Rhodope (nomus Graeciae)

Multi tool use

Situs pristini nomi Rhodopes

Forma pristinorum demorum nomi Rhodopes
Vide etiam paginam discretivam: Rhodope (discretiva)
Rhodope fuit usque ad annum 2010 una e quinque praefecturis (sive nomis) regionis (περιφέρεια) Macedoniae Orientalis et Thraeciae, cuius caput erat urbs Comotene. Reformatione administrativa anni 2010 (vide: Libellus Callicratis) praefecturae iura ad regionem Macedoniam Orientalem et ad demos, quorum numerus coagmentatione valde minutus est, delata sunt. Territorium praefecturae nomine "Regionali Rhodopes Unitate" permanet, quae novem legatos in consilium regionale mittit, praeterea autem vi politica caret.
Index pristinorum demorum et communium huius nomi |
- 1 Δήμος Κομοτηνής - Comotene
- 2 Δήμος Αιγείρου - Aegirus
- 3 Δήμος Αρριανών - Arriana
- 4 Δήμος Ιάσμου - Iasmus
- 5 Δήμος Μαρώνειας - Maronea
- 6 Δήμος Νέου Σιδηροχωρίου - Novum Siderochorium
- 7 Δήμος Σαπών - Sapae
- 8 Δήμος Σώστου - Sostes
- 9 Δήμος Φιλλύρας - Phillyra
- 10 Κοινότητα Αμαξάδων - Commune Hamaxades
- 11 Κοινότητα Κέχρου - Commune Cechrus
- 12 Κοινότητα Οργάνης - Commune Organe
Nexus externi |
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(Neograece)
Nomi Graeciae usque ad annum 2010
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Achaea · Aetoloacarnania · Arcadia · Argolis · Arta · Attica · Boeotia · Cabala · Carditsa · Castoria · Cephallenia · Chalcidice · Chios · Cilcis · Corcyra · Corinthia · Cozana · Cyclades · Cydonia · Dodecanesus · Drama · Elis · Emathia · Euboea · Eurytania · Florina · Grebena · Hebrus · Heracleum · Ioannina · Laconia · Larissa · Lasithium · Lesbos · Leucas · Magnesia · Messenia · Mons Sanctus (regio autonoma) · Pella · Phocis · Phthiotis · Pieria · Prebeza · Rhithymna · Rhodope · Samos · Serrhae · Thesprotia · Thessalonica · Tricala · Xanthe · Zacynthus
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Haec stipula ad geographiam spectat. Amplifica, si potes!
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