Tuna

Multi tool use
Tuna[1] (Hispanice Lusitaniceque: tuna vel estudiantina; ex locutione Francica roi de Thunes 'rex Tunisiae', titulus ducibus erronum adhibitus[2]) est orchestra scholasticorum universitatum praecipua Hispaniae, sed tunae etiam adsunt in America Meridionale, Lusitania, Germania, Nederlandia, et Universitate Oxoniensi. Scholastici cum citharis, tympanulis, lautis, et panduriis canunt. Tamen saepe cum citharis Canariis et harmonicis diductilibus. Etiam hodierne adhuc tunantes se saeculo sexto decimo habitu vestint.
Historia |
Tunae ortae sunt ex scholaribus universitatum in Medio Aevo, et iam Alphonsus Sapiens Castellae saeculo tertio decimo hoc modo de scholasticis narravit:
- ...Esos escolares que troban y tañen instrumentos para haber mantenencia.
- ...Isti scholares qui versus componunt et instrumenta tangent ad manumissionem habendam.
Ita saeculis XVI et XVII fraternitates scholarium creatae sunt, cuius sodales canebant ut gratuite ederent.
Nexus interni
- Passus duplex
- Universitas
- Universitas Studii Salmanticensis
- Xota
Nota |
↑ Quid Tunae Liber Lusitanicus 2012 editus
↑ Tuno in Diccionario de la Real Academia Española.
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