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<idAbs>Le réseau GEnevois d'Observation des Sols (GEOS) a pour objectif de réaliser un monitoring à long terme de l'évolution des teneurs en polluants du sol et plus généralement de sa fertilité. Le réseau est constitué de 103 sites de prélèvements représentatifs du territoire genevois. On y réalise tous les cinq ans des prélèvements à une profondeur de 20 cm depuis la surface. Les analyses de monitoring réalisées sur ces prélèvements portent notamment sur qualité des sols (pH, matière organique (MO) et rapport MO/Argile). Des analyses permettant la caractérisation des sites sont réalisées une fois sur chaque site (granulométrie, nutriments, calcaire et capacité d'échange cationique (CEC) effective).&lt;br /&gt;&lt;br /&gt;Les sites d'échantillonnage sont fixes, les prélèvements sont effectués exactement au mêmes endroits d'une campagne à l'autre. Ceci permet d'évaluer l'évolution des différents paramètres analysés au cours du temps, en s'affranchissant de leur possible variabilité spatiale. De plus, les sites sont représentatifs de l'occupation des sols du canton. Ils ont été répartis dans huit catégories ans un souci de proportionnalité par rapport à l'occupation de la surface totale des sols du Canton: Grandes Cultures (GC), Cultures Maraîchères (CM), Viticultures (VI), Arboriculture (AR), Prairies (PR), Forêts (FO), Parcs et Jardins (PJ) et Sites Naturels (SN).&lt;br /&gt;&lt;br /&gt;La couche GOL_GEOS_PORTRAIT contient les résultats d'analyses de caractérisation des 103 sites actifs. Ce sont les analyses qui ne sont réalisées qu'une fois par site lorsque le site entre dans le réseau GEOS. Les analyses concernent la granulométrie du sol, les taux de nutriments présents dans le sol, le carbonate, la capacité d'échange cationique effective et la capacité d'échange cationique potentielle ainsi que toutes les composantes liées à la CEC. La CEC effective est une analyse qui a été introduite plus récemment pour remplacer la CEC potentielle. Les sites les plus anciens du réseau ont fait l'objet d'un second prélèvement pour déterminer la CEC effective. On n'analyse plus la CEC potentielle pour les sites qui entrent dans le réseau depuis 2010.&lt;br /&gt;&lt;br /&gt;GEOS a été instauré en 1990 par le Laboratoire Cantonal d'Agronomie de Genève aujourd'hui rattaché à la Hate Ecole du Paysage, d'Ingénierie et d'architecture de Genève (HEPIA), dans le Groupe Sols et Substrats. Des prélèvements ont eu lieu en 1990 (campagne 1990-1994), 1995 (campagne 1995-1999) et 2000 (campagne 2000-2004). En 2010, le GESDEC (Service de Géologie, Sols et Déchet) mandate officiellement le groupe Sols et Substrats de HEPIA pour remettre en oeuvre le suivi du réseau GEOS dans le cadre d'application de l'Ordonnance fédérale sur les atteintes portées aux sols (OSol). Deux campagnes ont depuis été réalisées (de 2010 à 2016 puis de 2017 à 2022).</idAbs>
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<keyword>Sciences de la terre</keyword>
<keyword>190_PUBLISHVECTORS_PUBLISHING</keyword>
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<idPurp>Portrait des sites du réseau GEOS</idPurp>
<idCredit>© 2026 SITG</idCredit>
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<resTitle>Portrait des sites du réseau GEOS</resTitle>
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