Classification of elements in the diagnostic model of a technical object for building an expert knowledge base

: The following paper presents the problem of classification (identification) elements in the internal structure of a technical object. This problem is directly linked with diagnostics and compilation of an expert data base. The basis of a process of grouping elements into classes is to make a diagnostic model of a given object in a form of a structure or set of basic elements of an object. In order to conduct the grouping of elements into subsets of s-th classes, the following paper compiles and presents analytical formulas and classification rules. Theoretical considerations presented in this paper are also verified using an engine control system as an example of a complex technical object. Institute of Mechatronics and Vehicle Engineering. Research subjects: mathematical modeling of maintenance processes; application of risk management in aviation; application of stochastic, deterministic and fuzzy models in maintenance management; investigation of model uncertainty. Modeling and genetic algorithm solution for the slab stack shuffling problem when implementing steel rolling schedules. of coefficients

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