USING THE MONTE CARLO METHOD FOR CALCULATING THE ERROR OF THE MEASUREMENT SYSTEM
ARTICLE_14_PDF

Keywords

Method Monte Carlo method
calculation of system’s error
measuring system метод Монте-Карло
обчислення похибки системи
вимірювальна система

How to Cite

[1]
Baida, Y. and Pantelyat, M. 2024. USING THE MONTE CARLO METHOD FOR CALCULATING THE ERROR OF THE MEASUREMENT SYSTEM. Tekhnichna Elektrodynamika. 6 (Oct. 2024), 090. DOI:https://doi.org/10.15407/techned2024.06.090.

Abstract

The article considers the Monte Carlo method as one of the possible techniques for calculating the error of a measuring system, which consists of several elements, each of which measures some quantity with its own independent error. Due to its features, the method can be extended to modeling any process affected by random variables. The simplicity of application and the calculation algorithm makes it possible to easily calculate the total error of the system and the probability of its occurrence, while avoiding inflated and unlikely values. The article substantiates the application of the Monte Carlo method for calculating the error of the measuring system, reveals the nature of the distribution of errors, and calculates the value of the error depending on the probability of its occurrence. It is shown that with probability of 0.95 the total error of the system can be taken to be 3 times smaller than the maximum possible error. References 8, figures 2, table 1.

https://doi.org/10.15407/techned2024.06.090
ARTICLE_14_PDF

References

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