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Volume 9 - No: 2

Machine Learning based Suggestion Method for Land Suitability Assessment and Production Sustainability

  • Yue Cao Krirk University, International College, Bangkok, Thailand.
    9yuemoon@163.com
    0009-0005-2380-1139
  • Dr. Liang Jiang Krirk University, International College, Bangkok, Thailand.
    736576870@qq.com
    0009-0009-8780-6763
DOI: 10.28978/nesciences.1569166
Keywords: Agriculture, machine learning, geospatial analysis, three-dimensional space feature information integration, land suitability.

Abstract

The global population is projected to increase by an additional two billion by 2050, as per the assessment conducted by Food and Agriculture Management. However, the arable land is anticipated to expand by just 5%. Consequently, intelligent and effective agricultural practices are essential to enhancing farming production. Evaluating rural Land Suitability (LS) is a crucial instrument for agricultural growth. Numerous novel methods and concepts are being adopted in agriculture as alternatives for gathering and processing farm data. The swift advancement of wireless Sensor Networks (WSN) has prompted the creation of economical and compact sensor gadgets, with the Internet of Things (IoT) serving as a viable instrument for automation and decision-making in farmers. To evaluate agricultural LS, this study offers an expert system integrating networked sensors with Machine Learning (ML) technologies, including neural networks. The suggested approach would assist farmers in evaluating agricultural land for cultivating across four decision categories: very appropriate, suitable, somewhat suitable, and inappropriate. This evaluation is based on the data gathered from various sensor devices for system training. The findings achieved with the MLP with four concealed layers demonstrate efficacy for the multiclass categorization method compared to other current models. This trained system will assess future evaluations and categorize the land post-cultivation.

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Date

September 2024

Page Number

55-72