Vestmonasterium

Multi tool use

Tabula burgorum et pagorum antiquorum e quibus burgi Londinienses anno 1965 constituti sunt. Colore roseo notantur burgi metropolitani Londinienses, qui constituebant territorium comitatús Londiniensis atque postea Londinii interioris
Westmonasterium[1] sive Vestmonasterium[2] est una ex triginta duabus urbanis Londinii regionibus. Cui regioni circiter 234 100 incolarum (anno 2007) sunt. Finitibus minoribus Vestmonasterium fuit ab anno 1900 usque ad 1965 burgus metropolitanus sub comitatu Londiniensi, sed ab hoc anno, aliis regionibus urbanis in uno congestis, in finibus longioribus comprehensus.
Imagines |
Frons ecclesiae cathedralis Vestmonasteriensis
Palatium Vestmonasteriense, sedes parlamenti Britannici
Notae |
↑ "Westmonasterium, Torneia, Westmonasteriensis, Vestmonasteriensis": J. G. Th. Graesse, Orbis Latinus (Dresdae: Schönfeld, 1861; 1909. Brunsvici, 1972, 3 voll.) 1 2 3 (1972 ed.) vol. 3 p. 669
↑ Tuomo Pekkanen & Reijo Pitkäranta, Lexicon hodiernae Latinitatis Finno-Latino-Finnicum. Societas Litterarum Finnicarum, 2006
Nexus externus |
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(Anglice)
Londinii maioris triginta burgi (boroughs) et duae urbes (cities)
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Urbs Londiniensis · Urbs Westmonasteriensis Barking et Dagenham · Barnetum · Bexley · Brent · Bromley · Camdenum · Croydon · Ealing · Enfield · Grenovicum · Hackney · Hammersmith et Fulham · Haringey · Harrovia · Havering · Hillingdon · Hounslow · Islingtonia · Kensington et Chelsea · Kingstonium · Lambethum · Lewisham · Merton · Newham · Redbridge · Richmondia · Southwark · Sutton · Tower Hamlets · Waltham Forest · Wandsworth
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