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<CreaDate>20250321</CreaDate>
<CreaTime>16295100</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
<MapLyrSync>TRUE</MapLyrSync>
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<idCitation>
<resTitle>StressCumulatifLittorales</resTitle>
</idCitation>
<idAbs>Les données sur la qualité de l'eau et la santé de l'écosystème utilisées pour effectuer une évaluation des effets cumulatifs des eaux côtières des Grands Lacs canadiens à l'appui de l'Accord sur la qualité de l'eau des Grands Lacs sont incluses dans cet ensemble de données. Les données ont été collectées par divers organismes et organisations gouvernementaux et non gouvernementaux et intégrées dans cet ensemble de données pour permettre la réalisation de l'évaluation. En effectuant une évaluation régulière et systématique des effets cumulatifs dans les eaux côtières des Grands Lacs, Environnement et Changement climatique Canada (ECCC) est en mesure d'identifier les zones de haute qualité et les zones sous stress. La connaissance des seuils écologiques, d'autres évaluations des Grands Lacs, des informations sur les facteurs de stress, des indicateurs et des connaissances écologiques locales et traditionnelles sera utilisée pour aider à: 1) l'identification et la cartographie des zones côtières de haute qualité et des zones qui sont ou peuvent devenir soumises à un stress élevé et ; 2) la détermination des facteurs et des effets cumulatifs qui causent du stress ou des menaces. Les effets cumulatifs ayant une incidence sur le littoral et les menaces futures pour les zones à haute valeur écologique seront mieux compris et les connaissances partagées aideront à établir des priorités pour la science et la gestion à une échelle spatiale significative et pratique dans chaque grand lac et canal de raccordement.</idAbs>
<searchKeys>
<keyword>Grands Lacs</keyword>
<keyword>lac Érié</keyword>
<keyword>lac Huron</keyword>
<keyword>lac Ontario</keyword>
<keyword>lac Supérieur</keyword>
<keyword>stress cumulatif</keyword>
<keyword>Évaluation littorales</keyword>
<keyword>santé des écosystèmes</keyword>
<keyword>qualité de l'eau</keyword>
</searchKeys>
<idPurp>Le but de cette carte est de montrer les résultats d'une évaluation des effets cumulatifs des eaux littorales des Grands Lacs canadiens.</idPurp>
<idCredit>ECCC</idCredit>
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