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A en fonction du seuil de détection ?. Nous suivons ici les hypothèses de l'´ equation 1 ,
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Graphique représentant la transmission atmosphérique en fonction de la longueur d'onde dans deux conditions météorologiques (clair et sec en vert et humide et brumeux en rouge) Les contributionsàcontributionsà la transmission globale relatives aux gaz, aux aérosols etàetà la vapeur d'eau sont représentées dans des graphiques séparés, p.51 ,
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