/sites/default/files/fulltext_pdf/IJSRA-2024-1536.pdf

Preview Article PDF

Oluwabukola Emi-Johnson, Oluwafunmibi Fasanya and Ayodele Adeniyi. Predictive crop protection using machine learning: A scalable framework for U.S. Agriculture. International Journal of Science and Research Archive, 2024, 12(02), 3065-3083. Article DOI: https://doi.org/10.30574/ijsra.2024.12.2.1536

Copyright © Author(s). All rights reserved. This article is published under the terms of the Creative Commons Attribution 4.0 International License (CC BY 4.0), which permits use, sharing, adaptation, distribution, and reproduction in any medium or format, as long as appropriate credit is given to the original author(s) and source, a link to the license is provided, and any changes made are indicated.


All statements, opinions, and data contained in this publication are solely those of the individual author(s) and contributor(s). The journal, editors, reviewers, and publisher disclaim any responsibility or liability for the content, including accuracy, completeness, or any consequences arising from its use.

Get Certificates

Get Publication Certificate

Download LoA

Check Corssref DOI details

Issue details

Issue Cover Page

Editorial Board

Table of content

          

   

Copyright © 2026 International Journal of Science and Research Archive - All rights reserved

Developed & Designed by VS Infosolution