LGSep 30, 2021

Mulberry Leaf Yield Prediction Using Machine Learning Techniques

arXiv:2110.01394v11 citations
Originality Synthesis-oriented
AI Analysis

This addresses yield prediction for mulberry farmers in India, but it is incremental as it applies existing methods to a specific agricultural dataset.

The paper tackled predicting mulberry leaf yield using soil parameters to help farmers plan production, finding that Random Forest Regression outperformed other machine learning models.

Soil nutrients are essential for the growth of healthy crops. India produces a humungous quantity of Mulberry leaves which in turn produces the raw silk. Since the climatic conditions in India is favourable, Mulberry is grown throughout the year. Majority of the farmers hardly pay attention to the nature of soil and abiotic factors due to which leaves become malnutritious and thus when they are consumed by the silkworm, desired quality end-product, raw silk, will not be produced. It is beneficial for the farmers to know the amount of yield that their land can produce so that they can plan in advance. In this paper, different Machine Learning techniques are used in predicting the yield of the Mulberry crops based on the soil parameters. Three advanced machine-learning models are selected and compared, namely, Multiple linear regression, Ridge regression and Random Forest Regression (RF). The experimental results show that Random Forest Regression outperforms other algorithms.

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