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Monte Carlo Simulation in a Digital Calibration Certificate

EAI/Springer Innovations in Communication and Computing(2023)

Slovak University of Technology in Bratislava

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Abstract
To establish trust in the measurement results, the metrological traceability of the measuring devices utilized must be ensured. This can be accomplished by confirming or calibrating the instruments. In reality, the information received during calibration is given in the traditional calibration certificate, and the user of the certified instrument decides how to utilize it in the measurement. Here comes the role of the digital calibration certificate that unlocks several features of this kind of calibration certificate that the user can use during its own measurements. In our case, the digital calibration certificate provides the option of supplying a large amount of additional data that may be usefully employed in various different tests. There are several methods for solving this kind of a problem. The paper discusses one method to this problem which is called the “Monte Carlo Method” and shows it using a specific case to give you a closer sight of this problem.
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Key words
monte carlo simulation,calibration
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