2023
DOI: 10.14569/ijacsa.2023.0141224
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Influence of Membership Function and Degree on Sorghum Growth Prediction Models in Machine Learning

Abdul Rahman,
Ermatita -,
Dedik Budianta
et al.

Abstract: Rapid advances in science and technology have significantly changed plant growth modeling. The main contribution to this transformation lies in using Machine Learning (ML) techniques. This study focuses on sorghum, an important agricultural crop with significant economic implications. Crop yield studies include temperature, humidity, climate, rainfall, and soil nutrition. This research has a novelty: the input factors for predicting sorghum plant growth, namely the treatment of applying organic fertilizer and … Show more

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