Belfuratus

Multi tool use

Belfuratus
Res apud Vicidata repertae:
Civitas:
HispaniaLocus:
42°25′14″N 3°11′25″WNumerus incolarum:
1 816Zona horaria:
UTC+1Situs interretialis
Nomen officiale:
Belorado
Gubernium
Praefectus: Luis Jorge del Barco Lopez
Geographia
Superficies: 130 chiliometrum quadratum
Belfuratus[1] (Hispanice: Belorado) est oppidum et municipium provinciae Burgorum (Castella et Legione). Locus est clarus in itinere ad Compostellam.
Notae |
↑ Aimerici Picaudi, "Iter pro peregrinis ad Compostellam VII," in Codice Calixtino, ab A. Stones et J. Krochalis apud The Pilgrim's Guide: A Critical Edition (1998) edito.
Iter pro peregrinis ad Compostellam
secundum Aimericum Picaudum
Iter Aragonicum: Canfrancus → Iacca → Osturiz → Mons Reellus → Pons Reginae
Iter Gallicum: Runcievallis → Biscaerlus → Ressogna → Pampilona → Stella → Pons Reginae → Arcus → Grugnus → Naiera → Belfuratus → Altaporca → Burgi → Castrum Sorericum → Pons Fiterii → Frumesta → Karrionus → Sanctus Facundus → Manxilla → Legio → Orgeba → Asturica Augusta → Raphanellus → Siccamolina → Pons Ferratus → Carcavellus → Portus Februarius → Pons Mineae → Sala Reginae → Compostella.
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