Convolutional neural network for estimation of harvest time of forage sorghum (sorghum bicolor) cultivar samurai-1
Kahfi Heryandi Suradiradja,
Imas Sukaesih Sitanggang,
Luki Abdullah
et al.
Abstract:One of the economic alternatives to improve the quality of ruminant feed is combining grass as the main feed with high-protein forages such as sorghum. To get a quality sorghum harvest during the period, it must be right when it has good biomass content, nutrients, and digestibility. The problem is that measuring quality in the laboratory has additional costs and time, which is not short, causing delays. An approach with machine learning using a convolutional neural network can be a better solution. This resea… Show more
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