Robust sensor estimation using temporal information

ICASSP(2008)

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摘要
We propose a dynamic Bayesian framework for sensor estimation, a critical step of many machine condition monitoring systems. The temporal behavior of normal sensor data is described by a stationary switching autoregressive (SSAR) model that possesses two advantages over traditional switching autoregressive (SAR) models. First, the SSAR model removes time dependency of signals during mode switching and fits sensor data better. Secondly, the SSAR model is stationary in that at each time, sensor data have the same distribution which represents the normal operating range of a system; this ensures that estimates are accurate and are not distracted by deviations. During monitoring the deviation covariance is estimated adaptively, which effectively handles variable levels of deviations. Tests on gas turbine data are presented.
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关键词
stationary switching autoregressive model,kalman filter,signal processing,machine condition monitoring,covariance analysis,bayes methods,robust sensor estimation,dynamic bayesian framework,ssar model,temporal information,deviation covariance,autoregressive processes,gas turbine data,condition monitoring,sensors,autoregressive,gas turbines,gaussian mixture model,machine condition monitoring systems,normal operator
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