Predicting coffee productivity using artificial neural networks

Predicting coffee productivity using artificial neural networks

Authors

  • H R Dhika Department of Informatics Engineering, Universitas Muhammadiyah Magelang, Magelang, Indonesia
  • U Yudatama Department of Informatics Engineering, Universitas Muhammadiyah Magelang, Magelang, Indonesia
  • E R Arumi Department of Informatics Engineering, Universitas Muhammadiyah Magelang, Magelang, Indonesia

Keywords:

Coffee, Productivity, Artificial neural networks

Abstract

Coffee is a leading commodity in Indonesia as a raw material for making food, beverages, and other processed products. The demand for coffee is competitive in the international market as a source of foreign exchange for the country. Uncertain production results greatly affect production costs and impact the economy of farmers. Therefore, it is necessary to make a prediction to determine the likelihood of the development of coffee productivity in the future. This research uses data on coffee production from farmers from 2014 to 2023. The algorithm used in this research is the backpropagation artificial neural network. The backpropagation algorithm is one of the artificial neural networks that uses a systematically working multilayer that is very strong and objective through developed network architecture models so that it can make good predictions. The network architecture model used is 4 input neurons, 2 hidden neurons, and 1 output neuron. The maximum epoch value used is 1000, and the learning rate ranges from 0.1 to 0.9. The training process resulted in the best weights with an MSE value of 0.007703 at a learning rate of 0.2. Based on this research, it is expected to provide benefits for farmers as a solution, reference, and evaluation material to improve coffee productivity and minimize the budget for land and plant processing production costs in the future, as well as provide information on future harvests.

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Published

2024-10-20

How to Cite

Predicting coffee productivity using artificial neural networks. (2024). BIS Information Technology and Computer Science, 1, V124007. https://doi.org/10.31603/bistycs.124