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Automatic Autocorrelation And Spectral Analysis 1st Edition Petrus Mt Broersen

  • SKU: BELL-2100368
Automatic Autocorrelation And Spectral Analysis 1st Edition Petrus Mt Broersen
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Automatic Autocorrelation And Spectral Analysis 1st Edition Petrus Mt Broersen instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 2.53 MB
Pages: 312
Author: Petrus M.T. Broersen
ISBN: 1846283280
Language: English
Year: 2006
Edition: 1st Edition.

Product desciption

Automatic Autocorrelation And Spectral Analysis 1st Edition Petrus Mt Broersen by Petrus M.t. Broersen 1846283280 instant download after payment.

Spectral analysis requires subjective decisions which influence the final estimate and mean that different analysts can obtain different results from the same stationary stochastic observations. Statistical signal processing can overcome this difficulty, producing a unique solution for any set of observations but that is only acceptable if it is close to the best attainable accuracy for most types of stationary data. This book describes a method which fulfils the above near-optimal-solution criterion, taking advantage of greater computing power and robust algorithms to produce enough candidate models to be sure of providing a suitable candidate for given data.

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