A Method for Adaptive Identification of Stochastically Loaded Parts of Mechanical Systems
نویسندگان
چکیده
The paper deals with the possibilities of using mathematical apparatus of a stochastic time series for stochastic systems identification and modeling, especially mechanical ones. Its purpose is to briefly characterize fundamental terms and equations of mathematical apparatus of time series, to describe the algorithm of a statistically adequate discrete model of a stochastically dynamic system to develop relationship between parameters of discrete and continuous models and to show some possibilities of developed identification strategy for solution of selected modal characteristics of mechanical structures.
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