A stochastic approximation problem is considered in the situation when the unknown regression function is measured not at the previous estimate but,; at its, slightly excited position. Errors of measurement are allowed to be either nonrandom or random with an arbitrary kind of dependence, and the zero-mean conditions is not imposed. Two estimation algorithms for estimate the root and the minimum point of regression function with projection is proposed. It is shown that the sequence of estimates {x(n)} obtained converges to the true value theta as sure and in the mean square sense. Sequence of estimates has asymptotic normality distribution when we can propose some more about errors of measurement.

Original languageEnglish
Title of host publicationCONTROL OF OSCILLATIONS AND CHAOS, VOLS 1-3, PROCEEDINGS
EditorsFL Chernousko, AL Fradkov
PublisherIEEE Canada
Pages146-149
Number of pages4
ISBN (Print)0-7803-6434-1
StatePublished - 2000
Event2nd International Conference on Control of Oscillations and Chaos - ST PETERSBURG
Duration: 5 Jul 20007 Jul 2000

Conference

Conference2nd International Conference on Control of Oscillations and Chaos
CityST PETERSBURG
Period5/07/007/07/00

    Research areas

  • stochastic approximation, exciting perturbation, consistency estimates, regression function, conditional mean value

ID: 4404899