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isprsarchives XL 7 W3 933 2015

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Figure 1. This map represents the ICES Divisions around Ireland that have been included in this study
Figure 4. Annual SST for the West Scotland (Sub-area VI) and Celtic Sea (Sub-area VII)
Figure 5. A) Annual SST Anomalies for the two main zones analysed in the study: West of Scotland and Celtic Sea
Figure 7. Chlorophyll-a concentration for the different ICES Divisions. Data presented are extracted from MODIS-Aqua, SeaWIFs and MERIS that present a temporal continuity with regard to each other

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