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Sugarcane drought detection through spectral indices derived modeling by remote-sensing techniques (2019)

  • Authors:
  • USP affiliated authors: MACHADO, PEDRO GERBER - IEE ; DUFT, DANIEL GARBELLINI - ESALQ ; CORRÊA, SIMONE TONI RUIZ - ESALQ
  • Unidades: IEE; ESALQ; ESALQ
  • DOI: 10.1007/s40808-019-00619-6
  • Subjects: BALANÇO HÍDRICO; CANA-DE-AÇÚCAR; DEFICIT HÍDRICO; SECA; SENSORIAMENTO REMOTO
  • Agências de fomento:
  • Language: Inglês
  • Imprenta:
  • Source:
  • Informações sobre o DOI: 10.1007/s40808-019-00619-6 (Fonte: oaDOI API)
    • Este periódico é de assinatura
    • Este artigo NÃO é de acesso aberto
    • Cor do Acesso Aberto: closed

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    • ABNT

      PICOLI, Michelle Cristina Araujo; MACHADO, Pedro Gerber; DUFT, Daniel Garbellini; et al. Sugarcane drought detection through spectral indices derived modeling by remote-sensing techniques. Modeling Earth Systems and Environment, Heidelberg, Springer Nature, v. 5, p. 1679-1688, 2019. Disponível em: < https://doi.org/10.1007/s40808-019-00619-6 > DOI: 10.1007/s40808-019-00619-6.
    • APA

      Picoli, M. C. A., Machado, P. G., Duft, D. G., Scarpare, F. V., Corrêa, S. T. R., Hernandes, T. A. D., & Rocha, J. V. (2019). Sugarcane drought detection through spectral indices derived modeling by remote-sensing techniques. Modeling Earth Systems and Environment, 5, 1679-1688. doi:10.1007/s40808-019-00619-6
    • NLM

      Picoli MCA, Machado PG, Duft DG, Scarpare FV, Corrêa STR, Hernandes TAD, Rocha JV. Sugarcane drought detection through spectral indices derived modeling by remote-sensing techniques [Internet]. Modeling Earth Systems and Environment. 2019 ; 5 1679-1688.Available from: https://doi.org/10.1007/s40808-019-00619-6
    • Vancouver

      Picoli MCA, Machado PG, Duft DG, Scarpare FV, Corrêa STR, Hernandes TAD, Rocha JV. Sugarcane drought detection through spectral indices derived modeling by remote-sensing techniques [Internet]. Modeling Earth Systems and Environment. 2019 ; 5 1679-1688.Available from: https://doi.org/10.1007/s40808-019-00619-6

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