Artificial neural networks in vegetables: A comprehensive review

@inproceedings{Goyal2013ArtificialNN,
  title={Artificial neural networks in vegetables: A comprehensive review},
  author={Sumit Goyal},
  year={2013}
}
Artificial neural networks(ANN) are implemented in a large number of applications of science andtechnology as the technique has become very popular and accepted tool forresearchers and scientists. ANN renders realistic advantages such as real timeprocessing, adaptability and training potential over conventionalmethodologies. We present an all inclusive review of ANN for predictivemodelling, analysis and discuss the crucial role that they play in assessmentof extensive range of vegetables, viz… Expand
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Universidade de Brasília (UnB), Departamento de Engenharia Florestal (EFL), Cx. Pt. 6 04357, 70904-970, Brasília, DF, Brazil. 7 Universidade Federal de Mato Grosso (UFMT), Programa de Pós-GraduaçãoExpand
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