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Artificial Intelligence and Digitalization for Sustainable Development. 10th EAI International Conference, ICAST 2022, Bahir Dar, Ethiopia, November 4-6, 2022, Proceedings

Research Article

Prediction of Teff Yield Using a Machine Learning Approach

Cite
BibTeX Plain Text
  • @INPROCEEDINGS{10.1007/978-3-031-28725-1_10,
        author={Adugna Necho Mulatu and Eneyachew Tamir},
        title={Prediction of Teff Yield Using a Machine Learning Approach},
        proceedings={Artificial Intelligence and Digitalization for Sustainable Development. 10th EAI International Conference, ICAST 2022, Bahir Dar, Ethiopia, November 4-6, 2022, Proceedings},
        proceedings_a={ICAST},
        year={2023},
        month={3},
        keywords={Teff yield Multispectral satellite images Machine learning Convolutional neural network},
        doi={10.1007/978-3-031-28725-1_10}
    }
    
  • Adugna Necho Mulatu
    Eneyachew Tamir
    Year: 2023
    Prediction of Teff Yield Using a Machine Learning Approach
    ICAST
    Springer
    DOI: 10.1007/978-3-031-28725-1_10
Adugna Necho Mulatu1,*, Eneyachew Tamir1
  • 1: Computer Engineering Program, Faculty of Electrical and Computer Engineering, Bahir Dar Institute of Technology
*Contact email: adugna.necho@bdu.edu.et

Abstract

Teff is one of the main ingredients in everyday food for most Ethiopians, and its production mainly depends on natural conditions of the climate, unpredictable changes in the climate, and other growth factors. Teff production is extremely variable on different occasions and creates complex scenarios for prediction of yield. Traditional methods of prediction are incomplete and require field data collection, which is costly, with the result being poor prediction accuracy. Remotely sensed satellite image data has proven to be a reliable and real-time source of data for crop yield prediction; however, these data are enormous in size and difficult to interpret. Recently, machine-learning methods have been in use for processing satellite data, providing more accurate crop prediction results. However, these approaches are used in croplands covering vast areas or regions, requiring huge amounts of cropland mask data, which is not available in most developing countries, and may not provide accurate household level yield prediction. In this article, we proposed a machine learning based Teff Yield Prediction System for smaller cropland areas using publicly available multispectral satellite images, that represent spectral reflectance information related to the crop growth status collected from different satellites (Landsat-8, Sentinel-2). For this, we have prepared our own satellite image dataset for training. A Convolutional Neural Network was developed and trained to be fit for a regression task. A training loss of 3.3783 and a validation loss of 1.6212 were obtained; in other words, the model prediction accuracy was 98.38%. This shows that our model's performance is very promising.

Keywords
Teff yield Multispectral satellite images Machine learning Convolutional neural network
Published
2023-03-19
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-031-28725-1_10
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