Archidioecesis Hamburgensis

Multi tool use
Tabula geographica
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Nomen Latinum: |
Archidioecesis Hamburgensis
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Nomen Theodiscum: |
Erzbistum Hamburg
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Indicia fundamentalia
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Archiepiscopus: |
Stephanus Heße Wernherus Thissen (emeritus)
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Auxiliarius: |
Horst Eberlein Ioannes-Ioachimus Jaschke (emeritus) Norbertus Werbs (emeritus)
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Vicarius generalis: |
Ansgarius Thim
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Numerus decanatuum: |
17
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Numerus paroeciarum: |
121
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Area: |
32 654 km²
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Numerus incolarum: |
5 804 000 (Fine anni 2004)
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Numerus Catholicorum: |
392 774 ({{{Tempus_cath}}}) -->
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Portio: |
6,77%
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Inscriptio cursualis: |
Danziger Straße 52a
20099 Hamburg
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Interretialis pagina domestica: |
[1]
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Inscriptio electronica: |
pressestelle@erzbistum-bamberg.de
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Tabula geographica provinciae
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Dioeceses suffraganeae: |
- Dioecesis Hildesiensis
- Dioecesis Osnabrugensis
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Archidioecesis Hamburgensis (Germanice Erzbistum Hamburg) dioecesis Romana Catholica ad septentrionalem partem Germaniae spectat et Terras Foederales Hamburgum et Slesvicum et Holsatiam continet atque partes terrae Megalopolis terrae foederalis Megapolis et Pomeraniae Citerioris. Area maxima dioecesis Germaniae est. Dioecesis est in diaspora.
Dioeceses et archidioeceses catholicae Germaniae
Aquisgranensis · Augustana Vindelicorum · Bambergensis · Berolinensis · Coloniensis · Dresdensis-Misnensis · Eystettensis · Erfordiensis · Essendiensis · Friburgensis · Fuldensis · Gorlicensis · Hamburgensis · Herbipolitana · Hildesiensis · Limburgensis · Magdeburgensis · Moguntina · Monacensis et Frisingensis · Monasteriensis · Osnabrugensis · Paderbornensis · Passaviensis · Ratisbonensis · Rottenburgensis-Stutgardiensis · Spirensis · Trevirensis
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