Empirical reconstruction of fuzzy model of experiment in the Euclidean metric
نویسندگان
چکیده
In this paper we introduce a method for the fuzzy model reconstruction and a method for measurements reduction on the basis of test signals by maximization a posteriori possibility. It ensures the maximum accuracy of the measurements reduction. It is used the model of measurement errors with fuzzy constraints on its Euclidean norms.
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