Virtual analysis of machine learning models for diseases prediction in muskmelon
Deeba Kannan,
Balakrishnan Amutha,
Sattianadan Dasarathan
et al.
Abstract:Muskmelon, a crop prized for its economic potential, has a relatively brief growth cycle. Disease susceptibility during this period can have a profound impact on yields, posing challenges for farmers. Environmental conditions are pivotal in disease occurrence. Unfavorable conditions reduce the likelihood of pathogens infecting vulnerable host plants as temperature and humidity influence pathogen behavior, including toxin synthesis, virulence protein production, and reproduction. Pathogens can lie dormant in th… Show more
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