학술논문

Resonance Frequency Estimation of Time-Series Data by Subspace Method
Document Type
Conference
Source
제어로봇시스템학회 국제학술대회 논문집. 2009-08 2009(8):4913-4916
Subject
Subspace method
time-series data
resonance frequency
singular value decomposition
Language
Korean
ISSN
2005-4750
Abstract
This paper studies an estimation problem of a dominant resonance frequency from time-series data. We proposed an estimatio method which incorporates system identification technique into time-series analysis. However, this method has a problem that the estimated resonance frequency is biased. In this paper, a new method which uses subspace method is proposed based on time-series data. The key idea of this method is to use an auto-covariance function of the time-series data instead of impulse response or ordinary input-output data. Hankel matrix of the time-series is consturcted by the auto-convariance function. Then, subspace method is applied to the Hankel matrix, and the resonance frequency can be calculated. Effectiveness of the method is examined through numerical examples.

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