Passo do Joly

Multi tool use
Passo do Joly
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Altitude
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1 989
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País
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Entre a Alta-Saboia e a Saboia
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Cordilheira
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Maciço do Monte Branco
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Localização
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Ródano-Alpes
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Coordenadas
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45° 47' 02" N 6° 40' 26" E
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O passo do Joly é um colo de montanha situado a 1 989 m no maciço do Monte Branco, entre o departamento francês da Saboia e da Alta-Saboia, na região Ródano-Alpes que devido à sua localização e altitude não é limpo na estação invernal, pelo que só é transitável pelos veículos que se ocupam da manutenção da pistas de esqui de Contamines-Montjoie.
Nas duas vertentes do colo encontram a domínio esquiável da Contamines-Hauteluce com 47 pistas, ou com pistas de BTT durante o Verão.
Devido ao seu pequeno desnível, a encosta com cerca de 2 km de largura e de Verão cheio de verde erva é finalmente um magnífico terreno de alpagem.
Referências
«C2C: Col du Joly» (em francês). Consultado em Jan. 2013
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edited Nov 28 '18 at 17:52
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