Le TD-GOLD permet de déterminer:
- L'authenticité d'un lingot ou d'une pièce d'or ou d'argent.
- La densité de l'or ou de l'argent par ultrason
Principe de fonctionnement:
Le capteur émet des ultrasons à travers l'échantillon, les ultrasons sont réfléchis par l'échantillon et absorbées à nouveau par le capteur.
En fonction de la valeur mesuré et de l'épaisseur de l'échantillon (mesuré avec un pied à coulisse), l'appareil identifie si il y a au coeur des éléments autre que l'or ou l'argent.
Le logiciel SAUTER SSG (inclus) permet de constater avec une très grande certitude si le spécimen est authentique ou s'il contient des impuretés
Le logiciel détermine en plus la valeur de la pièce en or.
Le cours de l'or est actualisé en permanence via internet
Ce test est non-destructif et garantie une très grande fiabilité des résultats
Livré avec sa mallette de transport
Option 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) 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