BIBLIOS

  Sistema de Gestão de Referências Bibliográficas de Ciências

Modo Visitante (Login)
Need help?


Voltar

Detalhes Referência

Tipo
Artigos em Revista

Tipo de Documento
Artigo Completo

Título
Assessment of two techniques to merge ground-based and TRMM rainfall measurements: a case study about Brazilian Amazon Rainforest

Participantes na publicação
Pedro Mateus (Author)
IDL
Laura S. Borma (Author)
Ricardo D. da Silva (Author)
Giovanni Nico (Author)
João Catalão (Author)
Dep. Engenharia Geográfica, Geofísica e Energia
IDL

Data de Publicação
2016-09-07

Instituição
Instituto Dom Luiz (IDL), Faculdade de Ciências, Universidade de Lisboa, Campo Grande, 1749–016, Lisboa, Portugal

Suporte
GIScience & Remote Sensing

Identificadores da Publicação
ISSN - 1548-1603

Editora
Informa UK Limited

Volume
53
Fascículo
6

Página Inicial
689
Página Final
706

Identificadores do Documento
DOI - https://doi.org/10.1080/15481603.2016.1228161
URL - http://dx.doi.org/10.1080/15481603.2016.1228161

Identificadores de Qualidade
SCIMAGO Q1 (2016) - 1.142 - Earth and Planetary Sciences (miscellaneous)
SCOPUS Q1 (2016) - 1.142 - General Earth and Planetary Sciences


Exportar referência

APA
Pedro Mateus, Laura S. Borma, Ricardo D. da Silva, Giovanni Nico, João Catalão, (2016). Assessment of two techniques to merge ground-based and TRMM rainfall measurements: a case study about Brazilian Amazon Rainforest. GIScience & Remote Sensing, 53, 689-706. ISSN 1548-1603. eISSN . http://dx.doi.org/10.1080/15481603.2016.1228161

IEEE
Pedro Mateus, Laura S. Borma, Ricardo D. da Silva, Giovanni Nico, João Catalão, "Assessment of two techniques to merge ground-based and TRMM rainfall measurements: a case study about Brazilian Amazon Rainforest" in GIScience & Remote Sensing, vol. 53, pp. 689-706, 2016. 10.1080/15481603.2016.1228161

BIBTEX
@article{38279, author = {Pedro Mateus and Laura S. Borma and Ricardo D. da Silva and Giovanni Nico and João Catalão}, title = {Assessment of two techniques to merge ground-based and TRMM rainfall measurements: a case study about Brazilian Amazon Rainforest}, journal = {GIScience & Remote Sensing}, year = 2016, pages = {689-706}, volume = 53 }