300308 
The application of the linear and dynamic programming methods for determining the probability of the equipment defect appearance during its production within the framework of the conformity assessment system
Oleg V. Aralov ^{a}
^{a} Pipeline Transport Institute, LLC (Transneft R&D, LLC), 47a Sevastopolsky prospect, Moscow, 117186, Russian Federation
DOI: 10.28999/25419595201883300308
Abstract: The application of the method of lineardynamic programming to determine the probability of occurrence of a defect of the equipment in its production including the supply of components, Assembly and testing is considered. The developed method to determine the probability of occurrence of the defect is based on two types of mathematical models that characterize the appearance of the defect at individual stages of production – cubic and tetrahedral mathematical models, and describes the use of correlation and regression analysis to determine the balance of probabilities at individual stages of equipment production. Knowing the priority of the influence of one parameter on another, one can establish exactly what kind of probabilities of a particular event in this production cycle have the greatest impact on the probabilistic outcome of obtaining a defectfree products.
On the basis of the above mathematical method one can optimize the procedure of production inspections.
Keywords: certification, mathematical model, production inspection, defect.
For citing:
Aralov O. V. The application of the linear and dynamic programming methods for determining the probability of the equipment defect appearance during its production within the framework of the conformity assessment system. Nauka i tehnologii truboprovodnogo transporta nefti i nefteproduktov = Science & Technologies: Oil and Oil Products Pipeline Transportation. 2018;8(3):300–308. DOI: 10.28999/25419595201883300308.
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