AR Spectral Estimation by Application of the Burg Algorithm To Irregularly Sampled Data
نویسندگان
چکیده
Many methods have been developed for spectral analysis of irregularly sampled data. Current popular methods such as Lomb-Scargle and resampling tend to be biased at higher frequencies. Slotting methods fail to consistently produce a spectrum that is positive for all frequencies. In this paper, a new estimator is introduced that applies the Burg algorithm for AR spectral estimation to unevenly spaced data. The new estimator can be perceived as searching for sequences of data that are almost equidistant, and then analyzing those sequences using the Burg algorithm for segments. The estimated spectrum is guaranteed to be positive. If a sufficiently large data set is available, results can be accurate even at higher frequencies.
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تاریخ انتشار 2001