Journal Section

Journal of Business Venturing, AI and Data Analytics

Open Access
Cite Score: 0.5 Impact Factor: 0.6
AUTOMATING GREENHOUSE GAS MONITORING WITH ARTIFICIAL INTELLIGENCE FOR SUSTAINABLE AGRICULTURE
Author's Details

Name: Rakibul Hasan

Email: r.hasan.179@westcliff.edu

Department: Department of Business

Affiliation Number: 1

Address: 17877 Von Karman Ave 4th floor, Irvine, CA 92614, USA

Affiliations

1 Department of Business, Westcliff University, 17877 Von Karman Ave 4th floor, Irvine, CA 92614, USA

Abstract
This research focused on the application of AI to support automatic tracking of GHG emissions in the agricultural sector, one of the major contributors to emissions. The proposed system for GHG tracking was designed with IoT sensors, satellites, and record-keeping, making it scalable and efficient compared to previous methods. Some of the findings reveal that AI models are highly accurate in estimating emissions through models such as Gradient Boosting Machines, hence cutting down the cost of manual exercise by an average of 29.7%. Our analysis yields strong positive relationships between emissions and environmental conditions, especially soil moisture content. Nevertheless, such issues as data protection and integration, which are regarded as the major concerns in AI development, this research proves that AI in sustainable agriculture can be effective and beneficial in combating climate change and meeting environmental requirements

Keywords: 

Artificial Intelligence, Greenhouse Gas Monitoring, Sustainable Agriculture, IoT Sensors, Climate Change Mitigation

Citation

Share

This article is Open Access CC BY-NC
Article Information
Article Type
Research Paper
Submitted
02 July, 2024
Revised
29 July, 2024
Accepted
13 August, 2024
Online First
20 August, 2024
Centered Image 1.9k

Total Views

Centered Image 0.5k

Downloads

Centered Image 0

Citations

This tab lists articles citing this work.
©Copyright 2024 C5K All rights reserved.