LTI Systems, Additive Noise, and Order Estimation
نویسندگان
چکیده
This paper presents an important application of a novel information theoretic order estimation method, minimum description complexity (MDC). The selection of optimum number of poles and zeros in identification of LTI systems based on observed data is accomplished by MDC. The comparison of MDC with important existing order estimation methods, MDL and AIC, is provided.
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