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<resTitle Sync="TRUE">HAB_MAR_Marine_habitats_VatikaBay</resTitle>
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<keyword>ELBIOS</keyword>
<keyword>ΕΛΚΕΘΕ</keyword>
<keyword>ΘΑΛΑΣΣΙΟΙ ΟΙΚΟΤΟΠΟΙ</keyword>
<keyword>Γεωχωρικά δεδομένα (geospatial data)</keyword>
<keyword>Δεδομένα εξάπλωσης ειδών / τύπων οικοτόπων (distribution data)</keyword>
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<keyword>ΠΑΡΟΧΟΣ : ΕΛΚΕΘΕ</keyword>
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<idPurp>Η χαρτογράφηση του θαλάσσιου πυθμένα του κόλπου των Βατίκων έχει πραγματοποιηθεί σε δύο διαφορετικές περιόδους: τον Ιούνιο του 2010 και τον Μάιο του 2015. Το ρηχό, βόρειο τμήμα του κόλπου έχει χαρτογραφηθεί το 2010 κατά τη διάρκεια του ερευνητικού έργου «ΠΑΥΛΟΠΕΤΡΙ» με τη βοήθεια βαθυμετρίας λωρίδων (RESON SeaBat 7125 200/400 kHz), σόναρ πλευρικής σάρωσης (Geoacoustics 100/400 kHz) και υποβάθρου προφίλ pinger (3,5 kHz). Ο βαθύτερος θαλάσσιος πυθμένας του κόλπου έχει ερευνηθεί το 2015 μέσω σόναρ πλευρικής σάρωσης και προφίλ υποβάθρου chirp για τους σκοπούς του ερευνητικού έργου «Περιβαλλοντική Μελέτη του Κόλπου Βάτικα», που χρηματοδοτήθηκε από τη Νομαρχία Πελοποννήσου. Το ερευνητικό σκάφος «ΑΛΚΥΩΝ» έχει χρησιμοποιηθεί και στις δύο περιόδους χαρτιγράφησης. Η περιγραφή της φύσης του θαλάσσιου πυθμένα και η χαρτογράφηση των οικοτόπων βασίστηκαν κυρίως στην ερμηνεία των ακουστικών-γεωφυσικών δεδομένων και των δορυφορικών εικόνων Sentinel-2, καθώς και δευτερευόντως στην περιορισμένη δειγματοληψία που έγινε στην περιοχή. CITATION: Seafloor mapping research team: Dr. D. Sakellariou, Dr. G. Roussakis, Dr. I. Panagiotopoulos, I. Morfis, Dr. V. Papadopoulos, Dr. I. Chatzianestis, Dr. A. Karageorgis, Dr. M. Salomidi, I. Issaris, P. Georgiou, I. Pampidis, P. Mantopoulos, G. Kampouri, A. Papageorgiou, I. Stavrakaki, S. Chourdaki, E. Plakidi, P. Drakopoulou, C. Kyriakidou, K. Tsampouraki-Kraounaki, A. Zavitsanou, M. Pavlidi-Palla. Habitat mapping research and interpretation team: Dr. D. Sakellariou, Dr. M. Salomidi, I. Issaris, V. Loukaidi</idPurp>
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