Argilla

Multi tool use
Argilla[1] (-ae, f.) (ex Graece αργιλλος, argillos, "album") est naturalis terrena materia ex aggregata[2] mineralis hydrata silicata aluminum et est plastica[3] (facile vel ductile fungere) et more materia cruda figulinis lateribusque. Creatur in natura ex cumulis silicatium aluminium hydratium et ex dissolutis mineralibus aluminii procedentis constat cuius formula est haec: Al2O3 · 2SiO2 · H2O. Colores nonnumquam propter impuritatem differunt cum argilla pura albam habet colorem. Particulae argillarum parviores sunt diametro quam 0.002 mm.
Argilla facile fingendum (Anglice plasticity) fit misceanda aqua. Robusta quoque fieri potest cum super 800 °C coquatur. Iste pacto vases, lateres, organa musicae similes ocarina, opus fictile, testeus, porcellanum etc. creari possunt ex argilla.
Notae |
↑ Arcilla e Vicipaedia Hispanica
↑ ""Clay" in www.dictionary.com" . Secundum definitionem Anglicis "Clay"
↑ ibid
Nexus externi |

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Vicimedia Communia plura habent quae ad argillam spectant.
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Haec stipula ad geographiam spectat. Amplifica, si potes!
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