Rio Argova

Multi tool use
Localização
País |
Roménia
|
Hidrografia
Tipo |
Rio
|
Bacia hidrográfica |
Danube basin
|
País(es) da bacia hidrográfica |
 Roménia
|
Distrito |
Călăraşi
|
Maior cidade |
Buzoeni, Valea Argovei
|
Afluente principal |
Rio Cucuveanu
|
Afluentes esquerda |
Cucuveanu
|
Foz |
Rio Mostiştea
|
editar - editar código-fonte - editar Wikidata
O Rio Argova é um rio da Romênia afluente do rio Mostiştea, localizado no distrito de Călăraşi.[1][2]
Referências
↑ Administraţia Naţională Apelor Române - Cadastrul Apelor - Bucureşti
↑ Institutul de Meteorologie şi Hidrologie - Rîurile României - Bucureşti 1971
 |
Este artigo sobre hidrografia em geral é um esboço. Você pode ajudar a Wikipédia expandindo-o. |
 |
Este artigo sobre Geografia da Romênia é um esboço. Você pode ajudar a Wikipédia expandindo-o.
|
Portal da Roménia
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