6533b828fe1ef96bd12884bd
RESEARCH PRODUCT
Convergence of direct recursive algorithm for identification of Preisach hysteresis model with stochastic input
Michael RudermanDmitrii Rachinskiisubject
0209 industrial biotechnology93E12 47J40 74N30Markov chainIterative methodApplied MathematicsMarkov processFOS: Physical sciences02 engineering and technologyFunction (mathematics)Nonlinear Sciences - Chaotic Dynamics021001 nanoscience & nanotechnologyParameter identification problemsymbols.namesake020901 industrial engineering & automationRate of convergenceControl theoryPiecewisesymbolsApplied mathematicsOnline algorithmChaotic Dynamics (nlin.CD)0210 nano-technologyMathematicsdescription
We consider a recursive iterative algorithm for identification of parameters of the Preisach model, one of the most commonly used models of hysteretic input-output relationships. The classical identification algorithm due to Mayergoyz defines explicitly a series of test inputs that allow one to find parameters of the Preisach model with any desired precision provided that (a) such input time series can be implemented and applied; and, (b) the corresponding output data can be accurately measured and recorded. Recursive iterative identification schemes suitable for a number of engineering applications have been recently proposed as an alternative to the classical algorithm. These recursive schemes do not use any input design but rather rely on an input-output data stream resulting from random fluctuations of the input variable. Furthermore, only recent values of the input-output data streams are available for the scheme at any time instant. In this work, we prove exponential convergence of such algorithms, estimate explicitly the convergence rate, and explore which properties of the stochastic input and the algorithm affect the guaranteed convergence rate.
year | journal | country | edition | language |
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2015-03-06 |