Recurrent stochastic data processing algorithms using representation of interferometric signal as output of a dynamic system, which state is described by vector of parameters, in some cases are more effective, compared with conventional algorithms. Interferometric signals depend on phase nonlinearly. Consequently it is expedient to apply algorithms of nonlinear stochastic filtering, such as Kalman type filters. An application of the second order extended Kalman filter and Markov nonlinear filter that allows to minimize estimation error is described. Experimental results of signals processing are illustrated. Comparison of the algorithms is presented and discussed.
CITATION STYLE
Ermolaev, P., & Volynsky, M. (2014). The second order extended Kalman filter and Markov nonlinear filter for data processing in interferometric systems. In Journal of Physics: Conference Series (Vol. 536). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/536/1/012015
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