Keywords: measuring instrument, measurement result error, probability distribution density, composition of distribution laws, simulation modeling, identification of the distribution law
Mathematical and software for determining the error in modeling a measuring instrument
UDC УДК 006.91.001+ 681.518
DOI: 10.26102/2310-6018/2021.35.4.017
In the tasks of metrological synthesis, the task of determining the metrological characteristics of the measuring instrument is set. In modeling, the measuring instrument can be represented as a set of nodes whose parameters affect the measurement result. The case of determining the probability density of the total error of the measurement result for sequentially connected units of the measuring instrument is considered. The identification of the distribution law of the total error is carried out on the basis of a machine experiment. As an example, it is proposed to consider a case combining a constant value of an input quantity for which the error is defined as additive noise composed of independent quantities. A machine experiment is performed to iteratively search for the composition of the distribution laws of random independent quantities of neighboring nodes of the measuring instrument, the result of the composition is compared with the known distribution laws. Two cases of attribution of the law of distribution of the total random variable to the normal law or the law of arbitrary form are indicated. The estimation of the error of the measuring instrument is based on the calculation of probabilistic characteristics based on the found probability distribution density, which makes it possible to use a priori information about each of the nodes of the measuring instrument in the evaluation. It is proposed to consider mathematical expectation, variance and interval probability as characteristics of the accuracy of the identified density of the error distribution of the measurement result.
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Keywords: measuring instrument, measurement result error, probability distribution density, composition of distribution laws, simulation modeling, identification of the distribution law
For citation: Suloeva E.S., Romantsova N.V. Mathematical and software for determining the error in modeling a measuring instrument. Modeling, Optimization and Information Technology. 2021;9(4). URL: https://moitvivt.ru/ru/journal/pdf?id=1068 DOI: 10.26102/2310-6018/2021.35.4.017 (In Russ).
Received 04.11.2021
Revised 02.12.2021
Accepted 08.12.2021
Published 31.12.2021